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Lukas Eller
measprocess
Commits
546e9171
Commit
546e9171
authored
Apr 21, 2021
by
Sonja Tripkovic
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added simulation.py
parent
07791eff
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simulation.py
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measprocess/simulation.py
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546e9171
from
shapely.geometry
import
Point
,
LineString
,
Polygon
import
geopandas
as
gpd
import
pandas
as
pd
import
matplotlib.pyplot
as
plt
import
numpy
as
np
from
random
import
random
from
scipy
import
linalg
import
os
def
TCP_on_lines
(
street_series_equidistant
:
gpd
.
GeoSeries
,
lambdaParent
:
float
,
lambdaDaughter
:
float
,
sigmaDaughter
:
float
)
->
(
gpd
.
GeoSeries
,
pd
.
DataFrame
):
'''
Generate TCP points along the LineStrings in geoseries.
:param street_series_equidistant: geopandas geoseries with equidistant nodes
:param lambdaParent: density of parent points
:param lambdaDaughter: density of daughter points
:param sigmaDaughter: spread of daughter points around parent points
:return:
geopandas geoseries containing x and y locations in 'EPSG:4326' projection
pandas dataframe with columns: x,y,clusterID,xParent,yParent in the original projection
'''
if
street_series_equidistant
.
crs
==
"EPSG:4326"
:
raise
ValueError
(
"Make sure to pass projected data (not long and lat)."
)
parents_per_street
=
np
.
random
.
poisson
(
street_series_equidistant
.
length
*
lambdaParent
)
# nummber of clusters per street
parents
=
[]
for
j
,
linestring
in
enumerate
(
street_series_equidistant
):
for
_
in
range
(
parents_per_street
[
j
]):
#(generate this number for each line using TCP, and then use this to place cluster centers along the lines)
pt
=
linestring
.
interpolate
(
random
(),
True
)
parents
.
append
(
pt
)
PARENTS
=
gpd
.
GeoSeries
(
parents
)
daughters_per_cluster
=
np
.
random
.
poisson
(
lambdaDaughter
,
parents_per_street
.
sum
())
# number of points inside each cluster
numbPoints
=
sum
(
daughters_per_cluster
)
# total number of points
# Generate the (relative) locations in Cartesian coordinates by simulating independent normal variables
xx0
=
np
.
random
.
normal
(
0
,
sigmaDaughter
,
numbPoints
)
# (relative) x coordinaets
yy0
=
np
.
random
.
normal
(
0
,
sigmaDaughter
,
numbPoints
)
# (relative) y coordinates
# replicate parent points (ie centres of disks/clusters)
xx
=
np
.
repeat
(
np
.
array
(
PARENTS
.
x
),
daughters_per_cluster
)
yy
=
np
.
repeat
(
np
.
array
(
PARENTS
.
y
),
daughters_per_cluster
)
# translate points (ie parents points are the centres of cluster disks)
xx
+=
xx0
yy
+=
yy0
# create pandas df (denote group (cluster) to which point (x,y) belongs to)
groups
=
np
.
arange
(
daughters_per_cluster
.
shape
[
0
])
col3
=
np
.
repeat
(
groups
,
daughters_per_cluster
,
axis
=
0
)
xParent
=
np
.
repeat
(
np
.
array
(
PARENTS
.
x
),
daughters_per_cluster
,
axis
=
0
)
yParent
=
np
.
repeat
(
np
.
array
(
PARENTS
.
y
),
daughters_per_cluster
,
axis
=
0
)
ALL
=
np
.
stack
((
xx
,
yy
,
col3
,
xParent
,
yParent
),
axis
=
1
)
df_all
=
pd
.
DataFrame
(
ALL
)
df_all
.
columns
=
[
'x'
,
'y'
,
'clusterID'
,
'xParent'
,
'yParent'
]
tcp_geoseries
=
gpd
.
GeoSeries
(
map
(
Point
,
zip
(
df_all
.
x
,
df_all
.
y
)))
.
set_crs
(
'EPSG:31287'
)
.
to_crs
(
'EPSG:4326'
)
return
tcp_geoseries
,
df_all
def
kernelSqExp
(
X1
,
X2
,
l
=
1.0
,
sigma_f
=
1.0
):
'''
Isotropic squared exponential kernel. Computes a covariance matrix from points in X1 and X2.
:param X1: Array of m points (m x d).
:param X2: Array of n points (n x d).
:return: Covariance matrix (m x n).
'''
sqdist
=
np
.
sum
(
X1
**
2
,
1
)
.
reshape
(
-
1
,
1
)
+
np
.
sum
(
X2
**
2
,
1
)
-
2
*
np
.
dot
(
X1
,
X2
.
T
)
return
sigma_f
**
2
*
np
.
exp
(
-
0.5
/
l
**
2
*
sqdist
)
def
ShadowFading
(
df_test
:
pd
.
DataFrame
,
df_train
:
pd
.
DataFrame
,
DD
:
float
,
sigma_f
:
float
)
->
(
pd
.
DataFrame
,
pd
.
DataFrame
):
'''
Generates shadow fading values at given test and train locations by sampling from multivariate Gaussian.
One of the procedures for sampling from a multivariate Gaussian distribution is as follows:
Let X have a n-dimensional Gaussian distribution N(μ,Σ). We wish to generate a sample form X.
1) Find a matrix A, such that Σ=A*AT. This is possible using Cholesky decomposition, where A is the Cholesky factor of Σ.
2) Generate a vector Z=(Z1,…,Zn)T of independent, standard normal variables. (n = n_test + n_train)
3) Let X=μ+AZ. (mean can be zero)
X in step 3 is the sample we are looking for.
:param df_test: pandas dataframe of test points containing columns 'x' and 'y' as coordinates
:param df_test: pandas dataframe of train points containing columns 'x' and 'y' as coordinates
:param DD: deccorelation distance
:param sigma_f: signal standard deviation
'''
TestPoints
=
df_test
[[
'x'
,
'y'
]]
TrainPoints
=
df_train
[[
'x'
,
'y'
]]
AllPoints
=
np
.
append
(
TestPoints
,
TrainPoints
,
axis
=
0
)
AllPoints_min
=
AllPoints
.
min
(
axis
=
0
)
AllPoints
=
AllPoints
-
AllPoints_min
# compute squared exponential kernel
kernel
=
kernelSqExp
(
AllPoints
,
AllPoints
,
DD
,
sigma_f
)
A
=
linalg
.
cholesky
(
np
.
add
(
kernel
,
1e-10
*
np
.
eye
(
kernel
.
shape
[
0
])),
lower
=
True
)
Z
=
np
.
random
.
normal
(
0.0
,
1.0
,
AllPoints
.
shape
[
0
])
X
=
A
.
dot
(
Z
)
df_test
[
'value'
]
=
X
[
0
:
TestPoints
.
shape
[
0
]]
df_train
[
'value'
]
=
X
[
TestPoints
.
shape
[
0
]:]
return
df_test
,
df_train
\ No newline at end of file
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