Field of the Invention
[0001] The present invention relates generally to wood strength and stiffness prediction.
Background of the Invention
[0002] It can be appreciated that wood strength grading has been in use for many years.
This has traditionally been accomplished by using visual grading rules to predict
strength. Other technologies such as mechanical bending and X-ray, to sense density,
have been used to estimate the strength of wood.
[0003] The main problem with conventional visual wood grading is that is does not predict
strength or stiffness accurately. The use of the mechanical bending improved the ability
to predict stiffness of the lumber but the correlation to strength is poor. X-ray
based systems predict strength and stiffness based on density only.
[0004] While these devices have been suitable for the particular purpose to which they addressed,
they are not as suitable for highly accurate strength and stiffness prediction of
today's variable and often low-quality wood resource.
[0005] US Patent 4,926,350 (Bechtel et al) teaches a non-destructive testing system for lumber which involves measurement of
grain angle about a board and transformation of the measured grain angle values to
extract features indicative of knot identification, grain angle perturbations or strength
of the board.
Summary of the Invention
[0006] The present invention provides a new prediction method of wood strength and stiffness.
[0007] The general purpose of the present invention, which will be described subsequently
in greater detail, is to provide a new prediction method that has many of the advantages
of the board strength prediction methods mentioned above and in addition, novel features
that result in a greater prediction accuracy.
[0008] To attain this, the present invention includes generally the use of streams of sensor
information integrating into a physical model providing for strength and stiffness
prediction. It is to be understood however that the invention is not limited in its
application to the details of the method and to any arrangements of the components
set forth in the following description or illustrated in the drawings, or to the details
of the algorithm employed. The invention is capable of other embodiments and of being
practiced and carried out in various ways.
[0009] One object of the present invention is to provide a prediction of wood strength that
will predict the strength and stiffness in the lumber based on a physical model using
several sensing technologies. Physical model, in this context, refers generally to
an algorithm that utilizes the material mechanical behavior and impact of various
wood characteristics on strength and stiffness.
[0010] Another object is to provide a prediction of wood strength and stiffness that can
integrate many technologies into a single model thereby providing differing accuracy
prediction based on the sensors used.
[0011] Another object is to provide a prediction of wood strength and stiffness that with
sensor technologies added together improves the ability of any one sensor to predict
strength and stiffness.
[0012] To the accomplishment of the above and related objects, this invention is embodied
in the form illustrated in the accompanying drawings, attention being called to the
fact, however, that the drawings are illustrative only, and that changes may be made
in the specific construction illustrated.
[0013] In one aspect, the method of the present invention may be characterized as a method
of, accomplishing, non-destructive testing of a wood piece using a multiplicity of
sensors. The method includes the steps of causing the controlling and processing of,
the following:
- a) sensing the wood piece,
- b) collecting information from the sensors, and
- c) integrating the information into a physical model providing for strength and stiffness
prediction.
[0014] The step of collecting information may include collecting information relating to
material characteristics of the wood piece and relating to fiber quality characteristics
of the wood piece. The material characteristics may include one or more of the following
material characteristics of the wood piece: growth ring thickness; grain angle deviation;
clear wood density; knot location; knot density; knot type; knot size; location in
the tree from which the wood piece was cut. The fiber quality characteristics may
include one or more of the following fiber quality characteristics: microfibril angle,
juvenile wood, biodeterioration; reaction wood species; and manufacturing or drying
defects including one or more of the following defects: sawcuts, checks, shake; size
of actual cross-section, and species.
[0015] In one embodiment the method further includes the steps of providing one or more
of the following sensor types: X-ray, microwave, camera vision, laser triangulation
three-dimensional geometry, material vibration measurements, laser based tracheid
effect measurement.
[0016] The invention provides a method continue as per claim 1. Clear wood equivalent (CWE)
will hereinafter also be referred to as clear wood density equivalent/clear wood equivalent
density.
[0017] The further step of constructing clear wood density equivalent as a first step in
strength and stiffness prediction may also include; comprising:
- a) Measuring of material density in a plurality of dimensions, for example using x-ray
sensors,
- b) Estimating other wood volume characteristics, including grain angle, growth ring
angle, location in the tree from which the wood piece was cut, fiber quality including
microfibril angle, and 3D geometry of the scanned piece,
- c) Reducing clear wood equivalent density by the effect of the wood volume characteristics
using relationships of these characteristics on mechanical behavior of wood.
- d) Detecting size, location and classification of wood defects, including but not
limited to, knots, biodeterioration, reaction wood, juvenile wood, manufacturing and
drying defects, pith, pitch, wet pockets,
- e) Further reducing clear wood equivalent density by the effect of wood defects in
respective locations of occurrence and effect these characteristics on mechanical
behavior of wood; and
- f) Constructing strength and stiffness models using clear wood density equivalent.
[0018] The further step of constructing clear zero grain angle wood equivalent as a first
step in strength and stiffness prediction may also be included, comprising:
- a) Measuring of material grain angle in a plurality of dimensions,
- b) Constructing clear wood zero grain angle equivalent by assigning a nominal density
value which is an average for a wood species whenever grain angle relative to a longitudinal
axis of the piece is zero, and less wherever the grain angle deviates from zero and
accordingly to grain angle effect on mechanical behavior of the wood piece,
- c) Reducing clear wood equivalent density by the effect of the wood volume characteristics
using theoretical and empirical relationships of these characteristics on mechanical
behavior of wood,
- d) Further reducing clear wood equivalent density by the effect of wood defects in
their respective locations of occurrence and the effect on mechanical behavior of
the wood piece, and
- e) Constructing strength and stiffness models using clear wood density equivalent.
[0019] The further step may be included of estimating clear wood equivalent in an area of
the wood piece occupied by a knot by virtually removing density occupied by a knot
and replacing it by a density of clear wood, mechanically equivalent to the removed
knot.
[0020] The sensors may include a sensor collecting pixel values from a corresponding matrix
of pixels in the sensor, and wherein for every pixel density, d
ij, the method and software includes the step of computing clear wood equivalent, e
ij, using adaptive threshold clear wood density, a
ij, in the equation:

wherein:

i is virtual pixel index along the length of the wood piece
j is virtual pixel index traversely across the wood piece
K is knot density ratio, defined as a ratio of clear wood density to density of knot
knot density is difference between wood density d
ij and clear wood density

[0021] KnotEquivalent is defined as clear wood density equivalent residing in knot volume,

wherein M is the material knot property ratio:

[0022] The step of computing e
ij may include substituting:

[0023] The step of predicting strength and stiffness may include the step of estimating
effect of the grain angle by decomposing the grain angle into running average and
local deviation components, wherein the running average component is a function (g
ave (GA)) of running average grain angle along a length of the wood piece excluding grain
deviations around knots, and wherein the local deviation component is a function (g
dev (GA)) of the grain angle defined as a difference between a local measured grain angle
and the running average grain angle. The method further includes the step of computing
grain angle effect functions g
ave (GA) and g
dev (GA) for determining the effect of grain angle on a material property wherein both
g
ave (GA) and g
dev (GA) are computed according to the following equation:

[0024] n and m are empirical constants, R is the ratio between the material property measured
parallel to the grain versus the material property measured perpendicular to the grain.
Optimizing constants R, n, and m are specific to the wood species corresponding to
the wood piece.
- a) The method further include the steps of:
applying the running average modification function (gavg(GA)) to the clear wood equivalent density by multiplication according to:

- b) modifying the grain deviation function (gdev(GA)) to derive a further grain angle deviation modification function to avoid multiple
density reduction due to knot detected in density according to:

wherein T is a constant threshold value density, and
- c) applying the grain angle deviation modification function g'dev(GAij,Kij) to clear wood equivalent density by multiplication

[0025] The method may further include the step of estimating a moisture content effect function,
m(MC), in the clear wood density equivalent by computing m(MC) with a reference to
12% moisture content wherein
m(MC) = either A - B * MC for MC < MC
sat, or
m(MC) = m
sat for MC ≥ MC
sat
Where

[0026] P is the ratio of a material property of interest when the wood piece is saturated
with moisture to the same material property when the wood piece is oven-dray

[0027] MC
sat is fiber saturation point moisture content within the percentage range 25 to 30%.
[0028] The method may further include the step of estimating a modulus of elasticity (MOE)
profile of a section of the wood piece using estimation of modulus inertia computed
from a clear wood density equivalent by:
(a)computing an inertia profile along a longitudinal axis of the wood piece according
to:

wherein the longitudinal axis is in an x-axis direction, and wherein Δx is a pixel increment in the x-axis direction, and wherein center of gravity is computed
according to:

and wherein eij is clear wood equivalent density;
(b) computing MOE within a longitudinal window on the wood piece, wherein MOEk =f(Ii,k),
and wherein f(Ii,k) is a function that estimates the MOE in location k, using the inertia profile Ii, whereby MOEk provides an estimate of the MOE along the board main axis, to provide an MOE profile.
The function f(Ii,k) may be estimated using weights Wj according to:

[0029] The function
f(Ii,k) may also be calculated as a close-form solution modulus of inertia profile according
to:

wherein

Δx is a discrete increment in the direction of the x axis,

w
i is discrete representation of w(x), and
J
i is I
i
[0030] The step of estimating modulus of elasticity from the MOE profile may use a low point
or an average of the MOE profile.
[0031] The method may include the step of constructing clear wood density equivalent of
a limited section of the wood piece, wherein the limited section is translated along
the grain direction axis of the wood piece. The step of constructing clear wood density
equivalent may include:
(a) computing minimum clear wood equivalent density profile in a window of the wood
piece and running the window along the grain direction axis of the wood piece such
that the window combines adjacent weak areas

wherein i is pixel index within window, i = 0 ... W-1, along the grain direction axis,
wherein the grain direction axis is in the nominal grain direction of the wood piece
j is index perpendicular to the grain direction axis,
(b) computing weighted clear wood equivalent density for the entire section

wherein wj is a cross-sectional weight which is greater at edges of the wood piece and reduced
in the middle of the wood piece between the edges,
(c) computing tension strength (UTS) and bending strength (MOR) from e


[0032] Where
fUTS and
fMOR are empirical relationships between clear wood density and strength.
[0033] The strength functions
fUTS and
fMOR may be determined according to

and

wherein A, p, B, r are empirical constants.
[0034] The method may also include the further step of estimating bending and tension strength
of at least a portion of the length of the wood piece by determining a minimum of
a lengthwise strength profile of the wood piece.
[0035] The method may further include the step of refining the model by optimization of
model parameters to minimize prediction error. For example, the model may be optimized
for a particular wood species for particular commercial dimension lumber size.
[0036] In the method the step of collecting information relating to fiber quality may include
the step of estimating fiber quality by measuring a vibration frequency of the wood
piece, wherein the vibration frequency is a result of vibration induced only by feeding
of the wood piece in an infeed feeding the wood piece, for example between a plurality
of infeed rolls, to the sensors and without any explicit vibration-inducing impact
means.
[0037] The method may further include the step of estimating bending and tension strength
of the wood piece by measuring a vibration frequency of the wood piece wherein the
vibration frequency is a result of vibration induced only by feeding of the wood piece
in an infeed feeding the wood piece to the sensors and without any explicit vibration-inducing
impact means.
[0038] At least two pairs of infeed rolls and two pairs of outfeed rolls, respectively upstream
and downstream of the sensors, may be employed. A non-contact optical scanner may
be employed to measure the vibration frequency, which may be measured by dividing
the vibration signal into different sections corresponding to the support and constraint
conditions of the wood piece on the infeed or the outfeed rolls. The support conditions
may be unconstrained, semi-constrained, or fully-constrained.
[0039] In the method a parameter E may be calculated according to:

wherein E is estimated MOE, K is a constant than contains the effect of the type of
constraint, whether unconstrained, semi-constrained or fully constrained, as well
as board span effect, I is a constant for a particular board cross-sectional size
and m is distributed mass. m may be assumed constant, or measured, for example by
a scanner using a radiation source.
[0040] In the method, the moisture content may be estimated using microwave measurement,
or using microwave measurement and density estimation, and density characteristics
may be measured by a scanner using a radiation source. The moisture content (mc) may
be computed according to:

where K and n are empirical constants, and a is microwave amplitude. The microwave
amplitude may be measured when an applied microwave radiation is polarized in a direction
transverse to a longitudinal axis of the wood piece. The moisture content (mc) may
also be computed according to:

where K, m, and n are empirical constants,
a is microwave amplitude, and d is density, which may be measured by a scanner using
a radiation source. Moisture content and microwave amplitude may be corrected for
temperature.
[0041] The lumber value of the lumber may be maximized by cutting lumber or end trimming
lumber based on estimated modulus of elasticity profile, wherein increased lumber
value of the lumber is achieved by trimming off a part of the lumber board having
a grade reducing property.
[0042] A computer program product which can be used in the method according to the present
invention includes computer readable program code means for causing refining the physical
prediction model of the workpiece by computer readable program code means for causing
optimization of model parameters to minimize prediction error. Input variables in
the property (strength or stiffness) physical prediction model include collected board
data and model parameters. The Predicted Property = f
(Model Parameters, Board Data), where,
Model Parameters = (p
1, p
2, p
3,..., p
N,) and
Board Data is the sensor information gathered about the wood piece as set out above. The error
to be optimized is a measure of the difference between predicted property and observed
property, for example absolute value of the difference, that is Error = AbsoluteValue
(Predicted Property - Observed Property). The optimization of model parameters is
achieved by minimizing combined error of a large sample of boards. For example, combined
error for a sample of boards is a sum of the errors, as defined above, that is SumOfErrors
= Sum(Error
i). Combined error could be quantified in various ways, including R-square, root-mean-squared
error, etc. Optimization is implemented by varying values of
Model Parameters so the combined measure of the error for a sample in minimized. Various optimization
algorithms may be employed, for example genetic algorithm, random walk, direction
set (Powell's) method, etc as would be known to one skilled in the art.
Brief Description of the Drawings
[0043] In the accompanying drawings, in which like reference characters designate the same
or similar parts throughout the several views:
FIGURE 1 is a diagrammatic view of multiple sensors measuring attributes and properties
of a board for physical modeling by a processor algorithm to predict strength and
stiffness of the board as algorithm outputs.
FIGURE 1A illustrates board coordinates, showing the main axis (X) along the nominal
grain angle direction.
FIGURE 1B illustrates a board divided into a 3-dimentional grid of discrete elements,
showing index notation for different directions.
FIGURE 1C illustrates a board divided into a 2-dimentional grid of discrete elements,
showing notation of clear wood equivalent elements eij and a section of length W taken from it to estimate strength assigned a location
in the center of the section.
FIGURE 1D shows an example of a density and clear wood equivalent profile for a virtual
detector (pixels of the same index j) along the board main axis X. The upper-most
graph (with peaks pointing upwards) show actual density profile with its reference
density profile below. The density peaks correspond to knots. The lower-most profile
(with peaks pointing downwards) shows clear wood equivalent density.
FIGURE 1E shows an example of predicted tension and bending profiles along the board
main axis X, showing the lowest point (minimum) computed from a moving section along
the board main axis.
FIGURE 1F shows an example of moment of inertia profile with a section of a board
used to compute modulus of elasticity (MOE) for a given location where prediction
of modulus of elasticity (MOE) is computed using moment of inertia within a section
of length s that moves along the board main axis.
FIGURE 1G illustrates loading conditions assumed for computation of predicted modulus
of elasticity (MOE) using moment of inertia within a section of length s.
FIGURE 2A illustrates steps involved in clear wood density computing for a density
cross-section showing original density dij and adaptive threshold aij.
FIGURE 2B illustrates steps involved in clear wood density computing for a density
cross-section, showing clear wood equivalent density eij.
FIGURE 3 are linear and nonlinear models of a function reflecting effect of moisture
content m(MC).
FIGURE 3A is a moisture content prediction model showing predicted vs. oven-dry moisture
content for southern yellow pine (SYP).
FIGURE 4 illustrates a linear grading machine geometry, showing infeed wheel sets
#1 and #2, outfeed wheel sets #1 and #2, and 3D-profile sensor.
FIGURE 5 illustrates board behavior as the board passes through the linear grading
machine. Characteristic points A, B, C, and D define different sections in the linear
profile sensor profile corresponding to different support conditions of the board,
wherein:
- a) in FIGURE 5A the board leading end is at point A
- b) in FIGURE 5B the board leading end is at point B
- c) in FIGURE 5C the board leading end is at point C
- d) in FIGURE 5D the board leading end is at point D.
FIGURE 6 is continued board behavior as it passes through the linear grading machine
having characteristic points E, F, and G and a board adjustment before and after the
characteristic point F, wherein:
- a) in FIGURE 6A the board trailing end is at point E
- b) in FIGURE 6B the board trailing end is at point F
- c) in FIGURE 6C the board trailing end has passed point F
- d) in FIGURE 6D the board trailing end is at point G.
FIGURE 7 is 3D-profile sensor profile segmented into different sections using characteristic
points of FIGURES 5A-D and 6A-D.
Detailed Description of Embodiments of the Invention
[0044] We have developed a machine to predict the strength and stiffness of wood based on
a physical model using several sensing technologies. A physical model is an algorithm
that relates the sensor information to the strength/stiffness of the material based
on physical properties of the material and other characteristics, such as defects.
The machine can integrate many sensing technologies into a single model and provides
differing accuracy prediction based on the types and number of sensors used. In one
embodiment, this technology builds on an X-ray based strength-grading machine, such
as sold by Coe Newnes/McGehee ULC under the trademark XLG (X-ray Lumber Gauge).
[0045] The following physical aspects of wood effect strength and stiffness of wood directly:
wane, moisture content, Modulus of Elasticity including whether measured flatwise
or edgewise, growth ring thickness or density (rings/inch), grain angle deviation,
density, knots (location, density, type and size), location in the tree from which
the wood was cut, fiber quality, such as mirofibril angle, juvenile wood, biodeterioration,
etc., reaction wood species, manufacturing and drying defects, such as sawcuts, checks,
shake, etc. and, size of actual cross-section.
[0046] These wood aspects are measured or predicted with various sensing technologies and
the data is used to predict the wood strength and stiffness. The reason to chose a
physical model over other techniques such as a neural network, regression, or functional
approximation model, is the stability and low training requirements. The model is
based on the physical characteristics of the wood and how they affect the strength
and stiffness directly rather than a statistical model. The sensor technologies added
together improve the ability of any one sensor to predict strength and stiffness.
[0047] The object is to have the predicted wood characteristics match the observed characteristics.
The sensor technologies that can be used include but are not limited to the following:
density map, moisture content, slope of grain map, growth ring measurements, dynamic
wood bending for stiffness measurement, dynamic oscillation to determine stiffness,
wood fiber quality determination (color vision, gray scale, infra-red, etc), determination
of species, profile measurement, location wood is cut from in the tree, and mechanical
wane propagation measurement.
[0048] Combining some or all of these physical measurements, for example as combined according
to the detailed methodology described below, leads to a better-predicted wood strength
and stiffness accuracy.
[0049] With respect to the following description then, it is to be realized that the optimum
relationship between the components and steps of the invention, to include variations
in method, components, materials, shape, form, function and manner of operation, assembly
and use, are deemed readily apparent and obvious to one skilled in the art, and all
equivalent relationships to those illustrated in the drawings and described in the
specification are intended to be encompassed by the present invention.
Clear Wood Equivalent
[0050] Clear wood equivalent (CWE) is used as an input to specific strength and stiffness
models. Various prediction models may be used or developed based on this concept,
such as prediction of ultimate tensile strength, modulus of rupture, etc. The CWE
method approximates equivalent properties of a section of material in terms of density.
[0051] Wood, in a coordinate system such as seen in FIGURE 1A, is divided into a grid of
virtual pixels (rectangular section) in the face plane or 3-dimensionally, as illustrated
in FIGURE 1B. The size of the virtual pixels is configurable so as to be optimized.
Initially a reference density from calibrated X-ray measurement is assigned to a pixel.
Reference density is taken from density adaptive threshold. Following this, the initial
density is modified by various wood characteristics, among which the most important
is knot modification. The resulting density is equivalent to clear wood. In this context
clear wood is defined as straight grained, defect-free, with a reference moisture
content of 12%. FIGURE 1D shows an example of an actual density profile (ADP) along
with its corresponding reference density profile (RDP) and corresponding clear wood
equivalent (CWE) density profile along the main axis X. The equivalent to clear wood
is then used directly for strength and stiffness using various algorithms, known relationships;
etc.
[0052] Some of the following steps may be in used in clear wood equivalent density approximating
of a virtual pixel:
- a) Start with reference density (adaptive threshold) at a virtual pixel.
- b) modify initial density for knots by considering presence of a knot in a location
if the difference between the reference and actual density of the knot is non-zero.
- c) segment into regions so that a region contains a knot, use the segmented regions
to recognize the knots region or regions.
[0053] Different modification functions are used for the following knot types: sound through
knot, sound edge knot, sound intermediate knot, loose through knot, loose edge knot,
loose intermediate knot.
[0054] Knot modification uses a concept of replacing a knot by its equivalent in terms of
fiber strength or stiffness. This involves virtually removing the knot, computing
remaining clear fiber volume, computing volume of the removed knot and adding the
strength/stiffness equivalent of the knot to clear fibers. For every pixel density,
d
ij, clear wood equivalent, e
ij, is computed using adaptive threshold a
ij (see Figures 2a and 2b)

[0055] Where,

i is virtual pixel index along wood length (virtual line index)
j is virtual pixel index across wood length (virtual detector index)
K is knot density ratio, defined as a ratio of Clear Wood Density to Knot Density
and knot density is

KnotEquivalent is defined as clear wood density equivalent residing in knot volume,

[0056] Where M is property (stiffness or strength) knot ratio

[0057] The above relationships may be simplified to

or

Grain Angle Modification
[0058] Grain angle is measured or estimated using one or more of the following techniques:
microwave, optical, tracheid effect on face plane, 2D angle, tracheid effect on face
plane and edges, 3D angle, growth ring pattern analysis with vision images (color
or gray-scaled images), tracheid effect and growth ring pattern analysis with vision
images. This algorithm accounts for the presence of a knot and grain deviation in
the same location. Grain angle is decomposed into two components: local average, and,
local deviation.
[0059] Grain angle (GA) effect function for both average and the deviation, g(GA), reflects
the relationship of grain angle vs. strength (or stiffness). This is derived from
Hankinson's formula (Bodic 1982),

where n, m, are empirical constants, initially n = m = 2, (optimized).
R is the ratio between the property of interest (strength or stiffness) parallel to
perpendicular to the grain.
[0060] Constants R, n, and m are to be optimized, with a restriction that the g(GA=0) =
1 and 1 ≥ g(GA) > 0 for any GA. Modification function g(GA) is applied to CWE density
by multiplication of

[0061] In case of grain deviation, g(GA) is further modified to account for a knot in the
same location to eliminate a multiple CWE density reduction

[0062] Where, T is a threshold value in terms of density.
[0063] Important to the property of this relationship is if k
ij = T, then grain deviation modification has no effect:

[0064] Both local average and local deviation are applied independently to CWE density.
Moisture content modification
[0065] The moisture content effect function, m(MC), reflects the known effect of moisture
content on strength or stiffness. This relationship is modeled as a linear (downward)
for MC < MC
sat =∼ 25%, and constant, m(MC) = m
sat, for MC >= MC
sat. Ratio m(MC
sat)/m(0) corresponds to the ratio between a property (MOE, MOR, UTS) at saturation to
oven dry, P = S
sat/S
o. Based on literature, this ration is about 0.5 for UTS and MOR and 0.7 for MOE. Since
the basis for our computations is property at MC = 12% then m(12%) = 1.0.
[0066] Therefore the requirements for the m(MC) are:
a. MC effect function is linear with a negative slope in the MC range from zero to
saturation, and constant afterwards,

b. Property ratio

[0067] Initially,

[0068] Solution for m(MC), linear model
[0069] Solving equations (12) to (15), gives

and

[0070] For example, for P = 0.5 and MC
sat = 0.25,
A = 1.3158
B = 2.632
m(MC
sat) = 0.6579
[0071] FIGURE 3 shows the linear model using the above constants and two nonlinear models:

Pith modification
[0072] 
[0073] Where p() represents effect of pith on strength and stiffness.
Growth ring thickness modification. Predicted based on X-ray and Vision
[0074] 
[0075] Where g () represents effect of growth ring thickness on strength and thickness
Place within tree modification.
[0076] Place within tree quality parameter is predicted based various scanning technologies

[0077] Where t() is a function representing effect of position within tree.
Other wood characteristics modification, rot, wane, check, resin content, compression
wood, etc.
[0078] This set of modifications follow similarly to the modification analogues set out
above for grain angle, moisture content, etc.
3D Clear Wood Equivalent
[0079] This approach expands the two-dimensional CWE model as described above to three-dimensions
(3D). Virtual pixels are defined in 3D. Knots, checks, and other defect modifications
are done based on 3D-defect detection. Other multiple sided defects such as checks
are also included. This includes two approaches:
- a) Density collected in 2D, knots, checks modifications entered as 3D, resulting with
3D grid of clear wood equivalent density
- b) Density collected in 3D with a CT scanner, knots, checks, and other 3D-defect modifications
entered as 3D objects, resulting with 3D grid of clear wood equivalent density.
Clear Wood Equivalent Based on Grain Angle
[0080] This approach follows the one of CWE density described to this point, but the density
is replaced with grain angle. First a grain angle is assigned to a grid element. Then
the GA is modified by density, knots, moisture content, and other defects. Grain angle
CWE is then used in actual models to predict strength and stiffness. This refers primary
to lumber grading, but is not limited to this type of products.
Stiffness Prediction Using Moment of Inertia
[0081] Stiffness (Modulus of Elasticity) is predicted based on approximated cross sectional
moment of inertia J
i computed from clear wood equivalent model.
[0082] In general, moment of inertia I is defined in x direction for any cross-section with
an area A (Popov 1968)

[0083] Where c is center of gravity of the cross-section A.
[0084] In our case, I is approximated by J
i in terms of density, reflecting both geometry of the cross-section as well as local
stiffness

[0085] Where Δ
x represents pixel increment in x-axis direction and center of gravity is given as

[0086] To increase processing speed, c
i does not have to be computed for every cross-section, but assumed to be equal to
nominal center of the cross-section.
[0087] Two different approaches are given here to compute MOE from the J
i profile. In both cases MOE is computed on a section of J
i profile. The section is then moved along the board main axis X and MOE computed for
another section of the board, as illustrated in FIGURE 1F. This procedure yields a
MOE profile along the main axis X.
[0088] First, a simple solution is given where MOE is simply weighted average of the J
i 
[0089] Where W
j is optimized windowing (sectioning) function.
[0090] Although, the equation (24) provides a simply and fast way of MOE prediction, a more
sound but slower approach is to derive MOE directly from moment of inertia I. Following
derivation follows well-known theory of mechanical behavior of solids (Popov 1968).
[0092] The basic equation for beam deflection is

[0093] Where E(x) represent MOE in location x,
I(x) moment of inertia profile,
V(x) deflection profile.
[0094] A further simplification combines E and I into one quantity J(x), which reflect a
local stiffness of the cross-section.

[0095] The equation (24e) simplifies into

[0096] Following, the equation (24g) is solved for deflection V
max at x = s/2 using direct integration method, applying boundary conditions, and converting
to discrete format gives

[0097] Where Δx in a discrete increment in direction of the X axis,

w
i is discrete representation of w(x),
[0098] J
i is discrete representation of J(x), the moment of inertia estimation computed from
clear wood equivalent density.
[0099] On the other hand, for a uniform beam with loading conditions as in FIGURE 1g, the
solution for E is

or for the same cross-section and span (24j) simplifies to

[0100] Where D is a constant representing a size of a board cross-section.
[0101] Therefore a quantity to estimate is

only.
[0102] This, compared with the solution (24h), yields final MOE estimation E
est 
Strength Prediction
[0103] Strength is predicted lengthwise for a section (window) along nominal main board
axis X (nominal grain direction). Therefore a particular predicted strength is assigned
to a center of a window lengthwise, as shown in FIGURE 1E. These sections may overlap
resulting with a complete strength profile for a wood product, such as lumber. Window
length correspond to approximate size of typical wood fracture and generally increases
with lumber width size (greater width size, greater the window). The final strength
value assigned to a tested product is minimum strength within the strength profile.
[0104] Strength is computed on the basis of a running window along wood main axis (length),
as illustrated in FIGURE 1C, involving following steps:
a) get minimum CWE within a longitudinal slice,

where the slice consists of virtual pixels in the same width position

Where i is pixel index within window, i = 0... W-1
and W is window size in virtual lines
b) compute overall CWE density for the window as a weighted sum

[0105] Where
wj is cross-sectional weight, greater at wood edges and less in the middle. The weight
function is different for UTS and MOR and in general subject to model optimization.
c) computes trength from CWE density tension strength (UTS) relationship

[0106] And bending strength (MOR)

where
fUTS and
fMOR are optimized relationships between CWE and UTS and MOR.
[0107] The density to tension and bending strength functions are based on experimental data
conducted on clear wood specimens and/or are in general the subject of model optimization.
[0108] In particular, the following model may be used

and

where A, p, B, r are empirical (optimized) constants.
d) Final wood strength is a minimum of all windows strength values
MC modeling based on Microwave and X-ray density measurement
[0109] Moisture content is predicted based on microwave and/or X-ray density, for:
- (a) Microwave amplitude, and in particular: amplitude when microwave is polarized
in transverse direction, amplitude when microwave is polarized in longitudinal direction,
in form

where K and n are empirical constants, and a is microwave amplitude.
- (b) Microwave amplitude and X-ray density, and in particular, amplitude when microwave
is polarized in transverse direction and X-ray density, amplitude when microwave is
polarized in longitudinal direction and X-ray density, in form:

where K, m, and n are empirical constants, a is microwave amplitude, and d is X-ray
density.
Model Optimization
[0110] Most models described here require optimization of the parameters (constants). Initial
values for these parameters are taken from literature, using known relationships or
from empirical data. Fine-tuning of these values for a specific species/size involves
parameter optimization for maximum correlation with actual strength or stiffness,
minimum prediction error, etc.
[0111] Any method for multidimensional function optimization may be used, including genetic
algorithms, random walk, and similar techniques, Powell's methods, and Gradient methods.
[0112] Models may be optimized for:
- a) All sizes and species,
- b) Same sizes of the same species or species group, and
- c) Particular size and species.
Stiffness Estimation from Machine Induced Wood Vibration
[0113] Vibration of a wood piece as it passes through a grading machine 10 is used to estimate
stiffness (MOE). Vibration profile may be collected with a laser/camera scanner, here
referred to as a 3D sensor. Vibration is induced by machine feeding mechanics.
Machine Geometry and Wood Dynamics
[0114] As wood behavior is linked with machine geometry and its position, the 3D-profile
is segmented into different sections limited with characteristic points.
[0115] A simplified grading machine geometry is show in FIGURE 4. Wheel sets 11, 12, 13,
and 14 follow the direction of the lumber flow X'.
[0116] Wood piece 15 enters the machine from right to left, passing through wheel sets 11
and 12 and into the field of view of 3D 15 sensor as shown in Figures 4 and 5A-D.
First collected profile point is at characteristic point A in the field of view of
sensor 15. From point A until the wood meets in feed guide 13a (characteristic point
B), the leading end of the wood piece is fully unconstrained or free. This defines
a first 3D profile section, AB. Following on downstream in direction X ' as seen in
Figures 6a-6d, more characteristic points are defined as follows, where, at point:
C the leading end of wood 15 meets wheel set 13
D the leading end of wood 15 meets wheel set 14
E the trailing end of wood 15 leaves wheel set 11
F the trailing end of wood 15 leaves wheel set 12
G the trailing end of wood 15 leaves 3D sensor 16 and sections,
AC unconstrained
CD semi-constrained
DE fully-constrained
EF semi-constrained
FG unconstrained.
[0117] From Figures 5a-5d and 6a-6d, it may be noted that only sections AB (or AC) and FG
is statically undistorted by the machine. Because of unconstrained conditions, a free
vibration takes place in these sections.
[0118] For the
"S-shaped" wood in Figures 6A-D, one could expect a wood behavior, resulting with the following
3D profile:
- a. In section AC (or AB) unconstrained, Z is less than the reference (base) line X",
and free vibrations with large amplitude take place. The frequency of vibration decreases
because of increasing span.
- b. As the wood passed through characteristic point B or C, it is adjusted up, resulting
with Z values greater than reference in semi-constrained section CD. Vibration amplitude
in this section is somewhat reduced and higher in frequncy than in section AB.
- c. In fully-constrained section DE, wood behavior is somewhat undefined. However because
of the constrained condition, reduced amplitude and increased frequency is expected.
3D Profile Sections
[0119] The scenario of wood behavior and a resulting 3D profile is put to the test by segmenting
the profile into sections using characteristic points and comparing the expectations
with the actual wood shape. Figure 7 shows the 3D profile of FIGURE 5A-D and 6A-D
with characteristic points and trend lines for every section. The characteristic points
were defined based on machine geometry. For example, the distance between point A
and C correspond to the distance between 3D sensor 16 and center of the wheel set
13. Points A, B, C, and D were measured in reference to the start of 3D-profile sensor
profile whereas points G, F, and E were measured in reference to the end of the 3D-profile.
[0120] Visual examination of the segmented profile in Figure 7 confirms presence of distinct
sections in the signal. Expected frequency and amplitude of unconstrained sections
AB and FG, adjustments as points B, (or C), and F, and relatively leveled fully constrained
section DE are confirmed.
Free Vibration of the Wood
[0121] Assuming a uniform cantilevered beam model, the lowest mode of vibration will have
frequency

Where
Pi=3.14
E is elastic modulus
a is the span
I wood cross-sectional moment of inertia
m is distributed mass.
[0122] Frequency therefore is strongly affected by the span, as f is proportional to 1/a
2. Because span changes as the wood passes through the machine, the vibration frequency
decreases in the start section (AB) and increases in end section (FG). This explains
3D signals at the wood start and the end shown in Figures 5A-D. This equation may
be used for stiffness extraction.
[0123] Frequency for the semi-constrained and full-constrained conditions will have a more
complex solution. However, the general relationship to E, I, and m, is similar, and
sufficient to construct E (MOE) prediction model in general form.

where K is a constant than contains effect of type of constraint as well as span a
effect. I is constant for a particular lumber size and m could be also assumed constant
or measured, with X-ray for example.
1. A method of predicting strength and stiffness of a wood piece, the method comprising:
a) Measuring the wood piece with a multiplicity of sensors, each of said sensors outputting
measurement data;
b) Estimating, based on said measurement data, a characteristic including one or more
of the following: clear wood density, grain angle, moisture content, growth ring angle,
location in the tree from which the wood was cut, size of actual cross-section, species,
and three dimensional geometry, wherein said estimating further includes estimating
a fiber quality, the fiber quality being at least one of microfibril angle, juvenile
wood, biodeterioration, and reaction wood;
c) Detecting a size, location and classification of a wood defect including one or
more of the following: knots, biodeterioration, reaction wood, juvenile wood, manufacturing
and drying defects, pith, pitch and wet pockets, wherein said manufacturing and drying
defects comprise at least one of sawcuts, checks, and shake;
d) Subsequently inputting information from said measuring, estimating and detecting
steps into a physical model of the wood piece;
e) Characterized in that said physical model of wood piece is constructed based on clear wood equivalent (CWE)
by approximating equivalent properties of a section of the wood piece divided into
a grid of virtual pixels, measuring and assigning a reference density or grain angle
to each pixel and modifying the reference density or grain angle of each pixel for
defects including one or more of the following: knots, biodeterioration, reaction
wood, juvenile wood, manufacturing and drying defects, pith, pitch and wet pockets;
and
f) Predicting strength and stiffness of the wood piece based on the effect of said
estimated information from said step of estimating said characteristic and said detected
information from said step of detecting a defect on mechanical behavior of the wood
piece.
2. The method of claim 1 wherein said measuring comprises measuring material characteristics
of the wood piece including one or more of the following: growth ring thickness; grain
angle deviation; clear wood density; knot location; knot density; knot type; knot
size; location in the tree from which the wood piece was cut.
3. The method of claim 1 further including calculating a clear wood density equivalent,
said calculating comprising:
a) Measuring material density in a plurality of dimensions;
b) Estimating the characteristic and the fiber quality;
c) Reducing clear wood equivalent density by the effect of the characteristic and
the fiber quality on mechanical behavior of wood;
d) Detecting size, location and classification of the defect; and
e) Further reducing clear wood equivalent density by the effect of the defect on mechanical
behavior of wood.
4. The method of claim 1 further including calculating a clear zero grain angle wood
equivalent, the calculating comprising
a) Measuring of grain angle in a plurality of dimensions;
b) Constructing clear wood zero grain angle equivalent by assigning a nominal density
value which is an average for a wood species whenever grain angle relative to a longitudinal
axis of the piece is zero, and less wherever the grain angle deviates from zero and
accordingly to grain angle effect on mechanical behavior of the wood piece;
c) Reducing clear wood equivalent density by the effect of the characteristic using
theoretical and empirical relationships of the characteristic on mechanical behavior
of wood; and
d) Further reducing clear wood equivalent density by the effect of wood defects in
their respective locations of occurrence and the effect on mechanical behavior of
the wood piece.
5. The method of claim 3 or 4 further comprising dividing the wood piece into a grid
of virtual pixels, virtually removing density occupied by a knot, and replacing said
virtually removed density by a density of clear wood mechanically equivalent to the
removed knot.
6. The method of claim 3 wherein said calculating a clear wood density equivalent is
applied to a limited section of the wood piece, and wherein the limited section is
translated along the grain direction axis of the wood piece.
7. The method of claim 1 further including estimating bending and tension strength of
at least a portion of the length of the wood piece by determining a minimum of a lengthwise
strength profile of the wood piece.
8. The method of claim 1 wherein said collecting information relating to fiber quality
includes measuring a vibration frequency of the wood piece, wherein said vibration
frequency is a result of vibration induced only by feeding of the wood piece in an
infeed feeding the wood piece to the sensors and without any explicit vibration-inducing
impact means.
9. The method of claim 7 further comprising estimating bending and tension strength of
the wood piece by measuring a vibration frequency of the wood piece wherein said vibration
frequency is a result of vibration induced only by feeding of the wood piece in an
infeed feeding the wood piece to the sensors and without any explicit vibration-inducing
impact means.
10. The method of claim 9 further comprising measuring said vibration signal by dividing
the vibration signal into different sections corresponding to the support and constraint
conditions of the wood piece on the infeed or the outfeed rolls.
11. The method of claim 2 wherein said material characteristics comprise at least one
of clear wood density or knot density, and wherein said at least one is measured by
a scanner using a radiation source.
12. The method of claim 1 wherein said moisture content is estimated using microwave measurement.
13. The method of claim 12 wherein said microwave measurement is measured when an applied
microwave radiation is polarized in a direction transverse to a longitudinal axis
of the wood piece.
14. The method of claim 12 wherein microwave measurement is corrected for temperature.
15. The method of claim 1 wherein said moisture content is estimated using X-ray measurement.
16. The method of claim 1 wherein said predicting of stiffness of the wood piece is based
on Moment of Inertia.
17. The method of claim 5 further including creating a three-dimensional (3D) wood equivalent
model by dividing said grid of virtual pixels in three dimensions.
18. The method of claim 1 wherein said physical model is optimized by fine-tuning the
initial values of the parameters for maximum correlation with actual strength or stiffness.
1. Verfahren zum Vorhersagen der Festigkeit und Steifigkeit eines Holzstückes, wobei
das Verfahren:
a) das Messen des Holzstücks mit einer Vielzahl von Sensoren, wobei jeder der Sensoren
Messdaten ausgibt;
b) das Bewerten, basierend auf den Messdaten, eines Merkmals, welches eines oder mehrere
der folgenden umfasst: reine Holzdichte, Maserungswinkel, Feuchtigkeitsgehalt, Jahresringwinkel,
Stelle im Baum, aus der das Holz geschnitten wurde, Größe des tatsächlichen Querschnittes,
Art und dreidimensionale Geometrie, wobei die Bewertung ferner die Bewertung einer
Faserqualität umfasst, wobei die Faserqualität mindestens eine von Mikrofibrillenwinkel,
Jungholz, Biodeterioration und Reaktionsholz ist;
c) das Ermitteln der Größe, Lage und Klassifikation eines Holzfehlers, der einen oder
mehrere der folgenden umfasst: Astknoten, Biodeterioration, Reaktionsholz, Jungholz,
Herstellungs- und Trocknungsfehler, Mark-, Harz- und Feuchtigkeitseinschlüsse, wobei
die Herstellungs- und Trocknungsfehler zumindest einen von Sägeschnitten, Spalten
und Rissen umfassen;
d) das anschließende Eingeben von Informationen aus dem Mess-, Bewertungs- und Ermittlungsschritt
in ein physikalisches Modell des Holzstücks;
e) dadurch gekennzeichnet, dass das physikalische Modell des Holzstücks basierend auf dem reinen Holzäquivalent (CWE)
durch Nähern äquivalenter Eigenschaften eines Abschnittes des Holzstückes, unterteilt
in ein Gitter aus virtuellen Pixeln, Messen und Zuordnen einer Referenzdichte oder
eines Maserungswinkels zu jedem Pixel und Modifizieren der Referenzdichte oder des
Maserungswinkels jedes Pixels in Bezug auf Fehler, die einen oder mehrere der folgenden
umfassen: Astknoten, Biodeterioration, Reaktionsholz, Jungholz, Herstellungs- und
Trocknungsfehler, Mark-, Harz- und Feuchtigkeitseinschlüsse, konstruiert wurde; und
f) das Vorhersagen der Festigkeit und Steifigkeit des Holzstückes basierend auf der
Auswirkung der bewerteten Information aus dem Schritt der Bewertung des Merkmals und
der ermittelten Information aus dem Schritt der Ermittlung eines Fehlers auf das mechanische
Verhalten des Holzstückes
umfasst.
2. Verfahren nach Anspruch 1, wobei das Messen das Messen der Materialmerkmale des Holzstückes
umfasst, welche eines oder mehrere der folgenden umfassen: Jahresringdicke; Maserungswinkelabweichung;
reine Holzdichte; Astknotenstelle; Astknotendichte; Astknotenart; Astknotengröße;
Stelle im Baum, aus der das Holzstück geschnitten wurde.
3. Verfahren nach Anspruch 1, das ferner das Berechnen eines reinen Holzdichteäquivalents
umfasst, wobei das Berechnen:
a) das Messen der Materialdichte in einer Vielzahl von Dimensionen;
b) das Bewerten des Merkmals und der Faserqualität;
c) das Verringern der reinen Holzäquivalentdichte um die Auswirkung des Merkmals und
der Faserqualität auf das mechanische Verhalten des Holzes;
d) das Ermitteln der Größe, Lage und Klassifikation des Fehlers und
e) das weitere Verringern der reinen Holzäquivalentdichte um die Auswirkung des Fehlers
auf das mechanische Verhalten des Holzes
umfasst.
4. Verfahren nach Anspruch 1, ferner umfassend das Berechnen eines reinen Null-Maserungswinkel-Holzäquivalents,
wobei das Berechnen
a) das Messen des Maserungswinkels in einer Vielzahl von Dimensionen;
b) das Konstruieren eines reinen Null-Maserungswinkel-Holzäquivalents durch Zuordnen
eines nominalen Dichtewertes, der ein Durchschnitt für eine Holzart ist, wenn ein
Maserungswinkel bezogen auf eine Längsachse des Stückes null ist, und weniger, wo
der Maserungswinkel von null abweicht, und folglich der Auswirkung des Maserungswinkels
auf das mechanische Verhalten des Holzstückes;
c) das Verringern der reinen Holzäquivalentdichte um die Auswirkung des Merkmals unter
Verwendung theoretischer und empirischer Beziehungen des Merkmals auf das mechanische
Verhalten des Holzes und
d) das weitere Verringerung der reinen Holzäquivalentdichte um die Auswirkung der
Holzfehler in ihren jeweiligen Stellen des Auftretens und die Auswirkung auf das mechanische
Verhalten des Holzstückes.
5. Verfahren nach Anspruch 3 oder 4, ferner umfassend das Unterteilen des Holzstückes
in ein Gitter aus virtuellen Pixeln, das virtuelle Entfernen der von einem Astknoten
eingenommenen Dichte und das Ersetzen der virtuell entfernten Dichte durch eine Dichte
reinen Holzes, die mechanisch zu dem entfernten Astknoten äquivalent ist.
6. Verfahren nach Anspruch 3, wobei das Berechnen eines reinen Holzdichteäquivalents
auf einen begrenzten Abschnitt des Holzstückes angewendet wird und wobei der begrenzte
Abschnitt entlang der Achse der Maserungsrichtung des Holzstückes überführt wird.
7. Verfahren nach Anspruch 1, ferner umfassend das Bewerten der Biege- und Zugfestigkeit
von zumindest einem Teil der Länge des Holzstückes durch Bestimmen eines Minimums
eines Längenfestigkeitsprofils des Holzstückes.
8. Verfahren nach Anspruch 1, wobei das Sammeln von Informationen in Bezug auf die Faserqualität
das Messen einer Schwingungsfrequenz des Holzstückes umfasst, wobei die Schwingungsfrequenz
das Ergebnis einer Schwingung ist, die nur durch das Zuführen des Holzstückes einer
Zuführung, die das Holzstück den Sensoren zuführt, und ohne irgendwelche expliziten
Vibration auslösenden Stoßvorrichtungen ausgelöst wird.
9. Verfahren nach Anspruch 7, ferner umfassend das Bewerten der Biege- und Zugfestigkeit
des Holzstückes durch Messen einer Schwingungsfrequenz des Holzstückes, wobei die
Schwingungsfrequenz das Ergebnis einer Schwingung ist, die nur durch das Zuführen
des Holzstückes einer Zuführung, die das Holzstück den Sensoren zuführt, und ohne
irgendwelche expliziten Vibration auslösenden Stoßvorrichtungen ausgelöst wird.
10. Verfahren nach Anspruch 9, ferner umfassend das Messen des Schwingungssignals durch
Unterteilen des Schwingungssignals in verschiedene Abschnitte, entsprechend den Auflager-
und Zwanglaufbedingungen des Holzstückes auf den Einzugs- oder Auslaufwalzen.
11. Verfahren nach Anspruch 2, wobei die Materialmerkmale mindestens eines von reiner
Holzdichte oder Astknotendichte umfassen und wobei mindestens eines durch einen Scanner
unter Verwendung einer Strahlungsquelle gemessen wird.
12. Verfahren nach Anspruch 1, wobei der Feuchtigkeitsgehalt unter Verwendung von Mikrowellenmessung
bewertet wird.
13. Verfahren nach Anspruch 12, wobei die Mikrowellenmessung gemessen wird, wenn eine
angewandte Mikrowellenstrahlung quer zur Längsachse des Holzstückes polarisiert wird.
14. Verfahren nach Anspruch 12, wobei die Mikrowellenmessung in Bezug auf die Temperatur
korrigiert wird.
15. Verfahren nach Anspruch 1, wobei der Feuchtigkeitsgehalt unter Verwendung von Röntgenstrahlenmessung
bewertet wird.
16. Verfahren nach Anspruch 1, wobei die Vorhersage der Steifigkeit des Holzstückes auf
dem Trägheitsmoment basiert.
17. Verfahren nach Anspruch 5, ferner umfassend das Erzeugen eines dreidimensionalen (3D)
Holzäquivalentmodells durch Unterteilen des Gitters aus virtuellen Pixeln in drei
Dimensionen.
18. Verfahren nach Anspruch 1, wobei das physikalische Modell durch Feinabstimmung der
Ausgangswerte der Parameter für die maximale Korrelation mit der tatsächlichen Festigkeit
oder Steifigkeit optimiert wird.
1. Méthode de prévision de la solidité et de la rigidité d'une pièce en bois, ladite
méthode comprenant :
a) la mesure de la pièce en bois avec une multiplicité de capteurs, chacun desdits
capteurs produisant des données de mesure;
b) l'estimation, basée sur lesdites données de mesure, d'une caractéristique comprenant
un ou plusieurs des éléments suivants: densité du bois net de défauts, angle de grain,
teneur en humidité, angle des anneaux de croissance, emplacement dans l'arbre duquel
le bois a été coupé, taille de la coupe transversale réelle, espèces et géométrie
tridimensionnelle, dans laquelle ladite estimation inclut de plus une estimation de
la qualité des fibres, ladite qualité des fibres étant relative à au moins un des
éléments suivants : angles des microfibrilles, bois juvénile, biodétérioration et
bois de réaction ;
c) la détection de la taille, de l'emplacement et de la classification d'un défaut
du bois, comprenant un ou plusieurs des éléments suivants: noeuds, biodétérioration,
bois de réaction, bois juvénile, défauts de fabrication et de séchage, moelle, poches
de résine et poches humides, dans lesquels lesdits défauts de fabrication et de séchage
comprennent au moins un des éléments suivants : coupes de scie, gerces et fentes ;
d) l'entrée ultérieure des informations provenant desdites étapes de mesure, d'estimation
et de détection dans un modèle physique de la pièce en bois;
e) caractérisé en ce que ledit modèle physique de pièce en bois est basé sur l'équivalent de bois net de défauts
(CWE) en approximant les propriétés équivalentes d'une section de la pièce en bois
divisée en une grille de pixels virtuels, mesurant et attribuant une densité ou un
angle de grain de référence à chaque pixel et en modifiant la densité ou l'angle de
grain de référence pour chaque pixel pour les défauts comprenant un ou plusieurs des
éléments suivants : noeuds, biodétérioration, bois de réaction, bois juvénile, défauts
de fabrication et de séchage, moelle, poches de résine et poches humides, dans lesquels
lesdits défauts de fabrication et de séchage comprennent au moins un des éléments
suivants : coupes de scie, gerces et fentes ; et
f) la prédiction de la solidité et de la rigidité de la pièce en bois, basée sur l'effet
de ladite information estimée provenant de ladite étape d'estimation et sur l'information
détectée provenant de ladite étape de détection de défaut de comportement mécanique
de la pièce en bois.
2. Méthode selon la revendication 1, dans laquelle ladite mesure comprend la mesure des
caractéristiques matérielles de la pièce en bois incluant un des éléments suivants
: épaisseur des anneaux de croissance, déviation de l'angle de grain, densité du bois
net de défaut, emplacement des noeud, densité des noeuds, type de noeud, taille de
noeud, emplacement dans l'arbre duquel le bois a été coupé.
3. Méthode selon la revendication 1 comprenant de plus le calcul d'un équivalent de densité
de bois net de défauts, ledit calcul comprenant :
a) la mesure de la densité du matériau dans une pluralité de dimensions ;
b) l'estimation de la caractéristique et de la qualité des fibres ;
c) la réduction de la densité de l'équivalent de bois net de défauts par l'effet de
la caractéristique et de la qualité des fibres ;
d) la détection de la taille, de l'emplacement, de la classification du défaut ; et
e) la réduction supplémentaire de la densité de l'équivalent de bois net de défauts
par l'effet du défaut de comportement mécanique du bois.
4. Méthode selon la revendication 1 comprenant de plus le calcul d'un équivalent de bois
à angle de grain nul, ledit calcul comprenant :
a) la mesure de l'angle de grain dans une pluralité de dimensions ;
b) la construction d'un équivalent d'angle de grain nul de bois net de défaut en attribuant
une valeur de densité nominale, qui est la moyenne pour une essence de bois, lorsque
l'angle de grain relatif à un axe longitudinal de la pièce est nul, et inférieure,
quand l'angle de grain diffère de zéro, et selon l'effet de l'angle de grain sur le
comportement mécanique de la pièce en bois ;
c) la réduction de la densité de l'équivalent de bois net de défauts par l'effet de
la caractéristique en utilisant des relations théoriques et empiriques liant la caractéristique
au comportement mécanique du bois ; et
e) la réduction supplémentaire de la densité de l'équivalent de bois net de défauts
par l'effet des défauts du bois dans leurs emplacements d'occurrence et l'effet sur
le comportement mécanique de la pièce en bois.
5. Méthode selon la revendication 3 ou 4, comprenant de plus la division de la pièce
en bois en une grille de pixels virtuels, la suppression virtuelle de la densité occupée
par un noeud, et le remplacement de ladite densité virtuellement supprimée par une
densité de bois net de défauts mécaniquement équivalent au noeud supprimé.
6. Méthode selon la revendication 3, dans laquelle ledit calcul d'un équivalent de densité
de bois net de défauts est appliqué à une section limitée de la pièce en bois, et
dans laquelle la section limitée est translatée le long de l'axe de la direction des
grains de la pièce en bois.
7. Méthode selon la revendication 1, comprenant de plus l'estimation de la résistance
à la flexion et à la rupture en traction d'au moins une portion de la longueur de
la pièce en bois en déterminant un minimum du profil, sur ladite longueur, de la résistance
de la pièce en bois.
8. Méthode selon la revendication 1, dans laquelle ladite collecte d'informations relatives
à la qualité des fibres inclut la mesure d'une fréquence de vibration de la pièce
en bois, dans laquelle ladite fréquence de vibration est le résultat de la vibration
induite seulement par l'alimentation de la pièce en bois jusqu'aux capteurs et sans
aucun moyen explicite de percussion générant des vibrations.
9. Méthode selon la revendication 7, comprenant de plus l'estimation de la résistance
à la flexion et à la rupture en traction de la pièce en bois en mesurant une fréquence
de vibration de la pièce en bois, dans laquelle ladite fréquence de vibration est
le résultat de la vibration induite seulement par l'alimentation de la pièce en bois
jusqu'aux capteurs et sans aucun moyen explicite de percussion générant des vibrations.
10. Méthode selon la revendication 9, comprenant de plus la mesure dudit signal de vibration
en divisant le signal de vibration en différentes sections correspondant à l'appui
et aux conditions de contrainte de la pièce en bois sur les cylindres d'entrée et
de sortie.
11. Méthode selon la revendication 2, dans laquelle lesdites caractéristiques matérielles
comprennent au moins un des éléments suivants : densité du bois net de défaut ou densité
de noeud, et dans laquelle au moins l'un des deux est mesuré par un scanner utilisant
une source de radiation.
12. Méthode selon la revendication 1, dans laquelle ladite teneur en humidité est estimée
à l'aide d'une mesure utilisant les microondes.
13. Méthode selon la revendication 12, dans laquelle ladite mesure utilisant les microondes
est effectuée lorsqu'une radiation microonde appliquée est polarisée dans une direction
transversale à un axe longitudinal de la pièce en bois.
14. Méthode selon la revendication 12, dans laquelle la mesure microonde est corrigée
en fonction de la température.
15. Méthode selon la revendication 1, dans laquelle ladite teneur en humidité est estimée
à l'aide d'une mesure utilisant les rayons X.
16. Méthode selon la revendication 1, dans laquelle ladite prévision de la solidité et
de la rigidité d'une pièce en bois est basée le moment d'inertie.
17. Méthode selon la revendication 5 comprenant de plus la création d'un modèle tridimensionnel
équivalent du bois en divisant ladite grille de pixels virtuels en trois dimensions.
18. Méthode selon la revendication 1, dans laquelle ledit modèle physique est optimisé
par un réglage fin des valeurs initiales des paramètres pour une corrélation maximale
avec la solidité ou la rigidité réelle.