Petrophysically guided inversion: Joint linear example with nonlinear relationships#

We do a comparison between the classic least-squares inversion and our formulation of a petrophysically guided inversion. We explore it through coupling two linear problems whose respective physical properties are linked by polynomial relationships that change between rock units.

Problem 1, Problem 2, Petrophysical Distribution, Problem 1, Problem 2, Petrophysical Distribution, Problem 1, Problem 2, Petro Distribution
Running inversion with SimPEG v0.25.1.dev9+g471344c9a
Alpha scales: [np.float64(3.462290333302034), np.float64(0.0), np.float64(3.4660322501327066e-06), np.float64(0.0)]
Calculating the scaling parameter.
Scale Multipliers:  [0.09375869 0.90624131]
<class 'simpeg.regularization.pgi.PGIsmallness'>
Initial data misfit scales:  [0.09375869 0.90624131]
================================================= Projected GNCG =================================================
  #     beta     phi_d     phi_m       f      |proj(x-g)-x|  LS   iter_CG   CG |Ax-b|/|b|  CG |Ax-b|   Comment
-----------------------------------------------------------------------------------------------------------------
   0  1.94e+01  3.00e+05  0.00e+00  3.00e+05                         0           inf          inf
   1  1.94e+01  5.98e+02  1.76e+02  4.01e+03    1.41e+02      0      23       2.37e-04     2.19e+03
geophys. misfits: 3067.6 (target 30.0 [False]); 342.6 (target 30.0 [False]) | smallness misfit: 3809.7 (target: 200.0 [False])
Beta cooling evaluation: progress: [3067.6  342.6]; minimum progress targets: [240000. 240000.]
   2  1.94e+01  6.54e+01  4.05e+01  8.49e+02    1.37e+02      0     100       7.07e-01     1.68e+03   Skip BFGS
geophys. misfits: 494.0 (target 30.0 [False]); 21.1 (target 30.0 [True]) | smallness misfit: 1278.5 (target: 200.0 [False])
Beta cooling evaluation: progress: [494.   21.1]; minimum progress targets: [2454.1  274. ]
Updating scaling for data misfits by  1.4236462396464715
New scales: [0.12837989 0.87162011]
   3  1.94e+01  5.87e+01  4.09e+01  8.51e+02    9.29e+01      0     100       3.65e-03     5.96e+00
geophys. misfits: 314.8 (target 30.0 [False]); 20.9 (target 30.0 [True]) | smallness misfit: 1068.7 (target: 200.0 [False])
Beta cooling evaluation: progress: [314.8  20.9]; minimum progress targets: [395.2  30. ]
Updating scaling for data misfits by  1.432713294920553
New scales: [0.17425161 0.82574839]
   4  1.94e+01  5.29e+01  4.17e+01  8.61e+02    7.09e+01      0     100       3.84e-02     8.58e+00
geophys. misfits: 205.1 (target 30.0 [False]); 20.7 (target 30.0 [True]) | smallness misfit: 1003.4 (target: 200.0 [False])
Beta cooling evaluation: progress: [205.1  20.7]; minimum progress targets: [251.8  30. ]
Updating scaling for data misfits by  1.4458005562078486
New scales: [0.23377323 0.76622677]
   5  1.94e+01  4.78e+01  4.24e+01  8.70e+02    7.13e+01      0     100       4.74e-02     1.06e+01
geophys. misfits: 136.0 (target 30.0 [False]); 20.8 (target 30.0 [True]) | smallness misfit: 953.1 (target: 200.0 [False])
Beta cooling evaluation: progress: [136.   20.8]; minimum progress targets: [164.1  30. ]
Updating scaling for data misfits by  1.4401928929298253
New scales: [0.30526513 0.69473487]
   6  1.94e+01  4.34e+01  4.30e+01  8.76e+02    7.11e+01      0     100       3.76e-01     7.82e+01   Skip BFGS
geophys. misfits: 94.4 (target 30.0 [False]); 21.0 (target 30.0 [True]) | smallness misfit: 915.8 (target: 200.0 [False])
Beta cooling evaluation: progress: [94.4 21. ]; minimum progress targets: [108.8  30. ]
Updating scaling for data misfits by  1.4273580815650464
New scales: [0.38543921 0.61456079]
   7  1.94e+01  3.97e+01  4.34e+01  8.81e+02    7.08e+01      0     100       3.34e-02     6.82e+00   Skip BFGS
geophys. misfits: 69.0 (target 30.0 [False]); 21.4 (target 30.0 [True]) | smallness misfit: 887.0 (target: 200.0 [False])
Beta cooling evaluation: progress: [69.  21.4]; minimum progress targets: [75.5 30. ]
Updating scaling for data misfits by  1.4048230034777132
New scales: [0.46838896 0.53161104]
   8  1.94e+01  3.67e+01  4.38e+01  8.84e+02    6.74e+01      0     100       4.06e-02     6.26e+00   Skip BFGS
geophys. misfits: 53.5 (target 30.0 [False]); 21.9 (target 30.0 [True]) | smallness misfit: 863.4 (target: 200.0 [False])
Beta cooling evaluation: progress: [53.5 21.9]; minimum progress targets: [55.2 30. ]
Updating scaling for data misfits by  1.3706996101542341
New scales: [0.54703755 0.45296245]
   9  1.94e+01  3.43e+01  4.40e+01  8.87e+02    6.46e+01      0     100       1.08e-01     1.34e+01   Skip BFGS
geophys. misfits: 43.9 (target 30.0 [False]); 22.7 (target 30.0 [True]) | smallness misfit: 843.4 (target: 200.0 [False])
Beta cooling evaluation: progress: [43.9 22.7]; minimum progress targets: [42.8 30. ]
Decreasing beta to counter data misfit decrase plateau.
Updating scaling for data misfits by  1.3230560507627565
New scales: [0.61506477 0.38493523]
  10  9.69e+00  1.75e+01  4.52e+01  4.55e+02    8.29e+01      0     100       1.25e+00     5.77e+02
geophys. misfits: 16.1 (target 30.0 [True]); 19.6 (target 30.0 [True]) | smallness misfit: 853.7 (target: 200.0 [False])
Beta cooling evaluation: progress: [16.1 19.6]; minimum progress targets: [35.1 30. ]
Warming alpha_pgi to favor clustering:  1.69525949429319
  11  9.69e+00  1.79e+01  4.64e+01  4.67e+02    7.78e+01      0     100       8.33e-02     4.85e+01
geophys. misfits: 15.8 (target 30.0 [True]); 21.3 (target 30.0 [True]) | smallness misfit: 755.1 (target: 200.0 [False])
Beta cooling evaluation: progress: [15.8 21.3]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  2.800453046738079
  12  9.69e+00  1.80e+01  4.81e+01  4.84e+02    6.95e+01      0     100       1.10e+00     1.36e+02
geophys. misfits: 14.4 (target 30.0 [True]); 23.6 (target 30.0 [True]) | smallness misfit: 652.2 (target: 200.0 [False])
Beta cooling evaluation: progress: [14.4 23.6]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  4.69188843691559
  13  9.69e+00  1.86e+01  5.07e+01  5.09e+02    8.55e+01      0     100       2.06e+00     4.83e+02
geophys. misfits: 12.8 (target 30.0 [True]); 27.7 (target 30.0 [True]) | smallness misfit: 547.4 (target: 200.0 [False])
Beta cooling evaluation: progress: [12.8 27.7]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  8.024748385583178
  14  9.69e+00  2.01e+01  5.42e+01  5.46e+02    1.01e+02      0     100       1.63e+00     9.59e+02
geophys. misfits: 12.8 (target 30.0 [True]); 31.8 (target 30.0 [False]) | smallness misfit: 457.8 (target: 200.0 [False])
Beta cooling evaluation: progress: [12.8 31.8]; minimum progress targets: [30. 30.]
Decreasing beta to counter data misfit increase.
Updating scaling for data misfits by  2.3451299705784807
New scales: [0.40523762 0.59476238]
  15  4.84e+00  1.74e+01  5.49e+01  2.83e+02    1.08e+02      0     100       2.08e-01     1.69e+02
geophys. misfits: 11.9 (target 30.0 [True]); 21.2 (target 30.0 [True]) | smallness misfit: 451.6 (target: 200.0 [False])
Beta cooling evaluation: progress: [11.9 21.2]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  15.805285065629274
  16  4.84e+00  1.82e+01  6.22e+01  3.19e+02    9.70e+01      0     100       2.77e+00     9.90e+02
geophys. misfits: 11.4 (target 30.0 [True]); 22.7 (target 30.0 [True]) | smallness misfit: 394.3 (target: 200.0 [False])
Beta cooling evaluation: progress: [11.4 22.7]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  31.162973273598524
  17  4.84e+00  1.69e+01  7.42e+01  3.76e+02    1.15e+02      0     100       1.04e+00     1.29e+03
geophys. misfits: 14.9 (target 30.0 [True]); 18.2 (target 30.0 [True]) | smallness misfit: 325.4 (target: 200.0 [False])
Beta cooling evaluation: progress: [14.9 18.2]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  56.93188520465576
  18  4.84e+00  1.80e+01  9.23e+01  4.65e+02    1.26e+02      0     100       6.12e+00     1.13e+04
geophys. misfits: 16.3 (target 30.0 [True]); 19.2 (target 30.0 [True]) | smallness misfit: 280.0 (target: 200.0 [False])
Beta cooling evaluation: progress: [16.3 19.2]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  96.94398026744815
  19  4.84e+00  2.39e+01  1.11e+02  5.61e+02    1.31e+02      0     100       2.73e-01     3.17e+03
geophys. misfits: 29.9 (target 30.0 [True]); 19.9 (target 30.0 [True]) | smallness misfit: 226.2 (target: 200.0 [False])
Beta cooling evaluation: progress: [29.9 19.9]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  121.91347313872129
  20  4.84e+00  1.91e+01  1.13e+02  5.68e+02    1.32e+02      1     100       9.65e-01     3.56e+03
geophys. misfits: 19.8 (target 30.0 [True]); 18.6 (target 30.0 [True]) | smallness misfit: 181.8 (target: 200.0 [True])
All targets have been reached
Beta cooling evaluation: progress: [19.8 18.6]; minimum progress targets: [30. 30.]
Warming alpha_pgi to favor clustering:  190.45555554125082
------------------------- STOP! -------------------------
1 : |fc-fOld| = 5.5574e+01 <= tolF*(1+|f0|) = 3.0000e+04
0 : |xc-x_last| = 5.9302e-01 <= tolX*(1+|x0|) = 1.0000e-06
0 : |proj(x-g)-x|    = 1.3236e+02 <= tolG          = 1.0000e-01
0 : |proj(x-g)-x|    = 1.3236e+02 <= 1e3*eps       = 1.0000e-02
0 : maxIter   =      50    <= iter          =     20
------------------------- DONE! -------------------------

Running inversion with SimPEG v0.25.1.dev9+g471344c9a
Alpha scales: [np.float64(0.00034018480896722713), np.float64(0.0), np.float64(3.404260339291685e-06), np.float64(0.0)]
Calculating the scaling parameter.
Scale Multipliers:  [0.09375869 0.90624131]
<class 'simpeg.regularization.pgi.PGIsmallness'>
Initial data misfit scales:  [0.09375869 0.90624131]
================================================= Projected GNCG =================================================
  #     beta     phi_d     phi_m       f      |proj(x-g)-x|  LS   iter_CG   CG |Ax-b|/|b|  CG |Ax-b|   Comment
-----------------------------------------------------------------------------------------------------------------
   0  1.93e+03  3.00e+05  0.00e+00  3.00e+05                         0           inf          inf
   1  1.93e+03  6.54e+04  2.27e+01  1.09e+05    1.41e+02      0      15       2.94e-04     2.72e+03
geophys. misfits: 93732.9 (target 30.0 [False]); 62453.9 (target 30.0 [False]) | smallness misfit: 248.5 (target: 200.0 [False])
Beta cooling evaluation: progress: [93732.9 62453.9]; minimum progress targets: [240000. 240000.]
   2  1.93e+03  7.50e+01  5.52e-01  1.14e+03    1.36e+02      0     100       1.60e-01     4.32e+03   Skip BFGS
geophys. misfits: 602.4 (target 30.0 [False]); 20.5 (target 30.0 [True]) | smallness misfit: 107.8 (target: 200.0 [True])
Beta cooling evaluation: progress: [602.4  20.5]; minimum progress targets: [74986.3 49963.1]
Updating scaling for data misfits by  1.4640310811430572
New scales: [0.13154262 0.86845738]
   3  1.93e+03  2.63e+01  1.38e-01  2.92e+02    1.06e+02      0     100       1.85e-02     1.16e+02   Skip BFGS
geophys. misfits: 79.9 (target 30.0 [False]); 18.2 (target 30.0 [True]) | smallness misfit: 85.3 (target: 200.0 [True])
Beta cooling evaluation: progress: [79.9 18.2]; minimum progress targets: [481.9  30. ]
Updating scaling for data misfits by  1.6511350349395428
New scales: [0.20005916 0.79994084]
   4  1.93e+03  2.37e+01  1.32e-01  2.78e+02    9.43e+01      0     100       2.62e-02     4.42e+01
geophys. misfits: 44.6 (target 30.0 [False]); 18.5 (target 30.0 [True]) | smallness misfit: 57.1 (target: 200.0 [True])
Beta cooling evaluation: progress: [44.6 18.5]; minimum progress targets: [63.9 30. ]
Updating scaling for data misfits by  1.625497296725418
New scales: [0.28902772 0.71097228]
   5  1.93e+03  2.16e+01  1.32e-01  2.76e+02    7.67e+01      0     100       1.13e-01     1.35e+02
geophys. misfits: 29.1 (target 30.0 [True]); 18.6 (target 30.0 [True]) | smallness misfit: 59.7 (target: 200.0 [True])
All targets have been reached
Beta cooling evaluation: progress: [29.1 18.6]; minimum progress targets: [35.6 30. ]
Warming alpha_pgi to favor clustering:  1.321718629948008
------------------------- STOP! -------------------------
1 : |fc-fOld| = 5.6491e+01 <= tolF*(1+|f0|) = 3.0000e+04
0 : |xc-x_last| = 1.3996e-01 <= tolX*(1+|x0|) = 1.0000e-06
0 : |proj(x-g)-x|    = 7.6745e+01 <= tolG          = 1.0000e-01
0 : |proj(x-g)-x|    = 7.6745e+01 <= 1e3*eps       = 1.0000e-02
0 : maxIter   =      50    <= iter          =      5
------------------------- DONE! -------------------------

Running inversion with SimPEG v0.25.1.dev9+g471344c9a
Alpha scales: [np.float64(4.556967670769874e-05), np.float64(0.0), np.float64(3.5137225852748354e-05), np.float64(0.0)]
Calculating the scaling parameter.
Scale Multipliers:  [0.09375869 0.90624131]
/home/vsts/work/1/s/simpeg/directives/_directives.py:334: UserWarning:

There is no PGI regularization. Smallness target is turned off (TriggerSmall flag)

Initial data misfit scales:  [0.09375869 0.90624131]
================================================= Projected GNCG =================================================
  #     beta     phi_d     phi_m       f      |proj(x-g)-x|  LS   iter_CG   CG |Ax-b|/|b|  CG |Ax-b|   Comment
-----------------------------------------------------------------------------------------------------------------
   0  9.07e+05  3.00e+05  0.00e+00  3.00e+05                         0           inf          inf
   1  9.07e+05  3.58e+04  4.76e-02  7.90e+04    1.41e+02      0      23       9.53e-04     8.81e+03
geophys. misfits: 56438.2 (target 30.0 [False]); 33694.7 (target 30.0 [False])
   2  1.81e+05  3.46e+03  1.11e-01  2.36e+04    1.38e+02      0      94       9.29e-04     1.62e+01   Skip BFGS
geophys. misfits: 7092.3 (target 30.0 [False]); 3082.8 (target 30.0 [False])
   3  3.63e+04  2.26e+02  1.43e-01  5.40e+03    1.29e+02      0     100       1.45e-02     6.59e+01   Skip BFGS
geophys. misfits: 454.5 (target 30.0 [False]); 202.2 (target 30.0 [False])
   4  7.26e+03  3.01e+01  1.52e-01  1.13e+03    1.02e+02      0     100       2.50e-01     2.56e+02   Skip BFGS
geophys. misfits: 29.9 (target 30.0 [True]); 30.1 (target 30.0 [False])
Updating scaling for data misfits by  1.002649769886167
New scales: [0.09353408 0.90646592]
   5  1.45e+03  1.67e+01  1.55e-01  2.42e+02    8.22e+01      0     100       3.39e-02     1.12e+01   Skip BFGS
geophys. misfits: 5.6 (target 30.0 [True]); 17.8 (target 30.0 [True])
All targets have been reached
------------------------- STOP! -------------------------
1 : |fc-fOld| = 8.6234e+00 <= tolF*(1+|f0|) = 3.0000e+04
0 : |xc-x_last| = 4.2423e-01 <= tolX*(1+|x0|) = 1.0000e-06
0 : |proj(x-g)-x|    = 8.2246e+01 <= tolG          = 1.0000e-01
0 : |proj(x-g)-x|    = 8.2246e+01 <= 1e3*eps       = 1.0000e-02
0 : maxIter   =      50    <= iter          =      5
------------------------- DONE! -------------------------
/home/vsts/work/1/s/examples/10-pgi/plot_inv_1_PGI_Linear_1D_joint_WithRelationships.py:302: UserWarning:

marker is redundantly defined by the 'marker' keyword argument and the fmt string "b.-" (-> marker='.'). The keyword argument will take precedence.

/home/vsts/work/1/s/examples/10-pgi/plot_inv_1_PGI_Linear_1D_joint_WithRelationships.py:309: UserWarning:

marker is redundantly defined by the 'marker' keyword argument and the fmt string "r.-" (-> marker='.'). The keyword argument will take precedence.

/home/vsts/work/1/s/examples/10-pgi/plot_inv_1_PGI_Linear_1D_joint_WithRelationships.py:353: UserWarning:

marker is redundantly defined by the 'marker' keyword argument and the fmt string "b.-" (-> marker='.'). The keyword argument will take precedence.

/home/vsts/work/1/s/examples/10-pgi/plot_inv_1_PGI_Linear_1D_joint_WithRelationships.py:360: UserWarning:

marker is redundantly defined by the 'marker' keyword argument and the fmt string "r.-" (-> marker='.'). The keyword argument will take precedence.

/home/vsts/work/1/s/examples/10-pgi/plot_inv_1_PGI_Linear_1D_joint_WithRelationships.py:367: UserWarning:

The following kwargs were not used by contour: 'label'

/home/vsts/work/1/s/examples/10-pgi/plot_inv_1_PGI_Linear_1D_joint_WithRelationships.py:412: UserWarning:

marker is redundantly defined by the 'marker' keyword argument and the fmt string "b.-" (-> marker='.'). The keyword argument will take precedence.

/home/vsts/work/1/s/examples/10-pgi/plot_inv_1_PGI_Linear_1D_joint_WithRelationships.py:419: UserWarning:

marker is redundantly defined by the 'marker' keyword argument and the fmt string "r.-" (-> marker='.'). The keyword argument will take precedence.

import discretize as Mesh
import matplotlib.pyplot as plt
import matplotlib.lines as mlines
import numpy as np
from simpeg import (
    data_misfit,
    directives,
    inverse_problem,
    inversion,
    maps,
    optimization,
    regularization,
    simulation,
    utils,
)

# Random seed for reproductibility
np.random.seed(1)
# Mesh
N = 100
mesh = Mesh.TensorMesh([N])

# Survey design parameters
nk = 30
jk = np.linspace(1.0, 59.0, nk)
p = -0.25
q = 0.25


# Physics
def g(k):
    return np.exp(p * jk[k] * mesh.cell_centers_x) * np.cos(
        np.pi * q * jk[k] * mesh.cell_centers_x
    )


G = np.empty((nk, mesh.nC))

for i in range(nk):
    G[i, :] = g(i)

m0 = np.zeros(mesh.nC)
m0[20:41] = np.linspace(0.0, 1.0, 21)
m0[41:57] = np.linspace(-1, 0.0, 16)

poly0 = maps.PolynomialPetroClusterMap(coeffyx=np.r_[0.0, -4.0, 4.0])
poly1 = maps.PolynomialPetroClusterMap(coeffyx=np.r_[-0.0, 3.0, 6.0, 6.0])
poly0_inverse = maps.PolynomialPetroClusterMap(coeffyx=-np.r_[0.0, -4.0, 4.0])
poly1_inverse = maps.PolynomialPetroClusterMap(coeffyx=-np.r_[0.0, 3.0, 6.0, 6.0])
cluster_mapping = [maps.IdentityMap(), poly0_inverse, poly1_inverse]

m1 = np.zeros(100)
m1[20:41] = 1.0 + (poly0 * np.vstack([m0[20:41], m1[20:41]]).T)[:, 1]
m1[41:57] = -1.0 + (poly1 * np.vstack([m0[41:57], m1[41:57]]).T)[:, 1]

model2d = np.vstack([m0, m1]).T
m = utils.mkvc(model2d)

clfmapping = utils.GaussianMixtureWithNonlinearRelationships(
    mesh=mesh,
    n_components=3,
    covariance_type="full",
    tol=1e-8,
    reg_covar=1e-3,
    max_iter=1000,
    n_init=100,
    init_params="kmeans",
    random_state=None,
    warm_start=False,
    means_init=np.array(
        [
            [0, 0],
            [m0[20:41].mean(), m1[20:41].mean()],
            [m0[41:57].mean(), m1[41:57].mean()],
        ]
    ),
    verbose=0,
    verbose_interval=10,
    cluster_mapping=cluster_mapping,
)
clfmapping = clfmapping.fit(model2d)

clfnomapping = utils.WeightedGaussianMixture(
    mesh=mesh,
    n_components=3,
    covariance_type="full",
    tol=1e-8,
    reg_covar=1e-3,
    max_iter=1000,
    n_init=100,
    init_params="kmeans",
    random_state=None,
    warm_start=False,
    verbose=0,
    verbose_interval=10,
)
clfnomapping = clfnomapping.fit(model2d)

wires = maps.Wires(("m1", mesh.nC), ("m2", mesh.nC))

relatrive_error = 0.01
noise_floor = 0.0

prob1 = simulation.LinearSimulation(mesh, G=G, model_map=wires.m1)
survey1 = prob1.make_synthetic_data(
    m, relative_error=relatrive_error, noise_floor=noise_floor, add_noise=True
)

prob2 = simulation.LinearSimulation(mesh, G=G, model_map=wires.m2)
survey2 = prob2.make_synthetic_data(
    m, relative_error=relatrive_error, noise_floor=noise_floor, add_noise=True
)


dmis1 = data_misfit.L2DataMisfit(simulation=prob1, data=survey1)
dmis2 = data_misfit.L2DataMisfit(simulation=prob2, data=survey2)
dmis = dmis1 + dmis2
minit = np.zeros_like(m)

# Distance weighting
wr1 = np.sum(prob1.G**2.0, axis=0) ** 0.5 / mesh.cell_volumes
wr1 = wr1 / np.max(wr1)
wr2 = np.sum(prob2.G**2.0, axis=0) ** 0.5 / mesh.cell_volumes
wr2 = wr2 / np.max(wr2)

reg_simple = regularization.PGI(
    mesh=mesh,
    gmmref=clfmapping,
    gmm=clfmapping,
    approx_gradient=True,
    wiresmap=wires,
    non_linear_relationships=True,
    weights_list=[wr1, wr2],
)

opt = optimization.ProjectedGNCG(
    maxIter=50,
    tolX=1e-6,
    cg_maxiter=100,
    cg_rtol=1e-3,
    lower=-10,
    upper=10,
)

invProb = inverse_problem.BaseInvProblem(dmis, reg_simple, opt)

# directives
scales = directives.ScalingMultipleDataMisfits_ByEig(
    chi0_ratio=np.r_[1.0, 1.0], verbose=True, n_pw_iter=10
)
scaling_schedule = directives.JointScalingSchedule(verbose=True)
alpha0_ratio = np.r_[1e6, 1e4, 1, 1]
alphas = directives.AlphasSmoothEstimate_ByEig(
    alpha0_ratio=alpha0_ratio, n_pw_iter=10, verbose=True
)
beta = directives.BetaEstimate_ByEig(beta0_ratio=1e-5, n_pw_iter=10)
betaIt = directives.PGI_BetaAlphaSchedule(
    verbose=True,
    coolingFactor=2.0,
    progress=0.2,
)
targets = directives.MultiTargetMisfits(verbose=True)
petrodir = directives.PGI_UpdateParameters(update_gmm=False)

# Setup Inversion
inv = inversion.BaseInversion(
    invProb,
    directiveList=[alphas, scales, beta, petrodir, targets, betaIt, scaling_schedule],
)

mcluster_map = inv.run(minit)

# Inversion with no nonlinear mapping
reg_simple_no_map = regularization.PGI(
    mesh=mesh,
    gmmref=clfnomapping,
    gmm=clfnomapping,
    approx_gradient=True,
    wiresmap=wires,
    non_linear_relationships=False,
    weights_list=[wr1, wr2],
)

opt = optimization.ProjectedGNCG(
    maxIter=50,
    tolX=1e-6,
    cg_maxiter=100,
    cg_rtol=1e-3,
    lower=-10,
    upper=10,
)

invProb = inverse_problem.BaseInvProblem(dmis, reg_simple_no_map, opt)

# directives
scales = directives.ScalingMultipleDataMisfits_ByEig(
    chi0_ratio=np.r_[1.0, 1.0], verbose=True, n_pw_iter=10
)
scaling_schedule = directives.JointScalingSchedule(verbose=True)
alpha0_ratio = np.r_[100.0 * np.ones(2), 1, 1]
alphas = directives.AlphasSmoothEstimate_ByEig(
    alpha0_ratio=alpha0_ratio, n_pw_iter=10, verbose=True
)
beta = directives.BetaEstimate_ByEig(beta0_ratio=1e-5, n_pw_iter=10)
betaIt = directives.PGI_BetaAlphaSchedule(
    verbose=True,
    coolingFactor=2.0,
    progress=0.2,
)
targets = directives.MultiTargetMisfits(
    chiSmall=1.0, TriggerSmall=True, TriggerTheta=False, verbose=True
)
petrodir = directives.PGI_UpdateParameters(update_gmm=False)

# Setup Inversion
inv = inversion.BaseInversion(
    invProb,
    directiveList=[alphas, scales, beta, petrodir, targets, betaIt, scaling_schedule],
)

mcluster_no_map = inv.run(minit)

# WeightedLeastSquares Inversion

reg1 = regularization.WeightedLeastSquares(
    mesh, alpha_s=1.0, alpha_x=1.0, mapping=wires.m1, weights={"cell_weights": wr1}
)

reg2 = regularization.WeightedLeastSquares(
    mesh, alpha_s=1.0, alpha_x=1.0, mapping=wires.m2, weights={"cell_weights": wr2}
)

reg = reg1 + reg2

opt = optimization.ProjectedGNCG(
    maxIter=50,
    tolX=1e-6,
    cg_maxiter=100,
    cg_rtol=1e-3,
    lower=-10,
    upper=10,
)

invProb = inverse_problem.BaseInvProblem(dmis, reg, opt)

# directives
alpha0_ratio = np.r_[1, 1, 1, 1]
alphas = directives.AlphasSmoothEstimate_ByEig(
    alpha0_ratio=alpha0_ratio, n_pw_iter=10, verbose=True
)
scales = directives.ScalingMultipleDataMisfits_ByEig(
    chi0_ratio=np.r_[1.0, 1.0], verbose=True, n_pw_iter=10
)
scaling_schedule = directives.JointScalingSchedule(verbose=True)
beta = directives.BetaEstimate_ByEig(beta0_ratio=1e-5, n_pw_iter=10)
beta_schedule = directives.BetaSchedule(coolingFactor=5.0, coolingRate=1)
targets = directives.MultiTargetMisfits(
    TriggerSmall=False,
    verbose=True,
)

# Setup Inversion
inv = inversion.BaseInversion(
    invProb,
    directiveList=[alphas, scales, beta, targets, beta_schedule, scaling_schedule],
)

mtik = inv.run(minit)


# Final Plot
fig, axes = plt.subplots(3, 4, figsize=(25, 15))
axes = axes.reshape(12)
left, width = 0.25, 0.5
bottom, height = 0.25, 0.5
right = left + width
top = bottom + height

axes[0].set_axis_off()
axes[0].text(
    0.5 * (left + right),
    0.5 * (bottom + top),
    ("Using true nonlinear\npetrophysical relationships"),
    horizontalalignment="center",
    verticalalignment="center",
    fontsize=20,
    color="black",
    transform=axes[0].transAxes,
)

axes[1].plot(mesh.cell_centers_x, wires.m1 * mcluster_map, "b.-", ms=5, marker="v")
axes[1].plot(mesh.cell_centers_x, wires.m1 * m, "k--")
axes[1].set_title("Problem 1")
axes[1].legend(["Recovered Model", "True Model"], loc=1)
axes[1].set_xlabel("X")
axes[1].set_ylabel("Property 1")

axes[2].plot(mesh.cell_centers_x, wires.m2 * mcluster_map, "r.-", ms=5, marker="v")
axes[2].plot(mesh.cell_centers_x, wires.m2 * m, "k--")
axes[2].set_title("Problem 2")
axes[2].legend(["Recovered Model", "True Model"], loc=1)
axes[2].set_xlabel("X")
axes[2].set_ylabel("Property 2")

x, y = np.mgrid[-1:1:0.01, -4:2:0.01]
pos = np.empty(x.shape + (2,))
pos[:, :, 0] = x
pos[:, :, 1] = y
CS = axes[3].contour(
    x,
    y,
    np.exp(clfmapping.score_samples(pos.reshape(-1, 2)).reshape(x.shape)),
    100,
    alpha=0.25,
    cmap="viridis",
)
cs_proxy = mlines.Line2D([], [], label="True Petrophysical Distribution")

ps = axes[3].scatter(
    wires.m1 * mcluster_map,
    wires.m2 * mcluster_map,
    marker="v",
    label="Recovered model crossplot",
)
axes[3].set_title("Petrophysical Distribution")
axes[3].legend(handles=[cs_proxy, ps])
axes[3].set_xlabel("Property 1")
axes[3].set_ylabel("Property 2")

axes[4].set_axis_off()
axes[4].text(
    0.5 * (left + right),
    0.5 * (bottom + top),
    ("Using a pure\nGaussian distribution"),
    horizontalalignment="center",
    verticalalignment="center",
    fontsize=20,
    color="black",
    transform=axes[4].transAxes,
)

axes[5].plot(mesh.cell_centers_x, wires.m1 * mcluster_no_map, "b.-", ms=5, marker="v")
axes[5].plot(mesh.cell_centers_x, wires.m1 * m, "k--")
axes[5].set_title("Problem 1")
axes[5].legend(["Recovered Model", "True Model"], loc=1)
axes[5].set_xlabel("X")
axes[5].set_ylabel("Property 1")

axes[6].plot(mesh.cell_centers_x, wires.m2 * mcluster_no_map, "r.-", ms=5, marker="v")
axes[6].plot(mesh.cell_centers_x, wires.m2 * m, "k--")
axes[6].set_title("Problem 2")
axes[6].legend(["Recovered Model", "True Model"], loc=1)
axes[6].set_xlabel("X")
axes[6].set_ylabel("Property 2")

CSF = axes[7].contour(
    x,
    y,
    np.exp(clfmapping.score_samples(pos.reshape(-1, 2)).reshape(x.shape)),
    100,
    alpha=0.5,
    label="True Petro. Distribution",
)
CS = axes[7].contour(
    x,
    y,
    np.exp(clfnomapping.score_samples(pos.reshape(-1, 2)).reshape(x.shape)),
    500,
    cmap="viridis",
    linestyles="--",
)
axes[7].scatter(
    wires.m1 * mcluster_no_map,
    wires.m2 * mcluster_no_map,
    marker="v",
    label="Recovered model crossplot",
)
cs_modeled_proxy = mlines.Line2D(
    [], [], linestyle="--", label="Modeled Petro. Distribution"
)

axes[7].set_title("Petrophysical Distribution")
axes[7].legend(handles=[cs_proxy, cs_modeled_proxy, ps])
axes[7].set_xlabel("Property 1")
axes[7].set_ylabel("Property 2")

# Tikonov

axes[8].set_axis_off()
axes[8].text(
    0.5 * (left + right),
    0.5 * (bottom + top),
    ("Least-Squares\n~Using a single cluster"),
    horizontalalignment="center",
    verticalalignment="center",
    fontsize=20,
    color="black",
    transform=axes[8].transAxes,
)

axes[9].plot(mesh.cell_centers_x, wires.m1 * mtik, "b.-", ms=5, marker="v")
axes[9].plot(mesh.cell_centers_x, wires.m1 * m, "k--")
axes[9].set_title("Problem 1")
axes[9].legend(["Recovered Model", "True Model"], loc=1)
axes[9].set_xlabel("X")
axes[9].set_ylabel("Property 1")

axes[10].plot(mesh.cell_centers_x, wires.m2 * mtik, "r.-", ms=5, marker="v")
axes[10].plot(mesh.cell_centers_x, wires.m2 * m, "k--")
axes[10].set_title("Problem 2")
axes[10].legend(["Recovered Model", "True Model"], loc=1)
axes[10].set_xlabel("X")
axes[10].set_ylabel("Property 2")

CS = axes[11].contour(
    x,
    y,
    np.exp(clfmapping.score_samples(pos.reshape(-1, 2)).reshape(x.shape)),
    100,
    alpha=0.25,
    cmap="viridis",
)
axes[11].scatter(wires.m1 * mtik, wires.m2 * mtik, marker="v")
axes[11].set_title("Petro Distribution")
axes[11].legend(handles=[cs_proxy, ps])
axes[11].set_xlabel("Property 1")
axes[11].set_ylabel("Property 2")
plt.subplots_adjust(wspace=0.3, hspace=0.3, top=0.85)
plt.show()

Total running time of the script: (0 minutes 22.213 seconds)

Estimated memory usage: 321 MB

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