Technical Field
[0001] The present invention relates to an abnormal-vibration-predicting method for a roll
grinder, a rolling-roll-grinding method, a metal-strip-rolling method, an abnormal-vibration-predicting
device for a roll grinder, and a roll-grinding apparatus.
Background Art
[0002] Chatter marks are examples of surface defects that occur in a cold rolling process.
The chatter marks are surface defects including linear patterns that extend in a width
direction of a metal strip caused by variations in the thickness of the metal strip
and that appear periodically in a longitudinal direction of the metal strip. The chatter
marks are known to occur due to rolling mill vibration (hereinafter referred to as
chattering). The chatter marks formed on the metal strip by chattering lead to product
defects due to poor appearance. If severe chattering occurs, the metal strip may break,
for example, due to a sudden change in tension, and the productivity may be significantly
reduced.
[0003] Chattering is often caused by, for example, flaws in rotating components, such as
bearings, that constitute a rolling mill, poor lubrication between a rolling roll
and the metal strip, or an abnormal profile of the rolling roll. In particular, when
chattering occurs due to an abnormal profile of an outer peripheral surface of the
rolling roll caused in a process of grinding the rolling roll, the vibration of the
rolling mill continues until the rolling roll with the abnormal profile is replaced,
and a large amount of product defects occur.
[0004] The abnormal profile of the rolling roll is caused by abnormal vibration of a grinder
in the process of grinding the rolling roll as a workpiece. The vibration of the grinder
generated in the process of grinding the rolling roll increases due to resonance when
the natural frequency of a grinding wheel, the natural frequency of a workpiece support
system, or the natural frequency of the entire mechanical system including the grinding
wheel and the workpiece coincides with the excitation frequency. As a result, abnormal
vibration of the roll grinder occurs.
[0005] As a technique for preventing the above-described abnormal vibration of the roll
grinder, Patent Literature 1 discloses a method for preventing chatter vibration of
a roll grinder. According to Patent Literature 1, the chatter vibration can be predicted
based on the correlation between a chatter waveform detected by a chatter detector
using an optical sensor and a vibration waveform measured by a vibration meter provided
on a wheel spindle stock and a tail stock.
Citation List
Patent Literature
Summary of Invention
Technical Problem
[0007] The method disclosed in Patent Literature 1 prevents the chatter vibration of the
roll grinder. Since the chatter vibration occurs at a grinding point, which is the
point of contact between the grinding wheel and the rolling roll serving as the workpiece,
the method disclosed in Patent Literature 1 focuses on the vibration generated at
the grinding point and transmitted to the roll grinder. However, the abnormal vibration
generated in the roll grinder is caused not only by the vibration generated at the
grinding point; the abnormal vibration may also occur due to the natural frequency
of the entire mechanical system including the grinding wheel and the workpiece. Therefore,
the method disclosed in Patent Literature 1 has a problem in that it cannot predict
the occurrence of the abnormal vibration corresponding to the natural frequency of
the entire mechanical system including the grinding wheel and the workpiece.
[0008] The present invention has been made to solve the above-described problem of the related
art, and an object of the present invention is to provide an abnormal-vibration-predicting
method for a roll grinder, an abnormal-vibration-predicting device for a roll grinder,
and a roll-grinding apparatus capable of predicting the occurrence of the abnormal
vibration of the roll grinder corresponding to the natural frequency of the entire
mechanical system including the grinding wheel and the workpiece. Another object of
the present invention is to provide a rolling-roll-grinding method in which the occurrence
of the abnormal vibration of the roll grinder is suppressed in a grinding process
using the grinding wheel and a metal-strip-rolling method using the rolling roll ground
by the rolling-roll-grinding method. Solution to Problem
[0009] Means for solving the above-described problem are as follows.
- [1] An abnormal-vibration-predicting method for a roll grinder that grinds an outer
peripheral surface of a rolling roll with a grinding wheel while the rolling roll
rotates, the abnormal-vibration-predicting method including: an acquisition step of
acquiring a rigidity parameter related to a rigidity of the roll grinder and a wheel
rotation parameter related to a rotational speed of the grinding wheel; and a prediction
step of predicting an occurrence of an abnormal vibration in a process of grinding
the rolling roll by using the rigidity parameter and the wheel rotation parameter.
- [2] The abnormal-vibration-predicting method for a roll grinder according to [1],
wherein the rigidity parameter includes a distance between a rotation center of the
rolling roll and a rotation center of the grinding wheel or a sum of a diameter of
the rolling roll and a diameter of the grinding wheel.
- [3] The abnormal-vibration-predicting method for a roll grinder according to [1],
wherein, in the acquisition step, a load parameter related to a load applied to the
grinding wheel is further acquired, and wherein, in the prediction step, the occurrence
of the abnormal vibration in the process of grinding the rolling roll is predicted
by using the rigidity parameter, the wheel rotation parameter, and the load parameter.
- [4] The abnormal-vibration-predicting method for a roll grinder according to [3],
wherein the load parameter includes a load current value of an electric motor that
rotates the grinding wheel.
- [5] an abnormal-vibration-predicting method for a roll grinder that grinds an outer
peripheral surface of a rolling roll with a grinding wheel while the rolling roll
rotates, the abnormal-vibration-predicting method including: an acquisition step of
acquiring input data including a rigidity parameter related to a rigidity of the roll
grinder and a wheel rotation parameter related to a rotational speed of the grinding
wheel; and a prediction step of predicting an occurrence of an abnormal vibration
in a process of grinding the rolling roll by using an abnormal-vibration-prediction
model whose input is the input data and whose output is abnormal vibration information
for the process of grinding the rolling roll.
- [6] The abnormal-vibration-predicting method for a roll grinder according to [5],
wherein the rigidity parameter includes a distance between a rotation center of the
rolling roll and a rotation center of the grinding wheel or a sum of a diameter of
the rolling roll and a diameter of the grinding wheel.
- [7] The abnormal-vibration-predicting method for a roll grinder according to [5],
wherein the input data acquired in the acquisition step includes the rigidity parameter,
the wheel rotation parameter, and a load parameter related to a load applied to the
grinding wheel.
- [8] The abnormal-vibration-predicting method for a roll grinder according to [7],
wherein the load parameter includes a load current value of an electric motor that
rotates the grinding wheel.
- [9] A rolling-roll-grinding method using the abnormal-vibration-predicting method
for a roll grinder according to any one of [1] to [8], wherein, when the abnormal
vibration is predicted to occur in the prediction step, grinding conditions of the
roll grinder are changed to grinding conditions for which the abnormal vibration is
not predicted to occur.
- [10] A metal-strip-rolling method including rolling a metal strip in a rolling mill
in which a rolling roll is installed, the rolling roll being ground by the rolling-roll-grinding
method according to [9].
- [11] An abnormal-vibration-predicting device for a roll grinder that grinds an outer
peripheral surface of a rolling roll with a grinding wheel while the rolling roll
rotates, the abnormal-vibration-predicting device including: a data acquisition unit
that acquires input data including a rigidity parameter related to a rigidity of the
roll grinder and a wheel rotation parameter related to a rotational speed of the grinding
wheel; and an abnormal-vibration-prediction unit that predicts an occurrence of an
abnormal vibration of the roll grinder by using an abnormal-vibration-prediction model
whose input is the input data and whose output is abnormal vibration information.
- [12] The abnormal-vibration-predicting device for a roll grinder according to [11],
wherein the input data acquired by the data acquisition unit includes the rigidity
parameter, the wheel rotation parameter, and a load parameter related to a load applied
to the grinding wheel.
- [13] The abnormal-vibration-predicting device for a roll grinder according to [11]
or [12], further including: a guidance-information-acquisition unit that determines
the input data for which the abnormal vibration does not occur by using the abnormal-vibration-prediction
model.
- [14] A roll-grinding apparatus including: a roll grinder that grinds an outer peripheral
surface of a rolling roll with a grinding wheel while the rolling roll rotates; and
the abnormal-vibration-predicting device for a roll grinder according to [11] or [12].
- [15] A roll-grinding apparatus including: roll grinder that grinds an outer peripheral
surface of a rolling roll with a grinding wheel while the rolling roll rotates; and
the abnormal-vibration-predicting device for a roll grinder according to [13].
Advantageous Effects of Invention
[0010] According to the present invention, the abnormal vibration of the roll grinder is
predicted using the rigidity parameter and the wheel rotation parameter. Therefore,
the occurrence of the abnormal vibration of the roll grinder corresponding to the
natural frequency of the entire mechanical system including the grinding wheel and
the workpiece can be predicted.
Brief Description of Drawings
[0011]
[Fig. 1] Fig. 1 is a schematic diagram illustrating the structure of a roll-grinding
apparatus capable of carrying out an abnormal-vibration-predicting method for a roll
grinder according to a first embodiment.
[Fig. 2] Fig. 2 shows front views of roll grinders having grinding wheels with different
diameters.
[Fig. 3] Fig. 3 is a graph showing the relationship between the sum of the diameter
of the rolling roll and the diameter of the grinding wheel and the grinder rigidity.
[Fig. 4] Fig. 4 is a graph showing the relationship between the vibration frequency
and the vibration intensity.
[Fig. 5] Fig. 5 is a graph showing the relationship between the wheel rotation frequency
and the vibration intensity.
[Fig. 6] Fig. 6 is an abnormal vibration map related to the rigidity parameter.
[Fig. 7] Fig. 7 is an abnormal vibration map related to the rigidity parameter.
[Fig. 8] Fig. 8 is a graph showing the relationship between the wheel load current
value and the grinder rigidity.
[Fig. 9] Fig. 9 is an abnormal vibration map related to the load parameter.
[Fig. 10] Fig. 10 is a schematic diagram illustrating a roll-grinding apparatus 110
capable of carrying out an abnormal-vibration-predicting method for a roll grinder
according to a second embodiment.
[Fig. 11] Fig. 11 is a schematic diagram illustrating an example of the structure
of an abnormal-vibration-predicting device 44.
[Fig. 12] Fig. 12 illustrates an example in which a neural network is used as an abnormal-vibration-prediction
model.
[Fig. 13] Fig. 13 is a graph showing the measurement result of the vibration intensity.
[Fig. 14] Fig. 14 is a graph showing the measurement result of the vibration intensity.
Description of Embodiments
[First Embodiment]
[0012] A first embodiment of the present invention will now be described with reference
to the drawings. Fig. 1 is a schematic diagram illustrating the structure of a roll-grinding
apparatus 100 capable of carrying out an abnormal-vibration-predicting method for
a roll grinder according to the first embodiment. Fig. 1(a) is a top view of the roll-grinding
apparatus 100. Fig. 1(b) is a front view of a roll grinder 10. The roll grinder 10
illustrated in Fig. 1 is a roll grinder that uses a cylindrical grinding wheel to
grind an outer peripheral surface of a rolling roll 12. The rolling roll 12 to be
ground is carried to a roll shop by a crane or the like after being used in a rolling
mill. After that, the rolling roll 12 is removed from a bearing box, allowed to be
naturally cooled to normal temperature, and set to the roll grinder 10 individually.
[0013] The roll grinder 10 includes a grinding head 16 that supports a grinding wheel 14,
a support table 18 that supports the grinding head 16, guides 26 and 28, a roll support
base 68, and a vibration meter 32. The grinding head 16 supports the grinding wheel
14 and a wheel rotation motor 30 that drives the grinding wheel 14. A pulley and a
belt for transmitting power are disposed between the grinding wheel 14 and the wheel
rotation motor 30. The grinding wheel 14 may be rotationally driven directly by the
wheel rotation motor 30.
[0014] The support table 18 is guided by the guide 26 and moves parallel to an axial direction
of the rolling roll 12. The movement of the support table 18 along the guide 26 is
performed under position control using a servo motor, so that the relative position
between the grinding wheel 14 and the rolling roll 12 in the axial direction is controlled.
The grinding head 16 is guided by the guide 28 and moves in a direction perpendicular
to an axis of the rolling roll 12. The movement of the grinding head 16 along the
guide 28 is also performed under position control using a servo motor, so that the
cutting depth of the grinding wheel 14 is controlled. Alternatively, the support table
18 may be composed of a two-axis table that moves along the guide 26 and the guide
28. When the two-axis table is used, the support table 18 moves along the guide 26
disposed parallel to the axial direction of the rolling roll 12, and also moves the
grinding wheel 14 along the guide 28 in a direction perpendicular to the axis of the
rolling roll 12. In the following description, the structure composed of the grinding
head 16, the support table 18, the guide 28, and the wheel rotation motor 30 that
directly or indirectly support the grinding wheel 14 is referred to as a grinding-wheel
support unit 66.
[0015] The roll support base 68 includes a roll chuck 20 that supports the rolling roll
12 at one end of the rolling roll 12 in the axial direction, a roll rotation motor
22 that rotationally drives the rolling roll 12 at a predetermined number of revolutions,
and a tail stock 24 that supports the rolling roll 12 at the other end of the rolling
roll 12 in the axial direction. The tail stock 24 serves to align the axis of the
rolling roll 12 with an axis of a rotating shaft of the roll rotation motor 22. The
tail stock 24 includes a cone-shaped portion that comes into contact with the rolling
roll 12, and an end of the cone-shaped portion is inserted into a counterbore formed
at the center of an axial end portion of the rolling roll 12 and a counterbore in
a fixing jig. Thus, the rolling roll 12 is fixed with the axis thereof coinciding
with the axis of the rotating shaft of the roll rotation motor 22. The number of revolutions
of rolling roll 12 during grinding is controlled by a controller 42 of the roll grinder
10.
[0016] The rolling roll 12 is ground from one end to the other end in the axial direction
of the rolling roll 12, and then continuously ground from the other end to the one
end. The one-round trip of the grinding wheel 14 is defined as a traverse. A typical
grinding process includes a rough grinding process in which the grinding amount is
set to a large value, and a finish grinding process performed to finish the surface
of the rolling roll 12. In general, the number of traverses for rough grinding is
about 80 to 150, and the number of traverses for finish grinding is about 5 to 15.
The rough grinding process is a grinding process performed to cut the surface of the
rolling roll 12 to remove a fatigue layer and a portion having microscopic cracks.
The finish grinding process is a weak grinding process performed to adjust the surface
roughness of the rolling roll within a predetermined range.
[0017] The roll-grinding apparatus 100 illustrated in Fig. 1 further includes a control
computer 40 and a controller 42. The control computer 40 sets grinding conditions
for the rolling roll 12 to be ground based on information including the dimension
information of the rolling roll 12, the grinding amount, and the target surface finish
roughness.
[0018] The grinding conditions include at least three setting conditions: the number of
revolutions of the roll, the number of revolutions of the grinding wheel 14, and the
cutting depth of the grinding wheel 14 during grinding. The grinding conditions are
set for each traverse from rough grinding to finish grinding. A current value set
for the wheel rotation motor 30 may be used instead of the wheel cutting depth. An
operator may check the state of grinding of the rolling roll 12 and adjust the grinding
conditions of the roll grinder 10 as appropriate. In this case, the adjusted grinding
conditions of the roll grinder 10 are output to the control computer 40.
[0019] The grinding conditions of the roll grinder 10 may be set by using a setting table
that takes into account factors such as the diameter, surface hardness, and surface
roughness before grinding of the rolling roll 12 to be ground. The grinding conditions
are also set by taking into account the conditions of the grinding wheel 14, such
as the grit number of the grinding wheel 14, the initial wheel diameter, the current
wheel diameter, the cumulative grinding time of the grinding wheel 14, and the total
grinding amount after dressing by a dressing device.
[0020] The initial wheel diameter is the wheel diameter before the first use of the grinding
wheel 14 in roll grinding after production. The current wheel diameter is the wheel
diameter measured before starting the grinding of the rolling roll 12 to be ground.
Multiple locations are selected on the outer periphery of the grinding wheel 14, and
the wheel diameter is measured using a micrometer at the selected locations. Alternatively,
marks may be formed on a side surface of the grinding wheel 14 with a pitch of 1 to
5 mm in the radial direction in advance, and the wheel diameter may be determined
by reading the marks. The grinding wheel 14 has an initial wheel diameter of 850 to
950 mm. The grinding wheel 14 is discarded when the wheel diameter is reduced to about
450 to 600 mm.
[0021] The control computer 40 sets control target values for operation conditions of the
roll grinder 10. The controller 42 controls each device so that the number of revolutions
of the roll, the number of revolutions of the grinding wheel 14, and the cutting depth
of the grinding wheel 14 during grinding are equal to the control target values thereof
in each traverse from the start to the end of the grinding operation. The controller
42 acquires an actual value of the wheel rotation motor 30 that drives the grinding
wheel 14 during grinding. When actual values of the number of revolutions of the roll,
the number of revolutions of the grinding wheel 14, and the cutting depth of the grinding
wheel 14 during grinding can be measured, the controller 42 acquires these actual
values. The thus-acquired actual values are output to the control computer 40 as data
for analyzing the operational state of roll grinding. The control computer 40 and
the controller 42 are workstations or general-purpose computers, such as personal
computers. The control computer 40 and the controller 42 may be composed of a single
computer.
[0022] In the above-described roll-grinding apparatus 100, the rolling roll 12 that has
undergone finish grinding is transferred to a ground-roll storage area, and is returned
to a roll replacing device and assembled into the rolling mill in its turn. The roll
grinder 10 includes the vibration meter 32. The vibration meter 32 acquires actual
data regarding abnormal vibration in the process of grinding the rolling roll. The
vibration meter 32 is preferably installed on the grinding head 16 or the roll support
base 68, and more preferably at a position close to the grinding wheel 14. When the
vibration meter 32 is provided at such a position, vibration generated in at a contact
portion between the grinding wheel 14 and the rolling roll 12 can be detected. Although
the measurement direction of the vibration is not limited, the vibration in the same
direction as the direction in which the grinding wheel 14 cuts into the rolling roll
12 is preferably measured.
[0023] In the abnormal-vibration-predicting method for a roll grinder according to the first
embodiment, the abnormal vibration of the roll grinder 10 is predicted using a rigidity
parameter related to the rigidity of the roll grinder 10 and a wheel rotation parameter
related to the rotational speed of the grinding wheel 14. The rigidity parameter of
the roll grinder 10 will now be described.
[0024] The rigidity parameter related to the rigidity of the roll grinder 10 means the parameter
that influences the rigidity of the roll grinder 10 when the rolling roll 12 serving
as the workpiece is supported by the roll support base 68. The rigidity of the roll
grinder 10 represents the degree of influence of the external force applied to the
roll grinder 10 on the displacement of a portion of the grinding wheel 14 in contact
with the rolling roll 12.
[0025] Specifically, the rigidity of the grinding-wheel support unit 66 that directly or
indirectly supports the grinding wheel 14 (hereinafter referred to as grinder rigidity)
is defined as the rigidity parameter related to the rigidity of the roll grinder 10.
The mass and the rigidity of the rolling roll 12 serving as the workpiece and the
roll support base 68 are greater than the mass and the rigidity of the grinding-wheel
support unit 66. Therefore, the contribution of the rolling roll 12 and the roll support
base 68 on the overall vibration of the roll grinder 10 is small relative to that
of the grinder rigidity. Therefore, it is not necessary that the rigidity parameter
of the grinder 10 include the parameters of the rolling roll 12 serving as the workpiece
and the roll support base 68.
[0026] The distance between the rotation center of the rolling roll 12 and the rotation
center of the grinding wheel 14 is preferably used as the rigidity parameter. This
is because the position of the grinding head 16 relative to the support table 18 in
the grinding process changes depending on the distance between the rotation center
of the rolling roll 12 and the rotation center of the grinding wheel 14, and the ease
of vibration of the grinding head 16 changes accordingly. The sum of the diameter
of the rolling roll 12 and the diameter of the grinding wheel 14 may be used instead
of the distance between the rotation center of the rolling roll 12 and the rotation
center of the grinding wheel 14. In an example described below, the sum of the diameter
of the rolling roll 12 and the diameter of the grinding wheel 14 is used as the rigidity
parameter.
[0027] Fig. 2 shows front views of roll grinders including grinding wheels having different
diameters. Fig. 2(a) illustrates a roll grinder 70 having a large-diameter grinding
wheel. Fig. 2(b) illustrates a roll grinder 80 having a small-diameter grinding wheel.
When the diameter of the grinding wheel is small and the distance between the rotation
center of the rolling roll 12 and the rotation center of the grinding wheel is short,
the grinding head 16 needs to be moved forward toward the rolling roll 12 along the
guide 28 to bring the grinding wheel 14 into contact with the rolling roll 12. Therefore,
the distance between the rotation center of the grinding wheel 14 and the center of
gravity of the grinding-wheel support unit 66 (hereinafter referred to as an arm length)
is longer in the roll grinder 80 than in the roll grinder 70.
[0028] As the arm length increases, the rotational moment about the center of gravity of
the grinding-wheel support unit 66 increases even when the grinding force applied
between the rolling roll 12 and the grinding wheel 14 (tangential force in the direction
of rotation of the grinding wheel) is constant. Therefore, the rigidity of the grinding-wheel
support unit 66 changes, and the vibration of the roll grinder changes accordingly.
In other words, when the distance between the rotation center of the rolling roll
and the rotation center of the grinding wheel 14 is short and the above-described
arm length is long, the rigidity of the roll grinder is reduced.
[0029] Fig. 3 is a graph showing the relationship between the sum of the diameter of the
rolling roll 12 and the diameter of the grinding wheel 14 and the grinder rigidity.
In Fig. 3, the horizontal axis represents the sum of the diameter of the rolling roll
12 and the diameter of the grinding wheel 14 (mm), and the vertical axis represents
the grinder rigidity (N/mm). The grinder rigidity is determined by approximating the
grinding-wheel support unit 66 with a vibration model of a mass-spring-damper system
and determining the parameters of the vibration model to match the relationship between
the vibration frequency and the vibration intensity measured by the vibration meter.
Alternatively, a hammering test may be performed on the grinding-wheel support unit
66 to measure the natural frequency, and the grinder rigidity may be calculated from
the mass of the grinding-wheel support unit 66.
[0030] As illustrated in Fig. 3, the grinder rigidity increases as the sum of the diameter
of the rolling roll 12 and the diameter of the grinding wheel 14 increases, that is,
as the distance between the rotation center of the rolling roll 12 and the rotation
center of the grinding wheel 14 increases. This result shows that when the distance
between the rotation center of the rolling roll 12 and the rotation center of the
grinding wheel 14 increases, the ease of vibration of the grinding-wheel support unit
66 changes, and the grinder rigidity tends to increase accordingly. This is because
when the sum of the diameter of the rolling roll 12 and the diameter of the grinding
wheel 14 increases, the arm length decreases and the rotational moment around the
center of gravity of the grinding-wheel support unit 66 decreases accordingly. It
is clear from this result that the sum of the diameter of the rolling roll 12 and
the diameter of the grinding wheel 14 is preferably used as the rigidity parameter.
[0031] The wheel rotation parameter related to the rotational speed of the grinding wheel
14 will now be described. The wheel rotation parameter is the parameter related to
the rotational speed of the grinding wheel 14 among the parameters representing the
grinding conditions under which the rolling roll 12 is ground. Specifically, one of
the number of revolutions, the rotation frequency, and the rotational angular speed
of the grinding wheel 14 may be used as the wheel rotation parameter, and the number
of revolutions, the rotation frequency, and the rotational angular speed of the wheel
rotation motor 30 that drives the grinding wheel 14 may be used as these values. The
wheel rotation parameter affects the vibration of the grinding-wheel support unit
66 as the frequency of the vibration source that externally acts on the grinding-wheel
support unit 66. In other words, the vibration of the roll grinder 10 is determined
by the rigidity of the grinding-wheel support unit 66 that supports the grinding wheel
14 and the frequency of the vibration source.
[0032] Fig. 4 is a graph showing the relationship between the vibration frequency and the
vibration intensity. Fig. 4 shows the frequency spectrum for a specific number of
revolutions of the wheel. In Fig. 4, the horizontal axis represents the vibration
frequency (Hz) and the vertical axis represents the vibration intensity (m/sec
2). The graph of Fig. 4 shows the vibration intensity measured when the sum of the
diameter of the rolling roll 12 and the diameter of the grinding wheel 14 and the
wheel load current value, which is a load parameter, are constant and when the number
of revolutions of the wheel is 8.5 rps (frequency corresponding to the wheel rotation
is 8.5 Hz).
[0033] As illustrated in Fig. 4, the vibration intensity of the roll grinder 10 measured
by the vibration meter 32 has peaks at vibration frequencies corresponding to integer
multiples of the number of revolutions of the wheel. However, the vibration at the
wheel rotation frequency of 60 Hz is a disturbance caused by the frequency of the
power supply system and not the vibration intensity of the roll grinder 10. Thus,
it is clear that the vibration intensity has peaks at integer multiples of a specific
number of revolutions of the wheel. In the first embodiment, the peak values at the
frequencies equal to the integer multiples of a specific number of revolutions N of
the wheel is defined as PNi. Here, i is the multiple for the number of revolutions
of the wheel, and i is any integer of 1 or more. The multiple i for the number of
revolutions of the wheel may be determined in the range of 6 to 12 at a maximum. This
is because the occurrence of the abnormal vibration may not be predictable when the
maximum value of the multiple i for the number of revolutions of the wheel is less
than 6, and the peak values of the vibration tend to be smaller when the maximum value
of the multiple i for the number of revolutions of the wheel is greater than 12.
[0034] Fig. 5 is a graph showing the relationship between the wheel rotation frequency and
the vibration intensity. In Fig. 5, the horizontal axis represents the wheel rotation
frequency (Hz) and the vertical axis represents the vibration intensity (m/sec
2). The graph shown in Fig. 5 is obtained by changing the number of revolutions N of
the wheel while the rigidity parameter is maintained constant, determining the peak
values PNi (i = 1 to 6) corresponding to the frequencies of integer multiples of the
number of revolutions of the wheel, and plotting the determined values for each multiple
i. The graph shown in Fig. 5 plots the peak intensities for each multiple i for the
number of revolutions of the wheel. This graph is referred to as a peak intensity
map.
[0035] As illustrated in Fig. 5, when the number of revolutions N of the wheel is changed
while the rigidity parameter is constant, the vibration intensity has peaks corresponding
to the frequencies of integer multiples of the number of revolutions N of the wheel.
In other words, if the relationship illustrated in Fig. 5 is known, it becomes clear
how the peak value of the vibration intensity changes for each of the integer multiples
i of the number of revolutions N of the wheel when the number of revolutions N of
the wheel, which is the wheel rotation parameter, is changed. Thus, when the relationship
between the wheel rotation frequency and the vibration intensity is determined, the
range of the number of revolutions N of the wheel in which the abnormal vibration
of the roll grinder 10 occurs and the multiple i corresponding thereto can be determined
by setting the threshold for the abnormal vibration (for example, 10
-1 m/s
2).
[0036] When the relationship illustrated in Fig. 5 is obtained while changing the rigidity
parameter, an abnormal vibration map for the roll grinder 10 can be created. Fig.
6 is an abnormal vibration map related to the rigidity parameter. In Fig. 6, the horizontal
axis represents the sum (mm) of the wheel diameter and the rolling roll diameter,
and the vertical axis represents the number of revolutions of the wheel (rps).
[0037] In the abnormal vibration map illustrated in Fig. 6, the sums (4 points) of the diameter
of the rolling roll and the diameter of the grinding wheel are set on the horizontal
axis as the rigidity parameter, and bars representing the ranges of the number of
revolutions N of the wheel in which the vibration intensity exceeds the threshold
are shown for each multiple i. The abnormal vibration map shown for discrete values
of the parameter represented by the horizontal axis as in Fig. 6 is referred to as
a discrete abnormal vibration map. The discrete abnormal vibration map is preferably
created by changing the condition of the rigidity parameter to 3 or more and 15 or
less values. When the discrete abnormal vibration map is created by changing the condition
of the rigidity parameter to less than 3 values, the abnormal vibration that occurs
under the condition of a different value of the rigidity parameter cannot be easily
predicted. When the discrete abnormal vibration map is created by changing the condition
of the rigidity parameter to more than 15 values, the workload of creating the map
increases with no significant improvement in the prediction accuracy of the abnormal
vibration.
[0038] It is clear from Fig. 6 that the ranges in which the abnormal vibration of the roll
grinder 10 occurs are determined by the number of revolutions of the wheel, which
is the wheel rotation parameter related to the rotational speed of the grinding wheel
14. It is also clear that the ranges of the number of revolutions of the wheel in
which the abnormal vibration occurs vary depending on the sum of the diameter of the
rolling roll and the diameter of the grinding wheel, which is the rigidity parameter.
[0039] Referring to Fig. 6, when the sum of the diameter of the rolling roll and the diameter
of the grinding wheel is constant, the vibration intensity of the roll grinder 10
exceeds the threshold in the ranges of the number of revolutions of the wheel shown
by the bars in Fig. 6. Therefore, it can be predicted that, in these ranges, the abnormal
vibration of the roll grinder 10 will occur in the process of grinding the rolling
roll. Fig. 6 is an example in which the threshold of the abnormal vibration is set
to 10
-1 m/s
2. The threshold of the vibration intensity may be determined based on actual values
of the vibration data obtained during roll grinding of the rolling roll in which chattering
has occurred.
[0040] Fig. 7 is another example of an abnormal vibration map related to the rigidity parameter.
The vibration map illustrated in Fig. 7 is obtained by connecting, with continuous
curves, the upper limits and the lower limits of the ranges of the number of revolutions
of the wheel in which the abnormal vibration occurs for the same multiple in the abnormal
vibration map illustrated in Fig. 6. By creating this abnormal vibration map, the
range in which the abnormal vibration of the roll grinder 10 occurs can be determined
for each multiple i for the number of revolutions of the wheel for any sum of the
diameter of the rolling roll and the diameter of the grinding wheel. Thus, the abnormal
vibration of the rolling roll can be predicted. An abnormal vibration map shown for
continuous changes in the parameter represented by the horizontal axis as in Fig.
7 is referred to as a continuous abnormal vibration map.
[0041] When the continuous abnormal vibration map illustrated in Fig. 7 is prepared in
advance, the occurrence of the abnormal vibration in the process of grinding the rolling
roll 12 using the roll grinder 10 can be predicted by acquiring the sum of the diameter
of the rolling roll and the diameter of the grinding wheel as the rigidity parameter
and the number of revolutions of the grinding wheel 14 as the wheel rotation parameter.
[0042] In the abnormal-vibration-predicting method for a roll grinder according to the first
embodiment, an acquisition step is executed to acquire the rigidity parameter and
the wheel rotation parameter. After that, a prediction step is executed to predict
the abnormal vibration in the process of grinding the rolling roll by using the parameters
and the abnormal vibration map (continuous abnormal vibration map) illustrated in
Fig. 7 prepared in advance. Thus, the abnormal vibration of the roll grinder 10 corresponding
to the natural frequency of the entire mechanical system including the grinding wheel
14 and the workpiece can be predicted.
[0043] The load parameter related to the load applied to the grinding wheel 14 will now
be described. In the abnormal-vibration-predicting method for a roll grinder according
to the first embodiment, the load parameter may be additionally used, and the abnormal
vibration of the roll grinder 10 may be predicted using the rigidity parameter, the
wheel rotation parameter, and the load parameter.
[0044] The load parameter related to the load applied to the grinding wheel 14 is the parameter
related to the load (load, tangential force) applied to the contact portion between
the grinding wheel 14 and the rolling roll 12 in the grinding process. The load parameter
may be a load current value of the wheel rotation motor 30, which is an electric motor
that rotates the grinding wheel 14 (hereinafter referred to as a wheel load current
value) or the wheel cutting depth in the grinding process.
[0045] The load parameter related to the load applied to the grinding wheel 14 affects the
elastic deformation of the contact portion between the grinding wheel 14 and the rolling
roll 12. The load parameter also affects the mechanical rattling of the grinding-wheel
support unit 66, and therefore indirectly affects the grinder rigidity. When the load
parameter, which is the wheel cutting depth or the wheel load current value, is large,
the reaction force that the grinding wheel 14 receives from the rolling roll 12 increases,
and the force received by the grinding-wheel support unit 66 also increases. As a
result, the mechanical rattling of the grinding-wheel support unit 66 is suppressed,
and the apparent rigidity of the grinding-wheel support unit 66 increases.
[0046] Fig. 8 is a graph showing the relationship between the wheel load current value and
the grinder rigidity. In Fig. 8, the horizontal axis represents the wheel load current
value (A), and the vertical axis represents the grinder rigidity (N/mm). The graph
shown in Fig. 8 is the result obtained by studying the relationship between the wheel
load current value and the grinder rigidity when the sum of the diameter of the rolling
roll and the diameter of the grinding wheel is constant in the rough grinding process
performed by the roll grinder 10. It is clear from Fig. 8 that when the wheel load
current value increases, the apparent rigidity of the grinding-wheel support unit
66 varies, and the rigidity of the roll grinder 10 tends to increase.
[0047] Fig. 9 shows the abnormal vibration map (continuous abnormal vibration map) related
to the load parameter. In Fig. 9, the horizontal axis represents the wheel load current
value (A), and the vertical axis represents the number of revolutions of the wheel
(rps). The abnormal vibration map illustrated in Fig. 9 can be created by the same
method as that for creating the abnormal vibration map for the rigidity parameter
described in Figs. 4 to 7. Specifically, the frequency spectrum for a specific number
of revolutions of the wheel is measured, and a peak intensity map is created by plotting
the peak intensities for each multiple i for the number of revolutions of the wheel.
Then, multiple peak intensity maps are created by changing the load parameter, and
the continuous abnormal vibration map related to the load parameter is created from
a discrete abnormal vibration map related to the load parameter.
[0048] As illustrated in Figs. 8 and 9, the load parameter affects the rigidity of the roll
grinder 10, and therefore affects the occurrence of the abnormal vibration of the
roll grinder 10. Accordingly, it is clear that the load parameter is preferably additionally
used, and that the abnormal vibration of the roll grinder 10 is preferably predicted
using the rigidity parameter, the wheel rotation parameter, and the load parameter.
In particular, the abnormal vibration of the roll grinder 10 is preferably predicted
by using the distance between the rotation center of the rolling roll 12 and the rotation
center of the grinding wheel 14 or the sum of the diameter of the rolling roll 12
and the diameter of the grinding wheel 14 as the rigidity parameter, the wheel load
current value as the load parameter, and the wheel rotation parameter in addition
to the above-described parameters. This is because the prediction accuracy of the
abnormal vibration of the roll grinder 10 increases by using the structural rigidity
and the apparent rigidity of the grinding-wheel support unit 66. Specifically, the
abnormal vibration map (continuous abnormal vibration map) related to the rigidity
parameter illustrated in Fig. 7 may be prepared for each load parameter, and the abnormal
vibration of the roll grinder 10 may be predicted using the abnormal vibration map
related to the rigidity parameter corresponding to the acquired load parameter. Thus,
the prediction accuracy of the occurrence of the abnormal vibration of the roll grinder
10 can be increased.
[Second Embodiment]
[0049] A second embodiment of the present invention will now be described. Fig. 10 is a
schematic diagram illustrating a roll-grinding apparatus 110 capable of carrying out
an abnormal-vibration-predicting method for a roll grinder according to the second
embodiment. The roll-grinding apparatus 110 differs from the roll-grinding apparatus
100 illustrated in Fig. 1 in that an abnormal-vibration-predicting device 44 is additionally
provided. Elements of the roll-grinding apparatus 110 that are the same as those of
the roll-grinding apparatus 100 illustrated in Fig. 1 are denoted by the same reference
numerals, and redundant descriptions thereof will be omitted.
[0050] In the abnormal-vibration-predicting method for a roll grinder according to the second
embodiment, the abnormal vibration in the process of grinding the rolling roll is
predicted by using an abnormal-vibration-prediction model whose input is input data
including the rigidity parameter related to the rigidity of the roll grinder and the
wheel rotation parameter related to the rotational speed of the grinding wheel 14,
and whose output is abnormal vibration information for the process of grinding the
rolling roll.
[0051] Fig. 11 is a schematic diagram illustrating an example of the structure of the abnormal-vibration-predicting
device 44. The abnormal-vibration-predicting device 44 is, for example, a workstation
or a general-purpose computer, such as a personal computer. The abnormal-vibration-predicting
device 44 includes a control unit 46, an input unit 48, an output unit 50, and a storage
unit 52. The control unit 46 is, for example, a CPU and executes programs read from
the storage unit 52 so that the control unit 46 functions as a data acquisition unit
54, an abnormal-vibration-prediction unit 56, a prediction-model-generating unit 58,
and a guidance-information-acquisition unit 60.
[0052] The input unit 48 is, for example, a keyboard or a touch panel provided integrally
with a display. The output unit 50 is, for example, an LCD or a CRT display. The storage
unit 52 is, for example, an information recording medium, such as a re-recordable
flash memory, a hard disk that is built-in or connected with a data communication
terminal, or a memory card, and a read/write device for the information recording
medium. The storage unit 52 stores a database 62, an abnormal-vibration-prediction
model 64, programs for causing the control unit 46 to execute functions, and data
used by the programs.
[0053] The processes performed by the data acquisition unit 54, the abnormal-vibration-prediction
unit 56, the guidance-information-acquisition unit 60, and the prediction-model-generating
unit 58 will now be described. The data acquisition unit 54 acquires the rigidity
parameter related to the rigidity of the roll grinder 10 and the wheel rotation parameter
related to the rotational speed of the grinding wheel 14 as input data.
[0054] The data acquisition unit 54 executes an acquisition step to acquire the rigidity
parameter and the wheel rotation parameter. The rigidity parameter acquired by the
data acquisition unit 54 may be an operation parameter related to the rigidity of
the grinding-wheel support unit 66. The operation parameter related to the rigidity
of the grinding-wheel support unit 66 may be, for example, at least one of the distance
between the rotation center of the rolling roll 12 and the rotation center of the
grinding wheel 14 and the sum of the diameter of the rolling roll 12 and the diameter
of the grinding wheel 14. The wheel rotation parameter acquired by the data acquisition
unit 54 may be an operation parameter related to the rotational speed of the grinding
wheel 14. The operation parameter related to the rotational speed of the grinding
wheel 14 may be, for example, at least one of the number of revolutions, the rotation
frequency, and the rotational angular speed of the grinding wheel 14. The values of
the number of revolutions, the rotation frequency, and the rotational angular speed
of the wheel rotation motor 30 that drives the grinding wheel 14 may be used as the
above-described values. These parameters affect the occurrence of the abnormal vibration
of the roll grinder 10 corresponding to the natural frequency of the entire mechanical
system including the grinding wheel and the workpiece. Therefore, when these data
are included in the input data, the abnormal-vibration-prediction model 64 serves
as an abnormal-vibration-prediction model that outputs the abnormal vibration information
corresponding to the natural frequency.
[0055] The data acquisition unit 54 may acquire the input data from the control computer
40 or by an input operation performed on the input unit 48 by the operator. The data
acquisition unit 54 outputs the input data to the abnormal-vibration-prediction unit
56.
[0056] Preferably, the data acquisition unit 54 executes the acquisition step to further
acquire the load parameter related to the load applied to the grinding wheel 14 as
the input data. The load parameter acquired by the data acquisition unit 54 may be
an operation parameter related to the load applied to the contact portion between
the grinding wheel 14 and the rolling roll 12, and may be, for example, at least one
of the wheel load current value and the wheel cutting depth in the grinding process.
As described above, the load parameter affects the occurrence of the abnormal vibration.
Therefore, when the input data includes the rigidity parameter, the wheel rotation
parameter, and the load parameter, the prediction accuracy of the occurrence of the
abnormal vibration can be increased.
[0057] The data acquisition unit 54 acquires datasets, each of which is composed of actual
data of the rigidity parameter, actual data of the wheel rotation parameter, and actual
data of the abnormal vibration information, and stores the datasets in the database
62 of the storage unit 52. The data acquisition unit 54 may either acquire the datasets
of the actual data stored in the control computer 40, or acquire the datasets of the
actual data by an input operation performed on the input unit 48 by the operator.
The data acquisition unit 54 may acquire the actual data individually. In this case,
the individual actual data may be stored temporarily until the corresponding other
actual data are acquired to complete a dataset, and then stored in the database 62.
[0058] The database 62 preferably stores 100 or more datasets. More preferably, the database
62 stores 200 or more datasets. Still more preferably, the database 62 stores 500
or more datasets. The data acquisition unit 54 may perform screening on the datasets
stored in the database 62 under predetermined conditions. An upper limit may be set
for the number of datasets stored in the database 62. When the upper limit is reached,
the data acquisition unit 54 may store additional datasets by deleting the oldest
datasets and updating the datasets stored in the database 62.
[0059] When the abnormal-vibration-prediction unit 56 acquires the input data from the data
acquisition unit 54, the abnormal-vibration-prediction unit 56 executes a prediction
step to predict the abnormal vibration in the process of grinding the rolling roll
12 by using the abnormal-vibration-prediction model. The abnormal-vibration-prediction
model is, for example, a pre-trained machine learning model that outputs the abnormal
vibration information for the process of grinding the rolling roll 12 when the input
data including the rigidity parameter and the wheel rotation parameter is input. The
abnormal vibration information is information regarding the abnormal vibration in
the process of grinding the rolling roll 12. The abnormal vibration information may
be, for example, information showing the presence or absence of the occurrence of
the abnormal vibration in the grinding process or information showing the vibration
intensity of the vibration that occurs in the grinding process. When the abnormal
vibration information is the information showing the vibration intensity, the storage
unit 52 stores the threshold for the vibration intensity corresponding to the abnormal
vibration in advance. The abnormal-vibration-prediction unit 56 reads the threshold
from the storage unit 52 and compares the threshold with the output information showing
the vibration intensity to predict the occurrence of the abnormal vibration in the
process of grinding the rolling roll 12.
[0060] Neural networks (including deep learning and convolutional neural networks), decision
tree learning, random forests, support vector regression, etc., may be used as the
machine learning model. Also, an ensemble model in which multiple models are combined
and a classification model, such as the k-nearest neighbor method or logistic regression,
may also be used.
[0061] Fig. 12 illustrates an example in which a neural network is used as the abnormal-vibration-prediction
model. In Fig. 12, L1 denotes an input layer, L2 an intermediate layer, and L3 an
output layer. When this type of machine learning model is used, any parameters having
correlations with the abnormal vibration of the roll grinder 10 can be selected as
inputs without considering the problem of multicollinearity. Therefore, the prediction
accuracy of the abnormal vibration of the roll grinder 10 can be increased. For example,
a neural network having two intermediate layers and three nodes can be used, and a
sigmoid function may be used as the activation function.
[0062] The prediction-model-generating unit 58 generates a pre-trained machine learning
model by training a machine learning model using the datasets stored in the database
62. The prediction-model-generating unit 58 stores the generated pre-trained machine
learning model in the storage unit 52 as the abnormal-vibration-prediction model.
The prediction-model-generating unit 58 may perform training by dividing the datasets
stored in the database 62 into training data and test data to improve the estimation
accuracy of the abnormal vibration. For example, the prediction-model-generating unit
58 may use the training data for machine learning on the weighting coefficients of
the neural network, and use the test data to change the structure of the neural network
as appropriate to increase the accuracy rate of the prediction of the abnormal vibration
of the roll grinder 10. The structure of the neural network to be changed is, for
example, the numbers of intermediate layers and nodes. Thus, the prediction accuracy
of the abnormal vibration of the roll grinder 10 can be increased.
[0063] The prediction-model-generating unit 58 may update the weighting coefficients of
the pre-trained machine learning model using the back propagation method. The prediction-model-generating
unit 58 may update the generated pre-trained machine learning model every six months
using the datasets stored in the database 62. As the number of datasets used for machine
learning increases, the abnormal vibration of the roll grinder 10 can be predicted
with higher accuracy. By using new datasets for machine learning, the abnormal-vibration-prediction
model reflecting the recent state of the roll grinder 10 can be generated, and the
abnormal vibration of the roll grinder 10 can be predicted with higher accuracy.
[0064] The abnormal-vibration-prediction unit 56 predicts the occurrence of the abnormal
vibration in the process of grinding the rolling roll 12 by inputting the input data
including the rigidity parameter and the wheel rotation parameter to the abnormal-vibration-prediction
model and causing the abnormal-vibration-prediction model to output the abnormal vibration
information. When the abnormal-vibration-prediction unit 56 predicts the occurrence
of the abnormal vibration in the process of grinding the rolling roll 12, the abnormal-vibration-prediction
unit 56 causes the output unit 50 to display the prediction result. The operator can
check whether or not the abnormal vibration occurs in the process of grinding the
rolling roll 12 by visually checking the display.
[0065] When the abnormal vibration of the roll grinder 10 is predicted to occur or when
an instruction to execute a guidance information acquisition step is input by an input
operation performed on the input unit 48 by the operator, the guidance-information-acquisition
unit 60 executes the guidance information acquisition step. The guidance-information-acquisition
unit 60 uses the abnormal-vibration-prediction model to determine the input data for
which the abnormal vibration of the roll grinder 10 does not occur. When the abnormal
vibration of the roll grinder 10 is predicted to occur, the guidance-information-acquisition
unit 60 reads a table showing the combinations of the input data from the storage
unit 52. The guidance-information-acquisition unit 60 inputs the input data to the
abnormal-vibration-prediction model with reference to the table and causes the abnormal-vibration-prediction
model to output the abnormal vibration information.
[0066] The guidance-information-acquisition unit 60 determines the combinations of the input
data for which the output abnormal vibration information indicates that the abnormal
vibration does not occur. The guidance-information-acquisition unit 60 causes the
output unit 50 to display the determined combinations of the input data. The operator
can check the rigidity parameter and the wheel rotation parameter for which the abnormal
vibration does not occur in the roll grinding process by visually checking the display.
[0067] Thus, in the abnormal-vibration-predicting method for a roll grinder according to
the second embodiment, first, the acquisition step is executed. In this step, the
data acquisition unit 54 acquires the input data including the rigidity parameter
and the wheel rotation parameter. After that, the prediction step is executed. In
this step, the abnormal-vibration-prediction unit 56 inputs the input data including
the rigidity parameter and the wheel rotation parameter to the abnormal-vibration-prediction
model and causes the abnormal-vibration-prediction model to output the abnormal vibration
information for the process of grinding the rolling roll 12. Thus, the occurrence
of the abnormal vibration information in the process of grinding the rolling roll
12 can be predicted.
[0068] In the example illustrated in Fig. 11, the abnormal-vibration-predicting device 44
includes the prediction-model-generating unit 58. However, it is not necessary that
the abnormal-vibration-predicting device 44 include the prediction-model-generating
unit 58. When the abnormal-vibration-predicting device 44 does not include the prediction-model-generating
unit 58, the abnormal-vibration-prediction model can be provided from the outside
through the input unit 48 and stored in the storage unit 52. In addition, although
the abnormal-vibration-predicting device 44 includes the guidance-information-acquisition
unit 60 in the above-described example, it is not necessary that the abnormal-vibration-predicting
device 44 include the guidance-information-acquisition unit 60. However, when the
guidance-information-acquisition unit 60 is included, the rigidity parameter and the
wheel rotation parameter for which the abnormal vibration does not occur can be determined,
and the grinding conditions for which the abnormal vibration does not occur can be
set based on these parameters. Therefore, the abnormal-vibration-predicting device
44 preferably includes the guidance-information-acquisition unit 60.
[0069] In addition, in the abnormal-vibration-predicting method for a roll grinder according
to the second embodiment, the pre-trained machine learning model is used as the abnormal-vibration-prediction
model. However, a multiple regression model may also be used as the abnormal-vibration-prediction
model. In this case, the input of the machine learning model serves as an explanatory
variable, and the output of the machine learning model serves as a target variable.
Also when the multiple regression model is used, the parameters for the multiple regression
model are determined in advance by using the datasets stored in the database 62, and
the determined parameters are stored in the storage unit 52. The abnormal-vibration-predicting
device 44 and one of the control computer 40 and the controller 42 may be composed
of a single computer. Alternatively, the control computer 40, the controller 42, and
the abnormal-vibration-predicting device 44 may be composed of a single computer.
[0070] It has been described above that the occurrence of the abnormal vibration in the
process of grinding the rolling roll 12 can be predicted by using the abnormal-vibration-predicting
method for a roll grinder according to the first embodiment of the present invention
and the abnormal-vibration-predicting method for a roll grinder according to the second
embodiment of the present invention. By using these abnormal-vibration-predicting
methods for a roll grinder, a method for griding the rolling roll 12 while suppressing
the occurrence of the abnormal vibration during roll grinding can be provided. According
to this method for grinding the rolling roll 12, when the abnormal vibration of the
roll grinder 10 is predicted to occur by the abnormal-vibration-predicting method
for a roll grinder, the outer peripheral surface of the rolling roll 12 is ground
after changing the grinding conditions of the roll grinder 10 to grinding conditions
for which the abnormal vibration is not predicted to occur.
[0071] For example, assume that the abnormal vibration is predicted to occur in the process
of grinding the rolling roll 12 by the abnormal-vibration-predicting method for a
roll grinder according to the first embodiment. In such a case, the grinding conditions
can be reset by referring to the abnormal vibration map related to the rigidity parameter
illustrated in Fig. 7 so that the grinding conditions for the rolling roll 12 are
not within the high-risk regions in the abnormal vibration map.
[0072] The prediction of the occurrence of the abnormal vibration by the abnormal-vibration-predicting
method for a roll grinder according to the first embodiment may be performed before
starting the process of grinding the rolling roll 12. In this case, the acquisition
step is executed before the process of grinding the rolling roll 12 is started. The
set value of the rigidity parameter and the set value of the wheel rotation parameter
are acquired, and the set value of the load parameter is also acquired as necessary.
Then, the prediction step is executed. Accordingly, the occurrence of the abnormal
vibration of the roll grinder 10 can be predicted before the process of grinding the
rolling roll 12 is started, and appropriate grinding conditions for which the abnormal
vibration is not predicted to occur can be set.
[0073] The prediction of the occurrence of the abnormal vibration may be performed after
starting the process of grinding the rolling roll 12. In this case, the acquisition
step is executed after the process of grinding the rolling roll 12 is started. The
actual value of the rigidity parameter and the actual value of the wheel rotation
parameter are acquired, and the actual value of the load parameter is also acquired
as necessary. Then, the prediction step is executed. Accordingly, the occurrence of
the abnormal vibration of the roll grinder 10 can be predicted during the process
of grinding the rolling roll 12 is started, and grinding conditions can be reset to
appropriate grinding conditions for which the abnormal vibration is not predicted
to occur.
[0074] The rolling roll 12 ground by the method for grinding the rolling roll 12 in which
the grinding conditions are reset to appropriate grinding conditions is preferably
installed in a rolling mill to roll a metal strip. Since the rolling roll 12 ground
under the conditions for which the abnormal vibration of the roll grinder 10 does
not occur is installed, rolling of the metal strip can be performed while suppressing
the occurrence of chattering.
[0075] When the abnormal vibration is predicted to occur in the process of grinding the
rolling roll 12 by the abnormal-vibration-predicting method for a roll grinder according
to the second embodiment, the grinding conditions are changed, and the occurrence
of the abnormal vibration is predicted again by the abnormal-vibration-predicting
method for a roll grinder. This may be repeated, and the grinding conditions may be
reset to those corresponding to the rigidity parameter and the wheel rotation parameter
for which the abnormal vibration is not predicted to occur. When the guidance-information-acquisition
unit 60 is provided, the grinding conditions may be reset to those corresponding to
the rigidity parameter and the wheel rotation parameter determined by the guidance-information-acquisition
unit 60 as parameters for which the abnormal vibration is not predicted to occur.
When the grinding conditions of the rolling roll 12 are set as described above, the
rolling roll 12 can be ground while suppressing the occurrence of the abnormal vibration
corresponding to the natural frequency of the entire mechanical system including the
grinding wheel 14 and the workpiece.
[0076] The prediction of the occurrence of the abnormal vibration by the abnormal-vibration-predicting
method for a roll grinder according to the second embodiment may be performed before
starting the process of grinding the rolling roll 12. In this case, the acquisition
step is executed before the process of grinding the rolling roll 12 is started. The
set value of the rigidity parameter and the set value of the wheel rotation parameter
are acquired, and the set value of the load parameter is also acquired as necessary.
Then, the prediction step is executed. Accordingly, the occurrence of the abnormal
vibration of the roll grinder 10 can be predicted before the process of grinding the
rolling roll 12 is started, and appropriate grinding conditions for which the abnormal
vibration is not predicted to occur can be set.
[0077] The prediction of the occurrence of the abnormal vibration may be performed after
starting the process of grinding the rolling roll 12. In this case, the acquisition
step is executed after the process of grinding the rolling roll 12 is started. The
actual value of the rigidity parameter and the actual value of the wheel rotation
parameter are acquired, and the actual value of the load parameter is also acquired
as necessary. Then, the prediction step is executed. Accordingly, the occurrence of
the abnormal vibration of the roll grinder 10 can be predicted during the process
of grinding the rolling roll 12 is started, and grinding conditions can be reset to
appropriate grinding conditions for which the abnormal vibration is not predicted
to occur.
[0078] The rolling roll 12 ground by the method for grinding the rolling roll 12 in which
the grinding conditions are reset to appropriate grinding conditions is preferably
installed in a rolling mill to roll a metal strip. Since the rolling roll 12 ground
under the conditions for which the abnormal vibration of the roll grinder 10 does
not occur is installed, rolling of the metal strip can be performed while suppressing
the occurrence of chattering.
Examples
[Example 1]
[0079] Example 1 will now be described. In Example 1, a rolling roll for use in a cold tandem
rolling mill was ground while predicting the occurrence of the abnormal vibration
using the abnormal-vibration-predicting method for a roll grinder according to the
first embodiment. In Example 1, a vibration meter mounted on the roll grinder was
used to obtain vibration data of the roll grinder under various grinding conditions,
and the abnormal vibration map (continuous abnormal vibration map) illustrated in
Fig. 7 was created to determine the relationship between the ranges of the number
of revolutions of the wheel in which the abnormal vibration of the rolling roll occurs
and the rigidity parameter of the roll grinder. The threshold for the abnormal vibration
was set to 10
-1 m/s
2. The abnormal vibration map related to the rigidity parameter illustrated in Fig.
7 was created for each wheel load current value, which is the load parameter. The
abnormal vibration maps related to the rigidity parameter were used to predict the
occurrence of the abnormal vibration of the roll grinder. The grinding wheel used
in roll grinding was a cylindrical alumina-based wheel. The current wheel diameter
of the grinding wheel was 635 mm. The diameter of the rolling roll serving as a workpiece
was 1370 mm.
[0080] Rough grinding was selected for the traverses in the roll grinding process, and the
grinding conditions were set as follows: the load current value was 120 A, the number
of revolutions of the wheel was 750 rpm, the number of revolutions of the rolling
roll was 10 rpm, and the traverse rate was 2 mm/pass. However, according to the abnormal
vibration map (continuous abnormal vibration map) related to the rigidity parameter
created in advance, the vibration intensity was increased for three times the number
of revolutions N of the wheel, and the abnormal vibration of the roll grinder was
predicted to occur. Accordingly, the number of revolutions of the wheel was changed
to 630 rpm to reset the grinding conditions to those for which the abnormal vibration
of the roll grinder does not occur, and the rolling roll was ground. Then, the rolling
roll ground under the reset grinding conditions was used to roll a steel strip in
the cold tandem rolling mill. As a result, the steel strip was rolled without the
occurrence of chattering.
[0081] To confirm the effects of Example 1, under the above-described grinding conditions,
the vibration intensity was measured in a rolling-roll-grinding process in which the
number of revolutions of the wheel was changed to 630 rpm and a rolling-roll-grinding
process in which the number of revolutions of the wheel was unchanged from 750 rpm.
[0082] Fig. 13 is a graph showing the frequency spectrum of the measurement result of the
vibration intensity. In Fig. 13, the horizontal axis represents the frequency (Hz)
and the vertical axis represents the vibration intensity (m/sec
2). In Fig. 13, the solid line shows the vibration intensity for the number of revolutions
of the wheel of 630 rpm, and the dashed line shows the vibration intensity for the
number of revolutions of the wheel of 750 rpm.
[0083] As predicted based on the abnormal vibration map, the abnormal vibration exceeding
the threshold (0.1 m/s
2) occurred in the grinding process when the number of revolutions of the wheel was
750 rpm for which the abnormal vibration was predicted to occur. In contrast, the
abnormal vibration exceeding the threshold did not occur in the grinding process when
the number of revolutions of the wheel was 630 rpm for which the abnormal vibration
was not predicted to occur. This result confirms that the abnormal vibration can be
predicted by carrying out the abnormal-vibration-predicting method for a roll grinder
according to the present embodiment. It was also confirmed that when the abnormal
vibration is predicted to occur, the abnormal vibration of the roll grinder can be
suppressed by changing the grinding conditions to grinding conditions for which the
abnormal vibration is not predicted to occur by using the abnormal vibration map.
[Example 2]
[0084] Example 2 will now be described. In Example 2, the abnormal vibration of the roll
grinder was predicted using the abnormal vibration map created by a method similar
to that in Example 1. In Example 2, an abnormal vibration map (discrete abnormal vibration
map) related to the rigidity parameter was created as the abnormal vibration map by
changing the rigidity parameter to four values. Then, the load parameter was changed
to five values, and the abnormal vibration map (discrete abnormal vibration map) related
to the rigidity parameter was created for each load parameter. Then, a three-dimensional
abnormal vibration map (continuous abnormal vibration map) with the sum of the diameter
of the rolling roll and the diameter of the grinding wheel on the X-axis and the load
parameter on the Y-axis was created by connecting the upper limits and the lower limits
of the ranges of the number of revolutions of the wheel in which the abnormal vibration
occurs.
[0085] In the abnormal vibration map of Example 2, the sum of the diameter of the rolling
roll and the diameter of the grinding wheel was used as the rigidity parameter. The
abnormal vibration map related to the rigidity parameter was created by changing the
sum of the diameter of the rolling roll and the diameter of the grinding wheel in
the range of 1800 to 2500 mm. The wheel load current value was used as the load parameter.
The wheel load current value was changed in the range of 100 to 140 A, and the abnormal
vibration map related to the rigidity parameter was created for each load parameter.
These maps were used to create the three-dimensional abnormal vibration map (continuous
abnormal vibration map).
[0086] In Example 2, the three-dimensional abnormal vibration map created as described above
was used to predict the abnormal vibration of the roll grinder. A cylindrical alumina-based
grinding wheel was used for roll grinding. The current wheel diameter of the grinding
wheel was 640 mm. The diameter of the rolling roll was 1302 mm.
[0087] Rough grinding was selected for the traverses in the roll grinding process. The grinding
conditions were set as follows: the number of revolutions of the wheel was 730 rpm,
the number of revolutions of the rolling roll was 10 rpm, and the traverse rate was
2 mm/pass. Based on the three-dimensional abnormal vibration map created as described
above, the abnormal vibration was predicted to occur when the wheel load current value
was 140 A. For the same rigidity parameter, the abnormal vibration was not predicted
to occur when the wheel load current value was set to 100 A. Accordingly, the wheel
load current value was set to 100 A and 140 A, and roll grinding was performed under
two conditions while the vibration intensity was measured by the vibration meter 32.
[0088] Fig. 14 is a graph showing the measurement result of the vibration intensity. In
Fig. 14, the horizontal axis represents the frequency (Hz), and the vertical axis
represents the vibration intensity (m/sec
2). In Fig. 14, the solid line shows the vibration intensity for the wheel load current
value of 100 A, and the dashed line shows the vibration intensity for the wheel load
current value of 140 A.
[0089] As predicted based on the three-dimensional abnormal vibration map, the abnormal
vibration in which the vibration intensity exceeded the threshold (0.1 m/s
2) occurred when the wheel load current value was 140 A. In contrast, the abnormal
vibration exceeding the threshold did not occur in roll grinding when the wheel load
current value was 100 A for which the abnormal vibration was not predicted to occur.
This result confirms that the abnormal vibration can be predicted by carrying out
the abnormal-vibration-predicting method for a roll grinder according to the present
embodiment. It was also confirmed that when the abnormal vibration is predicted to
occur, the abnormal vibration of the roll grinder can be suppressed by changing the
grinding conditions to grinding conditions for which the abnormal vibration is not
predicted to occur by using the abnormal vibration map.
[Example 3]
[0090] Example 3 will now be described. In Example 3, the occurrence of the abnormal vibration
in the process of grinding the rolling roll was predicted by using an abnormal-vibration-prediction
model whose input is the rigidity parameter of the roll grinder, the wheel rotation
parameter of the grinding wheel, and the load parameter related to the load applied
to the grinding wheel and whose output is the abnormal vibration information for the
process of grinding the rolling roll. In Example 3, the actual data during roll grinding
performed under various grinding conditions in advance was acquired as training data.
The training data acquired as the actual data are as follows:
Rigidity parameter of roll grinder: Sum of diameter of rolling roll and diameter of
grinding wheel
Wheel rotation parameter of grinding wheel: Number of revolutions of the wheel
Load parameter related to load applied to grinding wheel: Wheel load current value
[0091] For each grinding condition, the actual value of the abnormal vibration information
was acquired by evaluating the vibration intensity exceeding the threshold (0.1 m/s
2) as NG and the vibration intensity less than or equal to the threshold as OK. With
regard to the ranges of the grinding conditions collected as the training data, the
range of the sum of the diameter of the rolling roll and the diameter of the grinding
wheel was 1800 to 2500 mm, the range of the number of revolutions of the wheel was
8.5 to 13.5 rpm, and the range of the wheel load current value was 100 to 140 A.
[0092] The abnormal-vibration-prediction model was created by machine learning based on
a machine learning model using datasets, each of which is composed of the actual input
data of the rigidity parameter, the wheel rotation parameter, and the load parameter
and the actual output data regarding the occurrence or non-occurrence of the abnormal
vibration (OK or NG). The machine learning model used was a neural network with two
intermediate layers and three nodes, and a sigmoid function was used as the activation
function.
[0093] In Example 3, the abnormal-vibration-prediction model created as described above
was used to predict the occurrence of the abnormal vibration in the process of newly
grinding rolling rolls. Ten rolling rolls were ground. In Example 3, when the abnormal
vibration was predicted to occur in a rough grinding process for a rolling roll based
on the abnormal-vibration-prediction model, the rolling roll was ground after changing
the grinding conditions of the roll grinder to grinding conditions determined by the
guidance-information-acquisition unit as grinding conditions for which the abnormal
vibration was not predicted to occur. As a result, when the ground rolling rolls were
installed in a cold rolling mill to roll a steel plate, no chattering occurred in
the rolling process. In contrast, other rolling rolls were ground without changing
the grinding conditions of the roll grinder even when the abnormal vibration was predicted
to occur based on the abnormal-vibration-prediction model. When these rolling rolls
were used to roll a steel sheet, chattering occurred at an incidence of 60%.
Reference Signs List
[0094]
- 10
- roll grinder
- 12
- rolling roll
- 14
- grinding wheel
- 16
- grinding head
- 18
- support table
- 20
- roll chuck
- 22
- roll rotation motor
- 24
- tail stock
- 26
- guide
- 28
- guide
- 30
- wheel rotation motor
- 32
- vibration meter
- 40
- control computer
- 42
- controller
- 44
- abnormal-vibration-predicting device
- 46
- control unit
- 48
- input unit
- 50
- output unit
- 52
- storage unit
- 54
- data acquisition unit
- 56
- abnormal-vibration-prediction unit
- 58
- prediction-model-generating unit
- 60
- guidance-information-acquisition unit
- 62
- database
- 64
- abnormal-vibration-prediction model
- 66
- grinding-wheel support unit
- 68
- roll support base
- 70
- roll grinder
- 80
- roll grinder
- 100
- roll-grinding apparatus
- 110
- roll-grinding apparatus
1. An abnormal-vibration-predicting method for a roll grinder that grinds an outer peripheral
surface of a rolling roll with a grinding wheel while the rolling roll rotates, the
abnormal-vibration-predicting method comprising:
an acquisition step of acquiring a rigidity parameter related to a rigidity of the
roll grinder and a wheel rotation parameter related to a rotational speed of the grinding
wheel; and
a prediction step of predicting an occurrence of an abnormal vibration in a process
of grinding the rolling roll by using the rigidity parameter and the wheel rotation
parameter.
2. The abnormal-vibration-predicting method for a roll grinder according to Claim 1,
wherein the rigidity parameter includes a distance between a rotation center of the
rolling roll and a rotation center of the grinding wheel or a sum of a diameter of
the rolling roll and a diameter of the grinding wheel.
3. The abnormal-vibration-predicting method for a roll grinder according to Claim 1,
wherein, in the acquisition step, a load parameter related to a load applied to the
grinding wheel is further acquired, and
wherein, in the prediction step, the occurrence of the abnormal vibration in the process
of grinding the rolling roll is predicted by using the rigidity parameter, the wheel
rotation parameter, and the load parameter.
4. The abnormal-vibration-predicting method for a roll grinder according to Claim 3,
wherein the load parameter includes a load current value of an electric motor that
rotates the grinding wheel.
5. An abnormal-vibration-predicting method for a roll grinder that grinds an outer peripheral
surface of a rolling roll with a grinding wheel while the rolling roll rotates, the
abnormal-vibration-predicting method comprising:
an acquisition step of acquiring input data including a rigidity parameter related
to a rigidity of the roll grinder and a wheel rotation parameter related to a rotational
speed of the grinding wheel; and
a prediction step of predicting an occurrence of an abnormal vibration in a process
of grinding the rolling roll by using an abnormal-vibration-prediction model whose
input is the input data and whose output is abnormal vibration information for the
process of grinding the rolling roll.
6. The abnormal-vibration-predicting method for a roll grinder according to Claim 5,
wherein the rigidity parameter includes a distance between a rotation center of the
rolling roll and a rotation center of the grinding wheel or a sum of a diameter of
the rolling roll and a diameter of the grinding wheel.
7. The abnormal-vibration-predicting method for a roll grinder according to Claim 5,
wherein the input data acquired in the acquisition step includes the rigidity parameter,
the wheel rotation parameter, and a load parameter related to a load applied to the
grinding wheel.
8. The abnormal-vibration-predicting method for a roll grinder according to Claim 7,
wherein the load parameter includes a load current value of an electric motor that
rotates the grinding wheel.
9. A rolling-roll-grinding method using the abnormal-vibration-predicting method for
a roll grinder according to any one of Claims 1 to 8,
wherein, when the abnormal vibration is predicted to occur in the prediction step,
grinding conditions of the roll grinder are changed to grinding conditions for which
the abnormal vibration is not predicted to occur.
10. A metal-strip-rolling method comprising:
rolling a metal strip in a rolling mill in which a rolling roll is installed, the
rolling roll being ground by the rolling-roll-grinding method according to Claim 9.
11. An abnormal-vibration-predicting device for a roll grinder that grinds an outer peripheral
surface of a rolling roll with a grinding wheel while the rolling roll rotates, the
abnormal-vibration-predicting device comprising:
a data acquisition unit that acquires input data including a rigidity parameter related
to a rigidity of the roll grinder and a wheel rotation parameter related to a rotational
speed of the grinding wheel; and
an abnormal-vibration-prediction unit that predicts an occurrence of an abnormal vibration
of the roll grinder by using an abnormal-vibration-prediction model whose input is
the input data and whose output is abnormal vibration information.
12. The abnormal-vibration-predicting device for a roll grinder according to Claim 11,
wherein the input data acquired by the data acquisition unit includes the rigidity
parameter, the wheel rotation parameter, and a load parameter related to a load applied
to the grinding wheel.
13. The abnormal-vibration-predicting device for a roll grinder according to Claim 11
or 12, further comprising a guidance-information-acquisition unit that determines
the input data for which the abnormal vibration does not occur by using the abnormal-vibration-prediction
model.
14. A roll-grinding apparatus comprising:
a roll grinder that grinds an outer peripheral surface of a rolling roll with a grinding
wheel while the rolling roll rotates; and
the abnormal-vibration-predicting device for a roll grinder according to Claim 11
or 12.
15. A roll-grinding apparatus comprising:
a roll grinder that grinds an outer peripheral surface of a rolling roll with a grinding
wheel while the rolling roll rotates; and
the abnormal-vibration-predicting device for a roll grinder according to Claim 13.