[0001] The present disclosure relates generally to operating aerial vehicles and, more specifically,
to taking into account micro wind conditions when operating aerial vehicles.
[0002] Flight plans for commercial aircraft are planned with coarsely-grained wind forecasts
generated by weather entities, such as the National Weather Service. Coarsely-grained
wind forecasts are commonly generated with a 0.5° lateral resolution, as well as a
50 millibar vertical resolution. While this resolution is sufficient for commercial
aircraft covering thousands of miles of distance, this resolution is not able to capture
the "microscopic" winds in between the resolution points/coordinates.
[0003] Unmanned aerial vehicles typically fly significantly shorter distances than commercial
aircraft. Some unmanned aerial vehicles delivering cargo or taxiing passengers may
travel only within the region bounded by a 0.5° lateral resolution. Due to the resolution,
coarsely-grained wind forecasts do not provide details of the weather along flight
paths for these unmanned aerial vehicles. For example, wind vectors along the flight
paths are unknown.
[0004] Some unmanned aerial vehicles may fly at altitudes considerably higher than weather
gauges. Unmanned aerial vehicles fly at altitudes lower than cruising altitudes for
commercial aircraft. Wind speed and direction change with altitude. Wind vectors and
directions gathered at the weather gauges may not be desirable for forming flight
plans for unmanned aerial vehicles. Wind vectors and directions gathered from commercial
aircraft may not be desirable for forming flight plans for unmanned aerial vehicles.
[0005] Therefore, it would be desirable to have a method and apparatus that take into account
at least some of the issues discussed above, as well as other possible issues. For
example, it would be desirable to have a method and apparatus that aids in flying
unmanned aerial vehicles in a region. As another example, it would be desirable to
have a method and apparatus that create flight plans for unmanned aerial vehicles
that take into account conditions within a region.
[0006] An illustrative embodiment of the present disclosure provides a system for taking
into account micro wind conditions in a region. The system comprises a plurality of
aerial vehicles within the region and a wind speed calculator. Each of the plurality
of aerial vehicles has an altitude sensor and a GPS receiver. The wind speed calculator
is configured to determine wind vectors within the region using measurements from
the plurality of aerial vehicles.
[0007] Another illustrative embodiment of the present disclosure provides a method. Altitude
measurements are collected for a plurality of aerial vehicles while the plurality
of aerial vehicles is flying in a region. Wind vectors within the region are determined
using the plurality of aerial vehicles.
[0008] A further illustrative embodiment of the present disclosure provides a method. Wind
vectors within a region at a first time are determined using a plurality of aerial
vehicles flying in the region. A three-dimensional wind map of the region is generated,
including interpolated wind vectors based on the wind vectors. The three-dimensional
wind map is correlated with a coarsely-grained forecast for the region at the first
time. A three-dimensional model of the region is trained with the three-dimensional
wind map correlated with the coarsely-grained forecast for the region at the first
time. A coarsely-grained forecast for the region at a second time is received. A three-dimensional
wind prediction map for the region at the second time is created.
[0009] The features and functions can be achieved independently in various embodiments of
the present disclosure or may be combined in yet other embodiments in which further
details can be seen with reference to the following description and drawings.
BRIEF DESCRIPTION OF THE DRAWINGS
[0010] The novel features believed characteristic of the illustrative embodiments are set
forth in the appended claims. The illustrative embodiments, however, as well as a
preferred mode of use, further objectives and features thereof, will best be understood
by reference to the following detailed description of an illustrative embodiment of
the present disclosure when read in conjunction with the accompanying drawings, wherein:
Figure 1 is an illustration of a block diagram of an environment in which an unmanned
aerial vehicle flies using a flight plan taking into account micro wind conditions
in accordance with an illustrative embodiment;
Figure 2 is an illustration of a two-dimensional view of locations for a plurality
of aerial vehicles identified in a region in accordance with an illustrative embodiment;
Figure 3 is an illustration of a three-dimensional view of locations for a plurality
of aerial vehicles identified in a region in accordance with an illustrative embodiment;
Figure 4 is an illustration of a three-dimensional view of determined wind vectors
in a region in accordance with an illustrative embodiment;
Figure 5 is an illustration of an unmanned aerial vehicle with exemplary vectors in
accordance with an illustrative embodiment;
Figure 6 is an illustration of a two-dimensional view of set grid points in a region
in accordance with an illustrative embodiment;
Figure 7 is an illustration of a three-dimensional view of set grid points in a region
in accordance with an illustrative embodiment;
Figure 8 is an illustration of a two-dimensional view of interpolated wind vectors
at set grid points in a region in accordance with an illustrative embodiment;
Figure 9 is an illustration of a two-dimensional view of an unmanned aerial vehicle
with an original flight plan and a new flight plan taking into account micro wind
conditions in accordance with an illustrative embodiment;
Figure 10 is an illustration of differences between an actual track and a planned
track for an unmanned aerial vehicle;
Figures 11A and 11B are an illustration of a flowchart of a method for flying an aerial
vehicle in a region based on wind vectors determined in the region in accordance with
an illustrative embodiment; and
Figure 12 is an illustration of a flowchart of a method for flying an aerial vehicle
in a region in accordance with an illustrative embodiment.
DETAILED DESCRIPTION
[0011] The illustrative embodiments recognize and take into account one or more different
considerations. For example, the illustrative embodiments recognize and take into
account that unmanned aerial vehicles are advantageous in several scenarios. The illustrative
embodiments recognize and take into account that unmanned aerial vehicles can be used
for delivery of packages by a store or vendor. The illustrative embodiments recognize
and take into account that unmanned aerial vehicles can be used for delivery of fast
food orders. The illustrative embodiments recognize and take into account that unmanned
aerial vehicles can be used for transport of human or animal passengers.
[0012] The illustrative embodiments recognize and take into account that unmanned aerial
vehicles (UAVs) need to file flight plans. The illustrative embodiments recognize
and take into account that because the flights of unmanned aerial vehicles cover shorter
distances, the coarsely granular nature of wind forecasts do not desirably aid in
developing flight plans for unmanned aerial vehicles. For example, coarsely-grained
wind forecasts do not provide a desirable amount of information for determining the
most cost-effective route.
[0013] The illustrative embodiments recognize and take into account that it would be desirable
to provide a three-dimensional "live" or real-time view of winds in a region. The
illustrative embodiments further recognize and take into account that a plurality
of unmanned aerial vehicles in a region can be used to collect measurements to determine
wind vectors within the region. The illustrative embodiments also recognize and take
into account that the real-time view of the winds in the region may be used to create
a wind prediction for a future time. The illustrative embodiments additionally recognize
and take into account that wind vectors at a pre-determined grid may be determined
using the real-time view of the winds.
[0014] The illustrative embodiments also recognize and take into account that turbulence
is undesirable for unmanned aerial vehicles. The illustrative embodiments also recognize
and take into account that it is desirable to be able to pre-determine corrections
that an unmanned aerial vehicle should perform to reduce encountered turbulence by
the unmanned aerial vehicle.
[0015] Referring now to the figures and, in particular, with reference to Figure 1, an illustration
of a block diagram of an environment in which an unmanned aerial vehicle flies using
a flight plan taking into account micro wind conditions is depicted in accordance
with an illustrative embodiment. Environment 100 contains system 102 for taking into
account micro wind conditions in region 104. In some illustrative examples, region
104 is within a single 0.5° lateral resolution grid.
[0016] In some illustrative examples, region 104 is at least one of suburban region 105
or urban region 107. In some illustrative examples, region 104 is a city 103. City
103 includes at least one of suburban region 105 or urban region 107.
[0017] System 102 comprises plurality of aerial vehicles 109 within region 104 and wind
speed calculator 108. In some illustrative examples, system 102 also comprises flight
plan generator 110. In some illustrative examples, plurality of aerial vehicles 109
comprises plurality of unmanned aerial vehicles 106.
[0018] Wind speed calculator 108 is configured to determine wind vectors 111 within region
104 using measurements 112 from plurality of aerial vehicles 109. When plurality of
aerial vehicles 109 comprises plurality of unmanned aerial vehicles 106, wind speed
calculator 108 is configured to determine wind vectors 111 within region 104 using
measurements 112 from plurality of unmanned aerial vehicles 106.
[0019] Flight plan generator 110 is configured to create flight plan 114 within region 104
for aerial vehicle 115 based on wind vectors 111 determined by wind speed calculator
108. As used herein, the terms "flight plan" and "flight path," may be used interchangeably.
When aerial vehicle 115 takes the form of unmanned aerial vehicle 116, flight plan
generator 110 is configured to create flight plan 114 within region 104 for unmanned
aerial vehicle 116 based on wind vectors 111 determined by wind speed calculator 108.
[0020] Each of plurality of aerial vehicles 109 has an altitude sensor and a GPS receiver.
As depicted, plurality of aerial vehicles 109 has sensors 118, including GPS receivers
120 and altitude sensors 122. In some illustrative examples, sensors 118 on plurality
of aerial vehicles 109 will include other desirable sensors. In some illustrative
examples, plurality of aerial vehicles 109 also includes wind speed sensors 124.
[0021] When plurality of aerial vehicles 109 comprises plurality of unmanned aerial vehicles
106, each of plurality of unmanned aerial vehicles 106 has sensors 118. For example,
when present, each of plurality of unmanned aerial vehicles 106 has an altitude sensor
and a GPS receiver.
[0022] Measurements 112 are associated with first time 126. Measurements 112 are obtained
using sensors 118.
[0023] Wind vectors 111 within region 104 at first time 126 are determined using measurements
112 from plurality of aerial vehicles 109. In some illustrative examples, the micro
winds within region 104 are directly measured from plurality of aerial vehicles 109.
In these illustrative examples, measurements 112 include wind measurements 128 taken
by wind speed sensors 124. In these illustrative examples, wind speed calculator 108
associates wind measurements 128 with locations 130 and altitudes 132 of plurality
of aerial vehicles 109 to form wind vectors 111.
[0024] In some other illustrative examples, the micro winds within region 104 are indirectly
measured using plurality of aerial vehicles 109. In some illustrative examples, wind
vectors 111 are determined using calculations and measurements 112. In these illustrative
examples, measurements 112 include set speeds 134 and set headings 136. In some illustrative
examples, set speeds 134 and set headings 136 at first time 126 are provided from
flight plans of plurality of aerial vehicles 109. In some illustrative examples, set
speeds 134 and set headings 136 at first time 126 are provided from controllers of
plurality of aerial vehicles 109.
[0025] In some illustrative examples, measurements 112 include observed speeds 138 and observed
headings 140. Observed speeds 138 and observed headings 140 may be determined relative
to ground 142 in region 104. In some illustrative examples, observed speeds 138 and
observed headings 140 are determined using GPS receivers 120 of plurality of aerial
vehicles 109.
[0026] In some illustrative examples, wind speed calculator 108 is configured to determine
wind vectors 111 using vector addition, set speeds 134 of plurality of aerial vehicles
109, set headings 136 of plurality of aerial vehicles 109, observed speeds 138 of
plurality of aerial vehicles 109, and observed headings 140 of plurality of aerial
vehicles 109.
[0027] Wind vectors 111 are determined for micro winds in region 104 at first time 126.
Wind vectors 111 are located at locations 130 of plurality of aerial vehicles 109
at first time 126. Wind vectors 111 are saved to database 144 of system 102.
[0028] Database 144 also includes coarsely-grained forecasts 146. Coarsely-grained forecasts
146 are forecasts for region 104. As depicted, coarsely-grained forecasts 146 includes
coarsely-grained forecast 148 at first time 126 and coarsely-grained forecast 150
at second time 152.
[0029] Information from database 144 is introduced to real-time wind analysis apparatus
154. Information from database 144 is used by real-time wind analysis apparatus 154
to train three-dimensional model 156 of region 104. For example, wind vectors 111
at first time 126 and coarsely-grained forecast 148 at first time 126 may be provided
for model training system 158 to train three-dimensional model 156.
[0030] Three-dimensional model 156 is a representation of region 104. Three-dimensional
model 156 includes any desirable features of region 104. In some illustrative examples,
three-dimensional model 156 includes buildings. In some illustrative examples, three-dimensional
model 156 includes vegetation. Some features of three-dimensional model 156 may change
over time. For example, buildings may be built or removed from region 104 over time.
As another example, leaves from trees or other vegetation in region 104 may not be
present during the fall and winter months. As yet another example, temporary structures
may be erected and then removed within region 104.
[0031] Model training system 158 may make modifications to three-dimensional model 156 based
on input from database 144. For example, model training system 158 may modify three-dimensional
model 156 based on a coarsely-grained forecast of coarsely-grained forecasts 146 and
wind vectors determined by wind speed calculator 108 and correlated to that coarsely
grained forecast. In one example, model training system 158 may modify three-dimensional
model 156 based on coarsely-grained forecast 148 of coarsely-grained forecasts 146
and wind vectors 111 determined by wind speed calculator 108 and correlated to coarsely
grained forecast 148. Modifications to three-dimensional model 156 take into account
changes within region 104, such as any changes to buildings or vegetation present
in region 104.
[0032] Information from database 144 is used by three-dimensional wind map generator 160
to generate a three-dimensional wind map of micro winds within region 104. Three-dimensional
wind map generator 160 uses input from database 144 and three-dimensional model 156
to generate a three-dimensional wind map.
[0033] In one illustrative example, three-dimensional wind map generator 160 generates three-dimensional
wind map 162 for first time 126. Three-dimensional wind map 162 may be referred to
as a "real-time" or current wind map. Three-dimensional wind map 162 includes interpolated
wind vectors 164. Interpolated wind vectors 164 are associated with set grid points
within region 104. Interpolated wind vectors 164 are on three-dimensional grid 166.
Interpolated wind vectors 164 are associated with set grid points of three-dimensional
grid 166 within region 104. Three-dimensional wind map 162 of region 104 is generated
including interpolated wind vectors 164 based on wind vectors 111.
[0034] Three-dimensional grid 166 is a grid in both lateral and vertical dimensions. Three-dimensional
grid 166 explicitly defines locations by latitude / longitude / altitude. Locations
130 of wind vectors 111 are scattered throughout region 104 based on assigned operations
and flight paths of plurality of aerial vehicles 109. By tailoring wind vectors 111
to a grid, such as three-dimensional grid 166, wind vectors 111 may be used in training
using model training system 158. The tailoring process may be described as interpolation
between wind vectors 111 so that interpolated wind vectors 164 at each grid point
of three-dimensional grid 166 are calculated. In some illustrative examples, wind
vectors, such as interpolated wind vectors 164, on a lateral scale are calculated
at each grid point. In some illustrative examples, wind vectors, such as interpolated
wind vectors 164, on a lateral scale, as well as at different altitudes, are calculated
at each grid point.
[0035] Interpolated wind vectors 164 along locations in three-dimensional grid 166 are determined
through interpolation. As a result, interpolated wind vectors 164 includes a wind
speed at each coordinate point of three-dimensional grid 166. This is performed for
all points of three-dimensional grid 166.
[0036] In another example, three-dimensional wind map generator 160 generates three-dimensional
wind prediction map 168. Three-dimensional wind prediction map 168 is a map for predicted
wind vectors 170 at second time 152. Second time 152 is a future time. Second time
152 occurs after first time 126.
[0037] Predicted wind vectors 170 are wind vectors at each point of three-dimensional grid
166 at second time 152. As depicted, three-dimensional wind map 162 at first time
126 and three-dimensional wind prediction map 168 at second time 152 have the same
three-dimensional grid, three-dimensional grid 166. Predicted wind vectors 170 are
determined using three-dimensional model 156 and coarsely-grained forecast 150 at
second time 152.
[0038] Flight plan generator 110 generates flight plans using three-dimensional wind maps
generated by three-dimensional wind map generator 160. In some illustrative examples,
flight plan generator 110 generates flight plans using three-dimensional wind map
162 for first time 126. In some illustrative examples, flight plan generator 110 generates
flight plans using a three-dimensional wind prediction map for a future time such
as three-dimensional wind prediction map 168 at second time 152.
[0039] In some illustrative examples, flight plan generator 110 may generate new flight
plans prior to takeoff. For example, flight plan generator 110 may create flight plan
114 for unmanned aerial vehicle 116 prior to takeoff of unmanned aerial vehicle 116.
In some illustrative examples, flight plan generator 110 may generate modified flight
plans during flight of a respective unmanned aerial vehicle. For example, flight plan
generator 110 may create modified flight plan 172 for unmanned aerial vehicle 116
as unmanned aerial vehicle 116 flies through region 104.
[0040] Flight plan 114 takes into account micro winds within region 104. Flight plan 114
takes into account any desirable parameters of at least one of unmanned aerial vehicle
116 or cargo 174. For example, flight plan 114 may take into account at least one
of fuel efficiency, turbulence, maximum altitude, maximum speed of unmanned aerial
vehicle 116, dimensions of unmanned aerial vehicle 116, order parameters, cargo type,
or any other desirable parameters.
[0041] In some illustrative examples, flight plan generator 110 is configured to determine
maximum acceptable turbulence 178 for cargo 174 of unmanned aerial vehicle 116 and
plan flight plan 114 such that unmanned aerial vehicle 116 is projected to encounter
turbulence below maximum acceptable turbulence 178. In some illustrative examples,
flight plan generator 110 is configured to determine deliver by time 180 for cargo
174 of unmanned aerial vehicle 116, and plan flight plan 114 such that unmanned aerial
vehicle 116 is projected to deliver cargo 174 prior to deliver by time 180.
[0042] In some illustrative examples, flight plan generator 110 is configured to create
flight plan 114 using three-dimensional wind prediction map 168 for region 104 for
a future time. In some illustrative examples, three-dimensional wind map generator
160 is configured to generate a three-dimensional wind prediction map for region 104
for a future time using three-dimensional model 156 of region 104 and a coarsely-grained
forecast for the future time. For example, three-dimensional wind map generator 160
is configured to generate three-dimensional wind prediction map 168 for region 104
for second time 152 using three-dimensional model 156 of region 104 and coarsely-grained
forecast 150 for second time 152.
[0043] In some illustrative examples, model training system 158 is configured to continuously
check three-dimensional model 156. For example, model training system 158 may verify
appropriate outputs as new inputs are received. Model training system 158 is configured
to refine and update three-dimensional model 156 of region 104 using additional determined
wind vectors 176 and received coarsely-grained forecasts 146 for region 104.
[0044] System 102 includes communication system 182 configured to communicate flight plans
with plurality of aerial vehicles 109. Communication system 182 communicates flight
plan 114 with unmanned aerial vehicle 116.
[0045] During operation of system 102, real-time wind measurements/reports, such as wind
vectors 111, are first matched with their respective coarsely-grained wind forecast
(from e.g. the National Weather Service). For example, winds at 3 pm are matched to
their 3 pm forecast. In some illustrative examples, the forecast may be published
prior to the valid time. For instance, a forecast published at 1 pm may be valid at
3 pm.
[0046] After matching, the instance pair formed by matching wind vectors 111 with coarsely
grained forecast 148 is saved to database 144. This instance pair will then be used
in predictive real-time model/machine learning algorithm training, such as by model
training system 158, occurring in real-time wind analysis apparatus 154. In some illustrative
examples, the algorithms are used to predict a future three-dimensional view of the
winds when a new coarsely-grained forecast arrives. Another output of real-time wind
analysis apparatus 154 may be the current/live/real-time 3D wind speed view. These
two outputs can, in the following, be used to either plan flights "right now," i.e.
with the current micro live wind situation or to plan flights at a future time using
the predicted micro wind situation
[0047] At any time t, wind vectors 111 are determined using plurality of aerial vehicles
109 present in region 104, with this information relayed to real-time wind analysis
apparatus 154. Upon arrival, interpolated wind vectors 164 along the locations in
the defined grid, three-dimensional grid 166, are determined through interpolation.
Using interpolation, interpolated wind vectors 164 valid at each coordinate point
of three-dimensional grid 166 are known. This is performed for all points of three-dimensional
grid 166. Should a coarsely-grained forecast be available for this current point in
time, it is then matched with this three-dimensional wind map 162 and saved in database
144.
[0048] Following matching a three-dimensional wind map with a coarsely grained forecast,
this match is transferred from the database to real-time wind analysis apparatus 154.
The matches or, "instance pairs," are recurrently used to train machine learning algorithms
in model training system 158. A Lambda architecture can be employed, which ensures
a real-time algorithm training using streams of data.
[0049] In some illustrative examples, real-time wind analysis apparatus 154 may be used
to form a three-dimensional wind prediction map, such as three-dimensional wind prediction
map 168, in response to receiving a new coarsely-grained forecast. When a new coarsely-grained
forecast arrives, which forecasts wind values at some point in the future, t2, this
forecast is then applied to the machine learning algorithms, which then generate a
prediction for three-dimensional wind prediction map 168 in region 104, valid for
time t2. This also resembles the output of the apparatus and serves as input to flight
plan generator 110 generating flight plans for unmanned aerial vehicles flying in
region 104.
[0050] Real-time wind analysis apparatus 154 may be implemented in at least one of hardware
or software. As depicted, real-time wind analysis apparatus 154 is implemented in
computer system 184. As depicted, computer system 184 is not present within region
104. However, in other illustrative examples, computer system 184 may be present within
region 104.
[0051] As used herein, the phrase "at least one of," when used with a list of items, means
different combinations of one or more of the listed items may be used, and only one
of each item in the list may be needed. In other words, "at least one of' means any
combination of items and number of items may be used from the list, but not all of
the items in the list are required. The item may be a particular object, a thing,
or a category.
[0052] For example, "at least one of item A, item B, or item C" may include, without limitation,
item A, item A and item B, or item B. This example also may include item A, item B,
and item C, or item B and item C. Of course, any combination of these items may be
present. In other examples, "at least one of' may be, for example, without limitation,
two of item A, one of item B, and ten of item C; four of item B and seven of item
C; or other suitable combinations.
[0053] The illustration of environment 100 in Figure 1 is not meant to imply physical or
architectural limitations to the manner in which an illustrative embodiment may be
implemented. Other components in addition to or in place of the ones illustrated may
be used. Some components may be unnecessary. Also, the blocks are presented to illustrate
some functional components. One or more of these blocks may be combined, divided,
or combined and divided into different blocks when implemented in an illustrative
embodiment.
[0054] For example, wind speed calculator 108 may receive additional measurements from other
equipment or structures than plurality of aerial vehicles 109. In some illustrative
examples, wind speed calculator 108 receives measurements 186 from weather stations
188. In these illustrative examples, wind speed calculator 108 is configured to determine
wind vectors 111 within region 104 using measurements 112 from plurality of aerial
vehicles 109 and measurements 186 from weather stations 188.
[0055] Weather stations 188 are at fixed locations within region 104. For each weather station
of weather stations 188, the respective latitude, respective longitude, and respective
altitude does not change. In some illustrative examples, each of measurements 186
includes the respective latitude, respective longitude, and respective altitude for
the respective measurement. In other illustrative examples, each of measurements 186
includes an identification number for a respective weather station of weather stations
188. The identification number may be correlated to a respective latitude, respective
longitude, and respective altitude for the respective weather station by wind speed
calculator 108.
[0056] Turning now to Figure 2, an illustration of a two-dimensional view of locations for
a plurality of aerial vehicles identified in a region is depicted in accordance with
an illustrative embodiment. Region 200 is a physical implementation of region 104
of Figure 1. As depicted, region 200 includes at least one of a suburban region or
an urban region. As depicted, region 200 includes a city.
[0057] Region 200 is positioned between marker 202, marker 204, marker 206, and marker 208.
In some illustrative examples, region 200 is within a single 0.5° lateral resolution
grid. In these illustrative examples, marker 202, marker 204, marker 206, and marker
208 identify the single 0.5° lateral resolution grid. While a forecast will exist
at each of the coordinates, marker 202, marker 204, marker 206, and marker 208, the
wind situation in between them is unknown.
[0058] Assuming an operator of an unmanned aerial vehicle wants to deliver parcels to homes
in the city within region 200, the operator would like to know wind vectors and wind
directions within the city. Using the wind vectors and wind directions within the
city, the operator may plan more desirable flight routes. For example, using the wind
vectors and wind directions within the city, the operator may plan flight plans with
reduced turbulence. As another example, using the wind vectors and wind directions
within the city, the operator may plan flight plans with reduced fuel usage. As yet
another example, using the wind vectors and wind directions within the city, the operator
may plan flight plans with reduced flight time.
[0059] As depicted, plurality of points 210 are present within region 200. Plurality of
points 210 represent positions of aerial vehicles flying within region 200. The aerial
vehicles are physical implementations of plurality of aerial vehicles 109 of Figure
1. More specifically, the aerial vehicles may be physical implementations of plurality
of unmanned aerial vehicles 106 of Figure 1. Although plurality of points 210 are
described as a plurality of unmanned aerial vehicles, in some illustrative examples,
plurality of points 210 may represent any quantity of conventional aircraft in place
of or in addition to unmanned aerial vehicles. Although plurality of points 210 are
depicted in a two-dimensional setting, in a three-dimensional setting, plurality of
points 210 also include an altitude for each unmanned aerial vehicle of the plurality
of unmanned aerial vehicles.
[0060] View 212 of region 200 is a snapshot view at a first time, such as first time 126
of Figure 1. Plurality of points 210 will be positioned at different locations within
region 200 at a second time (not depicted).
[0061] In some illustrative examples, view 212 is an exemplary presence of unmanned aerial
vehicles employed by a company using large numbers of unmanned aerial vehicles for
operations. In these illustrative examples, unmanned aerial vehicles may be employed
by a company delivering cargo in a city. In some illustrative examples, view 212 is
an exemplary presence of unmanned aerial vehicles employed by several operators.
[0062] Due to the quantity of unmanned aerial vehicles operating within region 200, a good
coverage of region 200 can be generated. Sensors connected to the unmanned aerial
vehicles represented by plurality of points 210 create measurements for determining
wind vectors within region 200.
[0063] Turning now to Figure 3, an illustration of a three-dimensional view of locations
for a plurality of aerial vehicles identified in a region is depicted in accordance
with an illustrative embodiment. View 300 is a three-dimensional view of region 200
of Figure 2.
[0064] As can be seen in view 300, marker 202 is one of series of stacked markers 302 extending
from ground 304 upward in direction 306. As can be seen in view 300, marker 204 is
one of series of stacked markers 308 extending from ground 304 upward in direction
306. As can be seen in view 300, marker 206 is one of series of stacked markers 310
extending from ground 304 upward in direction 306. As can be seen in view 300, marker
208 is one of series of stacked markers 312 extending from ground 304 upward in direction
306.
[0065] In view 300, plurality of points 210 is present in a three-dimensional space. Plurality
of points 210 represents positions of unmanned aerial vehicles flying within region
200 including altitudes 314, such as altitudes 132 of Figure 1. Although plurality
of points 210 are described as a plurality of unmanned aerial vehicles, in some illustrative
examples, plurality of points 210 may represent any quantity of conventional aircraft
in place of or in addition to unmanned aerial vehicles.
[0066] Turning now to Figure 4, an illustration of a three-dimensional view of determined
wind vectors in a region is depicted in accordance with an illustrative embodiment.
In view 400, plurality of points 210 are replaced by wind vectors 402. Each of wind
vectors 402 represents wind vectors determined by a wind speed calculator, such as
wind speed calculator 108 of Figure 1. Each of wind vectors 402 includes a wind speed
and a wind direction. Each of wind vectors 402 is associated with a point of plurality
of points 210.
[0067] Turning now to Figure 5, an illustration of an unmanned aerial vehicle with exemplary
vectors is depicted in accordance with an illustrative embodiment. Unmanned aerial
vehicle 500 is a physical implementation of an unmanned aerial vehicle of plurality
of unmanned aerial vehicles 106 of Figure 1.
[0068] In view 502, unmanned aerial vehicle 500 has vector 504 representing a speed and
a heading selected by unmanned aerial vehicle 500. The speed and the heading selected
by unmanned aerial vehicle 500 may be part of a flight plan followed by unmanned aerial
vehicle 500.
[0069] In view 502, unmanned aerial vehicle 500 has vector 506 representing a speed and
a heading above ground. The speed and heading represented by vector 506 may be determined
through usage of a GPS system.
[0070] Using vector addition, vector 508 is determined. Vector 508 represents wind speed
and wind direction.
[0071] The wind speed and the wind direction represented by vector 508 may be determined
by wind speed calculator 108 of Figure 1 using vector addition. The wind speed and
wind direction represented by vector 508 may be stored in database 144 of Figure 1.
The wind speed and wind direction represented by vector 508 may be used to form three-dimensional
model 156 of Figure 1.
[0072] Turning now to Figure 6, an illustration of a two-dimensional view of set grid points
in a region is depicted in accordance with an illustrative embodiment. As depicted,
view 600 of region 200 is bounded by marker 202, marker 204, marker 206, and marker
208. In view 600, set grid points 602 are positioned within region 200. As depicted,
set grid points 602 are spaced regularly within region 200.
[0073] Turning now to Figure 7, an illustration of a three-dimensional view of set grid
points in a region is depicted in accordance with an illustrative embodiment.
[0074] View 700 is a three-dimensional view of region 200 of Figure 2 with set grid points
602. As can be seen in view 700, set grid points 602 is three-dimensional grid 702.
Three-dimensional grid 702 is regularly spaced in direction 704, direction 706, and
direction 708.
[0075] Set grid points 602 form three-dimensional grid 702. Three-dimensional grid 702 is
defined in lateral and vertical dimensions. Three-dimensional grid 702 explicitly
defines locations by latitude / longitude / altitude.
[0076] Turning now to Figure 8, an illustration of a two-dimensional view of interpolated
wind vectors at set grid points in a region is depicted in accordance with an illustrative
embodiment. In view 800, set grid points 602 are replaced by interpolated wind vectors
802.
[0077] Each of interpolated wind vectors 802 represents wind vectors determined by a three-dimensional
model, such as three-dimensional model 156 of Figure 1. Each of interpolated wind
vectors 802 includes a wind speed and a wind direction. Each of interpolated wind
vectors 802 is associated with a point of set grid points 602. Although interpolated
wind vectors 802 are only depicted in a two-dimensional view on a lateral scale, interpolated
wind vectors 802 may also be calculated at different altitudes.
[0078] Turning now to Figure 9, an illustration of a two-dimensional view of an unmanned
aerial vehicle with an original flight plan and a new flight plan taking into account
micro wind conditions is depicted in accordance with an illustrative embodiment. Unmanned
aerial vehicle 900 operates within region 902. In this illustrative example, region
902 includes buildings 904. In this illustrative example, unmanned aerial vehicle
900 has destination 906. Path 908 is an initial path. Path 908 may be determined using
any desirable method. In some illustrative examples, path 908 may be the fastest path
without winds. In some illustrative examples, path 908 may be the most direct path.
[0079] Path 910 is a modified flight path, such as modified flight plan 172 of Figure 1.
In this illustrative example, path 910 is created based on wind vectors 912 in region
902. In some illustrative examples, wind vectors 912 are determined in real-time.
In some illustrative examples, when wind vectors 912 are determined in real-time,
wind vectors 912 may be directly measured by unmanned aerial vehicles. For example,
wind vectors 912 may be examples of wind measurements 128 of Figure 1. In some illustrative
examples, when wind vectors 912 are determined in real-time, wind vectors 912 may
be indirectly determined from observed speeds and observed headings, such as observed
speeds 138 and observed headings 140 of Figure 1. In some illustrative examples, unmanned
aerial vehicle 900 may contribute measurements to wind vectors 912. In some other
illustrative examples, unmanned aerial vehicle 900 does not contribute measurements
to wind vectors 912.
[0080] In other illustrative examples, wind vectors 912 are interpolated from wind vectors
determined. In these illustrative examples, wind vectors 912 may be examples of interpolated
wind vectors 164 of Figure 1. When wind vectors 912 are interpolated from wind vectors
determined, wind vectors 912 are interpolated using wind vectors determined using
measurements taken within region 902. In some illustrative examples, the measurements
are taken by other unmanned aerial vehicles than unmanned aerial vehicle 900. In some
illustrative examples, unmanned aerial vehicle 900 took at least one measurement of
the measurements within region 902 used to form wind vectors 912.
[0081] In yet other illustrative examples, wind vectors 912 are generated by a three-dimensional
wind prediction map, such as three-dimensional wind prediction map 168 of Figure 1.
In these illustrative examples, wind vectors 912 are generated when a coarsely-grained
forecast, such as coarsely grained forecast 150 of Figure 1, is provided to a three-dimensional
wind prediction map generator, such as three-dimensional wind map generator 160 of
Figure 1.
[0082] Path 910 may be generated to decrease flight time to destination 906. Path 910 may
be generated to decrease turbulence experienced by unmanned aerial vehicle 900. Path
910 may be generated to increase fuel efficiency of unmanned aerial vehicle 900.
[0083] Turning now to Figure 10, an illustration of differences between a desired path and
an actual path for an unmanned aerial vehicle is depicted in accordance with an illustrative
embodiment. Path 1000 is a desired path for unmanned aerial vehicle 1002. Unmanned
aerial vehicle 1002 is a physical implementation of one of plurality of unmanned aerial
vehicles 106 of Figure 1. Wind vectors 1004 are changes to winds that have not been
identified by other plurality of unmanned aerial vehicles. In attempting to fly along
path 1000, unmanned aerial vehicle 1002 will actually follow path 1006 due to wind
vectors 1004. Although path 1000 and path 1006 are described as for unmanned aerial
vehicle 1002, paths may also be generated for conventional aircraft.
[0084] Wind vectors 1004 may be reported to system 102 using measurements from unmanned
aerial vehicle 1002. In some illustrative examples, the measurements may be direct
measurements of wind vectors 1004 using a sensor (not depicted) on unmanned aerial
vehicle 1002. In some illustrative examples, the measurements may be indirect measurements
of wind vectors 1004 by directly measuring path 1000 and path 1006.
[0085] In this illustrative example, unmanned aerial vehicle 1002 is in-flight. To correct
for wind vectors 1004 encountered during flight, unmanned aerial vehicle 1002 will
try to return to path 1000. During flight, unmanned aerial vehicle 1002 sends measurements
related to wind vectors 1004 such that other unmanned aerial vehicles (not depicted)
may anticipate and compensate for wind vectors 1004 prior to encountering wind vectors
1004. In some illustrative examples, measurements taken by unmanned aerial vehicle
1002 may be used by other unmanned aerial vehicles (not depicted) to identify paths
that avoid wind vectors 1004.
[0086] The different components shown in Figures 2-10 may be combined with components in
Figure 1, used with components in Figure 1, or a combination of the two. Additionally,
some of the components in Figures 2-10 may be illustrative examples of how components
shown in block form in Figure 1 can be implemented as physical structures.
[0087] Turning now to Figures 11A and 11B, an illustration of a flowchart of a method for
flying an unmanned aerial vehicle in a region based on wind vectors determined in
the region is depicted in accordance with an illustrative embodiment. Method 1100
may be implemented using system 102 of Figure 1. Method 1100 may be used to determine
wind vectors, such as wind vectors 111, interpolated wind vectors 164, or predicted
wind vectors 170 of Figure 1. Method 1100 may be used to fly unmanned aerial vehicle
116 in region 104 of Figure 1. Method 1100 may be used in region 200 of Figures 2-4
and Figures 6-8. Method 1100 may be used to fly unmanned aerial vehicle 500 of Figure
5. Method 1100 may be used to plan path 910 of Figure 9.
[0088] Method 1100 collects altitude measurements for a plurality of aerial vehicles while
the plurality of aerial vehicles is flying in a region (operation 1102). In some illustrative
examples, the region is within a single 0.5° lateral resolution grid. In some illustrative
examples, the region is at least one of a suburban region or an urban region.
[0089] Method 1100 determines wind vectors within the region using the plurality of aerial
vehicles (operation 1104). In some illustrative examples, wind vectors are determined
directly within the region using wind sensors on the plurality of aerial vehicles.
In these illustrative examples, the wind vectors are determined using wind measurements
taken from wind sensors on the plurality of aerial vehicles.
[0090] In some other illustrative examples, the wind vectors are determined indirectly within
the region using measurements from sensors attached to the plurality of aerial vehicles.
In these illustrative examples, method 1100 may collect set speeds and set headings
for the plurality of aerial vehicles (operation 1106). In these illustrative examples,
method 1100 also collects observed speeds and observed headings for the plurality
of aerial vehicles, wherein determining the wind vectors comprises determining the
wind vectors within the region using vector addition, the set speeds, the set headings,
the observed speeds, and the observed headings (operation 1108).
[0091] Method 1100 plans a flight plan within the region for an aerial vehicle based on
the wind vectors determined (operation 1110). In some illustrative examples, the aerial
vehicle is an unmanned aerial vehicle. In some illustrative examples, wherein the
aerial vehicle is an unmanned aerial vehicle and wherein planning the flight plan
within the region for the aerial vehicle comprises: determining a maximum acceptable
turbulence for cargo of the unmanned aerial vehicle; and planning the flight plan
such that the unmanned aerial vehicle is projected to encounter turbulence below the
maximum acceptable turbulence (operation 1112). In some illustrative examples, wherein
the aerial vehicle is an unmanned aerial vehicle and wherein planning the flight plan
within the region for the aerial vehicle comprises: determining a deliver by time
for cargo of the unmanned aerial vehicle; and planning the flight plan such that the
unmanned aerial vehicle is projected to deliver the cargo prior to the deliver by
time (operation 1114).
[0092] In some illustrative examples, planning the flight plan within the region for the
aerial vehicle based on the wind vectors determined comprises creating a modified
flight plan for the aerial vehicle while the aerial vehicle is actively flying (operation
1116). In these illustrative examples, the modified flight plan takes into account
any desirable parameters for at least one of the aerial vehicle or cargo carried by
the aerial vehicle.
[0093] Method 1100 flies the unmanned aerial vehicle within the region according to the
flight plan (operation 1118). To fly the unmanned aerial vehicle within the region,
the flight plan is communicated to the unmanned aerial vehicle by a communications
system operably connected to a real-time wind analysis apparatus, such as real-time
wind analysis apparatus 154 of Figure 1.
[0094] In some illustrative examples, method 1100 creates a three-dimensional wind map of
the region with interpolated wind vectors determined based on the wind vectors determined
(operation 1120). In some illustrative examples, method 1100 receives a coarsely-grained
forecast for the region for a future time (operation 1122). In these illustrative
examples, method 1100 may generate a three-dimensional wind prediction map for the
region for the future time using a three-dimensional model of the region and the coarsely-grained
forecast, wherein planning the flight path within the region comprises planning the
flight path using the three-dimensional wind prediction map for the region for the
future time (operation 1124).
[0095] Turning now to Figure 12, an illustration of a flowchart of a method for flying an
unmanned aerial vehicle in a region is depicted in accordance with an illustrative
embodiment. Method 1200 may be implemented using system 102 of Figure 1. Method 1200
may be used to determine wind vectors, such as wind vectors 111, interpolated wind
vectors 164, or predicted wind vectors 170 of Figure 1. Method 1200 may be used to
fly unmanned aerial vehicle 116 in region 104 of Figure 1. Method 1200 may be used
in region 200 of Figures 2-4 and Figures 6-8. Method 1200 may be used to fly unmanned
aerial vehicle 500 of Figure 5. Method 1200 may be used to plan path 910 of Figure
9.
[0096] Method 1200 determines wind vectors within a region at a first time using a plurality
of aerial vehicles (operation 1202). In some illustrative examples, wind vectors are
determined directly within the region using wind sensors on the plurality of aerial
vehicles. In these illustrative examples, the wind vectors are determined using wind
measurements taken from wind sensors on the plurality of aerial vehicles.
[0097] In some other illustrative examples, the wind vectors are determined indirectly within
the region using measurements from sensors attached to the plurality of aerial vehicles.
In some illustrative examples, determining the wind vectors within the region at a
first time comprises determining the wind vectors using vector addition, set speeds
for the plurality of aerial vehicles in the region, set headings for the plurality
of aerial vehicles, observed speeds for the plurality of aerial vehicles, and observed
headings for the plurality of aerial vehicles (operation 1203).
[0098] Method 1200 generates a three-dimensional wind map of the region including interpolated
wind vectors based on the wind vectors (operation 1204). Method 1200 correlates the
three-dimensional wind map with a coarsely-grained forecast for the region at the
first time (operation 1206). Method 1200 trains a three-dimensional model of the region
with the three-dimensional wind map correlated with the coarsely-grained forecast
for the region at the first time (operation 1208). Method 1200 receives a coarsely-grained
forecast for the region at a second time (operation 1210). Method 1200 creates a three-dimensional
wind prediction map for the region at the second time (operation 1212). Method 1200
flies an aerial vehicle based on the three-dimensional wind prediction for the region
at the second time (operation 1214).
[0099] In some illustrative examples, flying the aerial vehicle based on the three-dimensional
wind prediction for the region at the second time comprises modifying a flight plan
that the aerial vehicle is actively flying (operation 1216). In some illustrative
examples, flying the aerial vehicle based on the three-dimensional wind prediction
for the region at the second time comprises creating a new flight plan for the aerial
vehicle prior to takeoff (operation 1218).
[0100] The flowcharts and block diagrams in the different depicted embodiments illustrate
the architecture, functionality, and operation of some possible implementations of
apparatus and methods in an illustrative embodiment. In this regard, each block in
the flowcharts or block diagrams may represent a module, a segment, a function, and/or
a portion of an operation or step.
[0101] In some alternative implementations of an illustrative embodiment, the function or
functions noted in the blocks may occur out of the order noted in the figures. For
example, in some cases, two blocks shown in succession may be executed substantially
concurrently, or the blocks may sometimes be performed in the reverse order, depending
upon the functionality involved. Also, other blocks may be added, in addition to the
illustrated blocks, in a flowchart or block diagram.
[0102] In some illustrative examples, not all blocks of method 1100 are performed. For example,
at least one of operation 1106, operation 1108, operation 1120, or operation 1122
are optional. In some illustrative examples, not all blocks of method 1200 are performed.
For example, at least one of operation 1216 or operation 1218 are optional.
[0103] The illustrative examples provide a means to establish a four-dimensional weather
model. The four-dimensional weather model of the illustrative examples is able to
predict winds in lateral and vertical terms. In some illustrative examples, the four-dimensional
weather model is also able to predict disturbances or turbulence in lateral and vertical
terms.
[0104] Instead of relying on coarsely-grained "macro" weather forecasts, the illustrative
examples generate, for a limited three-dimensional space, a more detailed picture
of microscopic winds in this space. These winds are able to be predicted ahead of
an arbitrary point in time. The winds can be used to create flight plans that, due
to the finer-grained nature of the weather forecasts of the illustrative examples,
take into account the more realistic wind and precipitation conditions.
[0105] By taking into account the more realistic wind and precipitation conditions, an operator
with a multitude of drones will be able to experience less unforeseen disruptions
to operations. Reducing unforeseen disruptions to operations thereby increases the
operator's reliability and therefore its own customer satisfaction. This method relies
on an "Internet of Things"-system, specifically the drones of the operator themselves,
as well as any and all available measurements on meteorological conditions.
[0106] Drones may fly significantly shorter distances than commercial aircraft, with the
details of the weather not known, as the conventional forecast is too coarse. The
illustrative examples fill this gap, as they model the wind situation in a limited,
pre-defined space (e.g. a city in which a drone operator operates and delivers its
products).
[0107] The illustrative examples provide two main benefits: first, a drone operator is able
to determine the current condition of winds in a three-dimensional area. Determining
the current condition of winds helps with awareness of the current wind situation.
Further, the illustrative examples are able to generate a predicted three-dimensional
wind view. The finer resolution is more useful to drone flights in this area than
only relying on the coarse NWS forecasts. Drone flight plans may therefore be closer
to the true trajectory and/or flight time prescribed, thus increasing predictability.
The drone operator may be able to provide a higher accuracy to its customers in turn,
by more accurately predicting when a product will be delivered to the customer.
[0108] Also, with this information on microscopic winds, the drone operator is able to fly
routes that are more energy-efficient. This results in lesser energy consumption and
hence, less costs.
[0109] The illustrative examples may also provide benefits with turbulence measurements.
Associating turbulence with four-dimensional locations can bring benefit to drone
flight planning. Too many disturbances in flight may not be cost-efficient. Additionally,
too many disturbances in flight may damage cargo, depending on the cargo the drone
is carrying.
[0110] In general, acceptable levels of disturbances can be tied to the load carried. Some
loads might only receive a certain amount of turbulence, otherwise cargo might be
damaged. If applying this concept to "flying taxis," the route can be determined based
on the values of travel time in combination with passenger comfort as well. In general,
a live re-planning is also supported and can be tied to the unmanned aerial vehicle
knowing the allowed parameters for whatever is carried.
[0111] Knowing winds on a finer scale/resolution may be more beneficial than relying on
a coarse grid, as it better reflects the true wind speed situation. For airframers,
this fine granular resolution would be of limited benefit during long range cruise
considering their size and speed. However, for smaller vehicles like unmanned aerial
vehicles (UAVs) or "flying taxis" that are a lot smaller than commercial aircraft,
have a significantly smaller range of operations, and move slower, a higher resolution
for weather information is of significant benefit.
[0112] The description of the different illustrative embodiments has been presented for
purposes of illustration and description, and is not intended to be exhaustive or
limited to the embodiments in the form disclosed. Many modifications and variations
will be apparent to those of ordinary skill in the art. Further, different illustrative
embodiments may provide different features as compared to other illustrative embodiments.
The embodiment or embodiments selected are chosen and described in order to best explain
the principles of the embodiments, the practical application, and to enable others
of ordinary skill in the art to understand the disclosure for various embodiments
with various modifications as are suited to the particular use contemplated.
CLAUSES
[0113]
- 1. A system for taking into account micro wind conditions in a region
a plurality of aerial vehicles within the region, each of the plurality of aerial
vehicles having an altitude sensor and a GPS receiver; and
a wind speed calculator, the wind speed calculator configured to determine wind vectors
within the region using measurements from the plurality of aerial vehicles.
- 2. The system of clause 1, wherein the plurality of aerial vehicles is a plurality
of unmanned aerial vehicles.
- 3. The system of clause 1 or 2, wherein the wind speed calculator is configured to
determine the wind vectors using vector addition, set speeds of the plurality of aerial
vehicles, set headings of the plurality of aerial vehicles, observed speeds of the
plurality of aerial vehicles, and observed headings of the plurality of aerial vehicles.
- 4. The system of clause 1, 2 or 3 further comprising:
a three-dimensional wind map generator configured to create a three-dimensional wind
map with interpolated wind vectors within the region, wherein the interpolated wind
vectors are associated with set grid points of a three-dimensional grid.
- 5. The system of clause 4, wherein the three-dimensional wind map generator is further
configured to generate a three-dimensional wind prediction map for the region for
a future time using a three-dimensional model of the region and a coarsely-grained
forecast for the future time.
- 6. The system of any of clauses 1-5 further comprising:
a flight plan generator configured to create a flight plan within the region for an
aerial vehicle based on the wind vectors determined.
- 7. The system of clause 6, wherein the flight plan generator is configured to create
the flight plan using the three-dimensional wind prediction map for the region for
the future time.
- 8. The system of clause 6 or 7 further comprising:
a communication system configured to communicate flight plans with the plurality of
aerial vehicles.
- 9. The system of clause 6, 7 or 8, wherein the flight plan generator is configured
to determine a maximum acceptable turbulence for cargo of the aerial vehicle and plan
the flight plan such that the aerial vehicle is projected to encounter turbulence
below the maximum acceptable turbulence.
- 10. The system of any of clauses 6-9, wherein the flight plan generator is configured
to determine a deliver by time for cargo of the aerial vehicle, and plan the flight
plan such that the aerial vehicle is projected to deliver the cargo prior to the deliver
by time.
- 11. The system of any of clauses 6-10, wherein the aerial vehicle is an unmanned aerial
vehicle.
- 12. The system of any of clauses 1-11 further comprising:
a model training system configured to refine and update a three-dimensional model
of the region using additional determined wind vectors and received coarsely-grained
forecasts for the region.
- 13. The system of any of clauses 1-12, wherein the region is within a single 0.5°
lateral resolution grid.
- 14. A method comprising:
collecting altitude measurements for a plurality of aerial vehicles while the plurality
of aerial vehicles is flying in a region; and
determining wind vectors within the region using the plurality of aerial vehicles.
- 15. The method of clause 14 further comprising: planning a flight plan within the
region for an aerial vehicle based on the wind vectors determined.
- 16. The method of clause 14 or 15 further comprising:
flying the aerial vehicle within the region according to the flight plan.
- 17. The method of clause 14, 15 or 16, wherein the aerial vehicle is an unmanned aerial
vehicle.
- 18. The method of any of clauses 14-17, wherein planning the flight plan within the
region for the aerial vehicle comprises:
determining a maximum acceptable turbulence for cargo of the unmanned aerial vehicle;
and
planning the flight plan such that the unmanned aerial vehicle is projected to encounter
turbulence below the maximum acceptable turbulence.
- 19. The method of clause 15, 16, 17 or 18, wherein planning the flight plan within
the region for the aerial vehicle comprises:
determining a deliver by time for cargo of the unmanned aerial vehicle; and
planning the flight plan such that the unmanned aerial vehicle is projected to deliver
the cargo prior to the deliver by time.
- 20. The method of any of clauses 15-19, wherein planning the flight plan within the
region for the aerial vehicle based on the wind vectors determined comprises creating
a modified flight plan for the aerial vehicle while the aerial vehicle is actively
flying.
- 21. The method of any of clauses 14-20 further comprising:
collecting set speeds and set headings for the plurality of aerial vehicles; and
collecting observed speeds and observed headings for the plurality of aerial vehicles,
wherein determining the wind vectors comprises determining the wind vectors within
the region using vector addition, the set speeds, the set headings, the observed speeds,
and the observed headings.
- 22. The method of any of clauses 14-21, wherein the region is within a single 0.5°
lateral resolution grid.
- 23. The method of clause 22, wherein the region is at least one of a suburban region
or an urban region.
- 24. The method of any of clauses 14-23 further comprising:
creating a three-dimensional wind map of the region with interpolated wind vectors
determined based on the wind vectors determined.
- 25. The method of any of clauses 14-24 further comprising:
receiving a coarsely-grained forecast for the region for a future time; and
generating a three-dimensional wind prediction map for the region for the future time
using a three-dimensional model of the region and the coarsely-grained forecast, wherein
planning the flight path within the region comprises planning the flight path using
the three-dimensional wind prediction map for the region for the future time.
- 26. A method comprising:
determining wind vectors within a region at a first time using a plurality of aerial
vehicles flying in the region;
generating a three-dimensional wind map of the region including interpolated wind
vectors based on the wind vectors;
correlating the three-dimensional wind map with a coarsely-grained forecast for the
region at the first time;
training a three-dimensional model of the region with the three-dimensional wind map
correlated with the coarsely-grained forecast for the region at the first time;
receiving a coarsely-grained forecast for the region at a second time; and
creating a three-dimensional wind prediction map for the region at the second time.
- 27. The method of clause 26, wherein the aerial vehicle is an unmanned aerial vehicle.
- 28. The method of clause 26 or 27, wherein determining the wind vectors within the
region at a first time comprises determining the wind vectors using vector addition,
set speeds for the plurality of aerial vehicles in the region, set headings for the
plurality of aerial vehicles, observed speeds for the plurality of aerial vehicles,
and observed headings for the plurality of aerial vehicles.
- 29. The method of clause 26, 27 or 28 further comprising:
flying an aerial vehicle based on the three-dimensional wind prediction map for the
region at the second time.
- 30. The method of clause 29, wherein flying the aerial vehicle based on the three-dimensional
wind prediction map for the region at the second time comprises modifying a flight
plan the aerial vehicle is actively flying.
- 31. The method of clause 29 or 30, wherein flying the aerial vehicle based on the
three-dimensional wind prediction map for the region at the second time comprises
creating a new flight plan for the aerial vehicle prior to takeoff.
1. A system for taking into account micro wind conditions in a region, comprising
a plurality of aerial vehicles within the region, each of the plurality of aerial
vehicles having an altitude sensor and a GPS receiver; and
a wind speed calculator, the wind speed calculator configured to determine wind vectors
within the region using measurements from the plurality of aerial vehicles,
wherein the plurality of aerial vehicles is a plurality of unmanned aerial vehicles,
a three-dimensional wind map generator configured to create a three-dimensional wind
map with interpolated wind vectors within the region, wherein the interpolated wind
vectors are associated with set grid points of a three-dimensional grid
wherein the flight plan generator is configured to create the flight plan using the
three-dimensional wind prediction map for the region for the future time.
further comprising:
a communication system configured to communicate flight plans with the plurality of
aerial vehicles.
2. The system of claim 1, wherein the wind speed calculator is configured to determine
the wind vectors using vector addition, set speeds of the plurality of aerial vehicles,
set headings of the plurality of aerial vehicles, observed speeds of the plurality
of aerial vehicles, and observed headings of the plurality of aerial vehicles.
3. The system of claim 1 or 2, wherein the three-dimensional wind map generator is further
configured to generate a three-dimensional wind prediction map for the region for
a future time using a three-dimensional model of the region and a coarsely-grained
forecast for the future time.
4. The system of any of claims 1-3 further comprising:
a flight plan generator configured to create a flight plan within the region for an
aerial vehicle based on the wind vectors determined.
5. The system of any of claims 1-4, wherein the flight plan generator is configured to
determine a maximum acceptable turbulence for cargo of the aerial vehicle and plan
the flight plan such that the aerial vehicle is projected to encounter turbulence
below the maximum acceptable turbulence.
6. The system of any of claims 1-5, wherein the flight plan generator is configured to
determine a deliver by time for cargo of the aerial vehicle, and plan the flight plan
such that the aerial vehicle is projected to deliver the cargo prior to the deliver
by time.
7. The system of any of claims 1-6 further comprising:
a model training system configured to refine and update a three-dimensional model
of the region using additional determined wind vectors and received coarsely-grained
forecasts for the region.
8. The system of any of claims 1-7, wherein the region is within a single 0.5° lateral
resolution grid.
9. A method comprising:
collecting altitude measurements for a plurality of aerial vehicles while the plurality
of aerial vehicles is flying in a region;
determining wind vectors within the region using the plurality of aerial vehicles,
and
planning a flight plan within the region for an aerial vehicle based on the wind vectors
determined,
wherein the aerial vehicle is an unmanned aerial vehicle.
10. The method of claim 9 further comprising:
flying the aerial vehicle within the region according to the flight plan.
11. The method of any of claims 9 and 10, wherein planning the flight plan within the
region for the aerial vehicle comprises:
determining a maximum acceptable turbulence for cargo of the unmanned aerial vehicle;
and
planning the flight plan such that the unmanned aerial vehicle is projected to encounter
turbulence below the maximum acceptable turbulence.
12. The method of claim 8, 9, 10 or 11, wherein planning the flight plan within the region
for the aerial vehicle comprises:
determining a deliver by time for cargo of the unmanned aerial vehicle; and
planning the flight plan such that the unmanned aerial vehicle is projected to deliver
the cargo prior to the deliver by time.
13. The method of any of claims 9-12, wherein planning the flight plan within the region
for the aerial vehicle based on the wind vectors determined comprises creating a modified
flight plan for the aerial vehicle while the aerial vehicle is actively flying.
14. The method of any of claims 9-13 further comprising:
collecting set speeds and set headings for the plurality of aerial vehicles; and
collecting observed speeds and observed headings for the plurality of aerial vehicles,
wherein determining the wind vectors comprises determining the wind vectors within
the region using vector addition, the set speeds, the set headings, the observed speeds,
and the observed headings.
15. The method of any of claims 9-14, wherein the region is within a single 0.5° lateral
resolution grid,
wherein the region is at least one of a suburban region or an urban region.
16. The method of any of claims 9-15 further preferably comprising:
creating a three-dimensional wind map of the region with interpolated wind vectors
determined based on the wind vectors determined, preferably
receiving a coarsely-grained forecast for the region for a future time; and
generating a three-dimensional wind prediction map for the region for the future time
using a three-dimensional model of the region and the coarsely-grained forecast, wherein
planning the flight path within the region comprises planning the flight path using
the three-dimensional wind prediction map for the region for the future time.