Example #1
0
def run(plotIt=True):

    cs, ncx, ncz, npad = 5.0, 25, 15, 15
    hx = [(cs, ncx), (cs, npad, 1.3)]
    hz = [(cs, npad, -1.3), (cs, ncz), (cs, npad, 1.3)]
    mesh = discretize.CylMesh([hx, 1, hz], "00C")

    active = mesh.vectorCCz < 0.0
    layer = (mesh.vectorCCz < 0.0) & (mesh.vectorCCz >= -100.0)
    actMap = maps.InjectActiveCells(mesh, active, np.log(1e-8), nC=mesh.nCz)
    mapping = maps.ExpMap(mesh) * maps.SurjectVertical1D(mesh) * actMap
    sig_half = 2e-3
    sig_air = 1e-8
    sig_layer = 1e-3
    sigma = np.ones(mesh.nCz) * sig_air
    sigma[active] = sig_half
    sigma[layer] = sig_layer
    mtrue = np.log(sigma[active])

    rxOffset = 1e-3
    rx = time_domain.Rx.PointMagneticFluxTimeDerivative(
        np.array([[rxOffset, 0.0, 30]]), np.logspace(-5, -3, 31), "z"
    )
    src = time_domain.Src.MagDipole([rx], location=np.array([0.0, 0.0, 80]))
    survey = time_domain.Survey([src])
    time_steps = [(1e-06, 20), (1e-05, 20), (0.0001, 20)]
    simulation = time_domain.Simulation3DElectricField(
        mesh, sigmaMap=mapping, survey=survey, time_steps=time_steps
    )
    # d_true = simulation.dpred(mtrue)

    # create observed data
    rel_err = 0.05
    data = simulation.make_synthetic_data(mtrue, relative_error=rel_err)

    dmisfit = data_misfit.L2DataMisfit(simulation=simulation, data=data)
    regMesh = discretize.TensorMesh([mesh.hz[mapping.maps[-1].indActive]])
    reg = regularization.Tikhonov(regMesh, alpha_s=1e-2, alpha_x=1.0)
    opt = optimization.InexactGaussNewton(maxIter=5, LSshorten=0.5)
    invProb = inverse_problem.BaseInvProblem(dmisfit, reg, opt)

    # Create an inversion object
    beta = directives.BetaSchedule(coolingFactor=5, coolingRate=2)
    betaest = directives.BetaEstimate_ByEig(beta0_ratio=1e0)
    inv = inversion.BaseInversion(invProb, directiveList=[beta, betaest])
    m0 = np.log(np.ones(mtrue.size) * sig_half)
    simulation.counter = opt.counter = utils.Counter()
    opt.remember("xc")

    mopt = inv.run(m0)

    if plotIt:
        fig, ax = plt.subplots(1, 2, figsize=(10, 6))
        ax[0].loglog(rx.times, -invProb.dpred, "b.-")
        ax[0].loglog(rx.times, -data.dobs, "r.-")
        ax[0].legend(("Noisefree", "$d^{obs}$"), fontsize=16)
        ax[0].set_xlabel("Time (s)", fontsize=14)
        ax[0].set_ylabel("$B_z$ (T)", fontsize=16)
        ax[0].set_xlabel("Time (s)", fontsize=14)
        ax[0].grid(color="k", alpha=0.5, linestyle="dashed", linewidth=0.5)

        plt.semilogx(sigma[active], mesh.vectorCCz[active])
        plt.semilogx(np.exp(mopt), mesh.vectorCCz[active])
        ax[1].set_ylim(-600, 0)
        ax[1].set_xlim(1e-4, 1e-2)
        ax[1].set_xlabel("Conductivity (S/m)", fontsize=14)
        ax[1].set_ylabel("Depth (m)", fontsize=14)
        ax[1].grid(color="k", alpha=0.5, linestyle="dashed", linewidth=0.5)
        plt.legend(["$\sigma_{true}$", "$\sigma_{pred}$"])
Example #2
0
# Set up the source list
src_list = [
    TDEM.Src.LineCurrent(
        receiver_list=rec_list,
        location=np.array([[*src[::2]], [*src[1::2]]]),
    ),
]

# Create `Survey`
survey = TDEM.Survey(src_list)

# Define the `Simulation`
prob = TDEM.Simulation3DElectricField(
    mesh,
    survey=survey,
    rhoMap=maps.IdentityMap(mesh),
    solver=Solver,
    time_steps=time_steps,
)

###############################################################################
# Compute
# """""""

spg_bg = prob.dpred(mres_bg)
spg_tg = prob.dpred(mres_tg)

###############################################################################
# (F) Plots
# ---------
def run(plotIt=True, saveFig=False, cleanup=True):
    """
    Run 1D inversions for a single sounding of the RESOLVE and SkyTEM
    bookpurnong data

    :param bool plotIt: show the plots?
    :param bool saveFig: save the figure
    :param bool cleanup: remove the downloaded results
    """
    downloads, directory = download_and_unzip_data()

    resolve = h5py.File(os.path.sep.join([directory, "booky_resolve.hdf5"]),
                        "r")
    skytem = h5py.File(os.path.sep.join([directory, "booky_skytem.hdf5"]), "r")
    river_path = resolve["river_path"].value

    # Choose a sounding location to invert
    xloc, yloc = 462100.0, 6196500.0
    rxind_skytem = np.argmin(
        abs(skytem["xy"][:, 0] - xloc) + abs(skytem["xy"][:, 1] - yloc))
    rxind_resolve = np.argmin(
        abs(resolve["xy"][:, 0] - xloc) + abs(resolve["xy"][:, 1] - yloc))

    # Plot both resolve and skytem data on 2D plane
    fig = plt.figure(figsize=(13, 6))
    title = ["RESOLVE In-phase 400 Hz", "SkyTEM High moment 156 $\mu$s"]
    ax1 = plt.subplot(121)
    ax2 = plt.subplot(122)
    axs = [ax1, ax2]
    out_re = utils.plot2Ddata(
        resolve["xy"],
        resolve["data"][:, 0],
        ncontour=100,
        contourOpts={"cmap": "viridis"},
        ax=ax1,
    )
    vmin, vmax = out_re[0].get_clim()
    cb_re = plt.colorbar(out_re[0],
                         ticks=np.linspace(vmin, vmax, 3),
                         ax=ax1,
                         fraction=0.046,
                         pad=0.04)
    temp_skytem = skytem["data"][:, 5].copy()
    temp_skytem[skytem["data"][:, 5] > 7e-10] = 7e-10
    out_sky = utils.plot2Ddata(
        skytem["xy"][:, :2],
        temp_skytem,
        ncontour=100,
        contourOpts={
            "cmap": "viridis",
            "vmax": 7e-10
        },
        ax=ax2,
    )
    vmin, vmax = out_sky[0].get_clim()
    cb_sky = plt.colorbar(
        out_sky[0],
        ticks=np.linspace(vmin, vmax * 0.99, 3),
        ax=ax2,
        format="%.1e",
        fraction=0.046,
        pad=0.04,
    )
    cb_re.set_label("Bz (ppm)")
    cb_sky.set_label("dB$_z$ / dt (V/A-m$^4$)")

    for i, ax in enumerate(axs):
        xticks = [460000, 463000]
        yticks = [6195000, 6198000, 6201000]
        ax.set_xticks(xticks)
        ax.set_yticks(yticks)
        ax.plot(xloc, yloc, "wo")
        ax.plot(river_path[:, 0], river_path[:, 1], "k", lw=0.5)

        ax.set_aspect("equal")
        if i == 1:
            ax.plot(skytem["xy"][:, 0],
                    skytem["xy"][:, 1],
                    "k.",
                    alpha=0.02,
                    ms=1)
            ax.set_yticklabels([str(" ") for f in yticks])
        else:
            ax.plot(resolve["xy"][:, 0],
                    resolve["xy"][:, 1],
                    "k.",
                    alpha=0.02,
                    ms=1)
            ax.set_yticklabels([str(f) for f in yticks])
            ax.set_ylabel("Northing (m)")
        ax.set_xlabel("Easting (m)")
        ax.set_title(title[i])
        ax.axis("equal")
    # plt.tight_layout()

    if saveFig is True:
        fig.savefig("resolve_skytem_data.png", dpi=600)

    # ------------------ Mesh ------------------ #
    # Step1: Set 2D cylindrical mesh
    cs, ncx, ncz, npad = 1.0, 10.0, 10.0, 20
    hx = [(cs, ncx), (cs, npad, 1.3)]
    npad = 12
    temp = np.logspace(np.log10(1.0), np.log10(12.0), 19)
    temp_pad = temp[-1] * 1.3**np.arange(npad)
    hz = np.r_[temp_pad[::-1], temp[::-1], temp, temp_pad]
    mesh = discretize.CylMesh([hx, 1, hz], "00C")
    active = mesh.vectorCCz < 0.0

    # Step2: Set a SurjectVertical1D mapping
    # Note: this sets our inversion model as 1D log conductivity
    # below subsurface

    active = mesh.vectorCCz < 0.0
    actMap = maps.InjectActiveCells(mesh, active, np.log(1e-8), nC=mesh.nCz)
    mapping = maps.ExpMap(mesh) * maps.SurjectVertical1D(mesh) * actMap
    sig_half = 1e-1
    sig_air = 1e-8
    sigma = np.ones(mesh.nCz) * sig_air
    sigma[active] = sig_half

    # Initial and reference model
    m0 = np.log(sigma[active])

    # ------------------ RESOLVE Forward Simulation ------------------ #
    # Step3: Invert Resolve data

    # Bird height from the surface
    b_height_resolve = resolve["src_elevation"].value
    src_height_resolve = b_height_resolve[rxind_resolve]

    # Set Rx (In-phase and Quadrature)
    rxOffset = 7.86
    bzr = FDEM.Rx.PointMagneticFluxDensitySecondary(
        np.array([[rxOffset, 0.0, src_height_resolve]]),
        orientation="z",
        component="real",
    )

    bzi = FDEM.Rx.PointMagneticFluxDensity(
        np.array([[rxOffset, 0.0, src_height_resolve]]),
        orientation="z",
        component="imag",
    )

    # Set Source (In-phase and Quadrature)
    frequency_cp = resolve["frequency_cp"].value
    freqs = frequency_cp.copy()
    srcLoc = np.array([0.0, 0.0, src_height_resolve])
    srcList = [
        FDEM.Src.MagDipole([bzr, bzi], freq, srcLoc, orientation="Z")
        for freq in freqs
    ]

    # Set FDEM survey (In-phase and Quadrature)
    survey = FDEM.Survey(srcList)
    prb = FDEM.Simulation3DMagneticFluxDensity(mesh,
                                               sigmaMap=mapping,
                                               Solver=Solver)
    prb.survey = survey

    # ------------------ RESOLVE Inversion ------------------ #

    # Primary field
    bp = -mu_0 / (4 * np.pi * rxOffset**3)

    # Observed data
    cpi_inds = [0, 2, 6, 8, 10]
    cpq_inds = [1, 3, 7, 9, 11]
    dobs_re = (np.c_[resolve["data"][rxind_resolve, :][cpi_inds],
                     resolve["data"][rxind_resolve, :][cpq_inds], ].flatten() *
               bp * 1e-6)

    # Uncertainty
    relative = np.repeat(np.r_[np.ones(3) * 0.1, np.ones(2) * 0.15], 2)
    floor = 20 * abs(bp) * 1e-6
    std = abs(dobs_re) * relative + floor

    # Data Misfit
    data_resolve = data.Data(dobs=dobs_re,
                             survey=survey,
                             standard_deviation=std)
    dmisfit = data_misfit.L2DataMisfit(simulation=prb, data=data_resolve)

    # Regularization
    regMesh = discretize.TensorMesh([mesh.hz[mapping.maps[-1].indActive]])
    reg = regularization.Simple(regMesh, mapping=maps.IdentityMap(regMesh))

    # Optimization
    opt = optimization.InexactGaussNewton(maxIter=5)

    # statement of the inverse problem
    invProb = inverse_problem.BaseInvProblem(dmisfit, reg, opt)

    # Inversion directives and parameters
    target = directives.TargetMisfit()  # stop when we hit target misfit
    invProb.beta = 2.0
    inv = inversion.BaseInversion(invProb, directiveList=[target])
    reg.alpha_s = 1e-3
    reg.alpha_x = 1.0
    reg.mref = m0.copy()
    opt.LSshorten = 0.5
    opt.remember("xc")
    # run the inversion
    mopt_re = inv.run(m0)
    dpred_re = invProb.dpred

    # ------------------ SkyTEM Forward Simulation ------------------ #
    # Step4: Invert SkyTEM data

    # Bird height from the surface
    b_height_skytem = skytem["src_elevation"].value
    src_height = b_height_skytem[rxind_skytem]
    srcLoc = np.array([0.0, 0.0, src_height])

    # Radius of the source loop
    area = skytem["area"].value
    radius = np.sqrt(area / np.pi)
    rxLoc = np.array([[radius, 0.0, src_height]])

    # Parameters for current waveform
    t0 = skytem["t0"].value
    times = skytem["times"].value
    waveform_skytem = skytem["waveform"].value
    offTime = t0
    times_off = times - t0

    # Note: we are Using theoretical VTEM waveform,
    # but effectively fits SkyTEM waveform
    peakTime = 1.0000000e-02
    a = 3.0

    dbdt_z = TDEM.Rx.PointMagneticFluxTimeDerivative(
        locations=rxLoc, times=times_off[:-3] + offTime,
        orientation="z")  # vertical db_dt

    rxList = [dbdt_z]  # list of receivers
    srcList = [
        TDEM.Src.CircularLoop(
            rxList,
            loc=srcLoc,
            radius=radius,
            orientation="z",
            waveform=TDEM.Src.VTEMWaveform(offTime=offTime,
                                           peakTime=peakTime,
                                           a=3.0),
        )
    ]
    # solve the problem at these times
    timeSteps = [
        (peakTime / 5, 5),
        ((offTime - peakTime) / 5, 5),
        (1e-5, 5),
        (5e-5, 5),
        (1e-4, 10),
        (5e-4, 15),
    ]
    prob = TDEM.Simulation3DElectricField(mesh,
                                          time_steps=timeSteps,
                                          sigmaMap=mapping,
                                          Solver=Solver)
    survey = TDEM.Survey(srcList)
    prob.survey = survey

    src = srcList[0]
    rx = src.receiver_list[0]
    wave = []
    for time in prob.times:
        wave.append(src.waveform.eval(time))
    wave = np.hstack(wave)
    out = prob.dpred(m0)

    # plot the waveform
    fig = plt.figure(figsize=(5, 3))
    times_off = times - t0
    plt.plot(waveform_skytem[:, 0], waveform_skytem[:, 1], "k.")
    plt.plot(prob.times, wave, "k-", lw=2)
    plt.legend(("SkyTEM waveform", "Waveform (fit)"), fontsize=10)
    for t in rx.times:
        plt.plot(np.ones(2) * t, np.r_[-0.03, 0.03], "k-")
    plt.ylim(-0.1, 1.1)
    plt.grid(True)
    plt.xlabel("Time (s)")
    plt.ylabel("Normalized current")

    if saveFig:
        fig.savefig("skytem_waveform", dpi=200)

    # Observed data
    dobs_sky = skytem["data"][rxind_skytem, :-3] * area

    # ------------------ SkyTEM Inversion ------------------ #
    # Uncertainty
    relative = 0.12
    floor = 7.5e-12
    std = abs(dobs_sky) * relative + floor

    # Data Misfit
    data_sky = data.Data(dobs=-dobs_sky, survey=survey, standard_deviation=std)
    dmisfit = data_misfit.L2DataMisfit(simulation=prob, data=data_sky)

    # Regularization
    regMesh = discretize.TensorMesh([mesh.hz[mapping.maps[-1].indActive]])
    reg = regularization.Simple(regMesh, mapping=maps.IdentityMap(regMesh))

    # Optimization
    opt = optimization.InexactGaussNewton(maxIter=5)

    # statement of the inverse problem
    invProb = inverse_problem.BaseInvProblem(dmisfit, reg, opt)

    # Directives and Inversion Parameters
    target = directives.TargetMisfit()
    invProb.beta = 20.0
    inv = inversion.BaseInversion(invProb, directiveList=[target])
    reg.alpha_s = 1e-1
    reg.alpha_x = 1.0
    opt.LSshorten = 0.5
    opt.remember("xc")
    reg.mref = mopt_re  # Use RESOLVE model as a reference model

    # run the inversion
    mopt_sky = inv.run(m0)
    dpred_sky = invProb.dpred

    # Plot the figure from the paper
    plt.figure(figsize=(12, 8))

    fs = 13  # fontsize
    matplotlib.rcParams["font.size"] = fs

    ax0 = plt.subplot2grid((2, 2), (0, 0), rowspan=2)
    ax1 = plt.subplot2grid((2, 2), (0, 1))
    ax2 = plt.subplot2grid((2, 2), (1, 1))

    # Recovered Models
    sigma_re = np.repeat(np.exp(mopt_re), 2, axis=0)
    sigma_sky = np.repeat(np.exp(mopt_sky), 2, axis=0)
    z = np.repeat(mesh.vectorCCz[active][1:], 2, axis=0)
    z = np.r_[mesh.vectorCCz[active][0], z, mesh.vectorCCz[active][-1]]

    ax0.semilogx(sigma_re, z, "k", lw=2, label="RESOLVE")
    ax0.semilogx(sigma_sky, z, "b", lw=2, label="SkyTEM")
    ax0.set_ylim(-50, 0)
    # ax0.set_xlim(5e-4, 1e2)
    ax0.grid(True)
    ax0.set_ylabel("Depth (m)")
    ax0.set_xlabel("Conducivity (S/m)")
    ax0.legend(loc=3)
    ax0.set_title("(a) Recovered Models")

    # RESOLVE Data
    ax1.loglog(frequency_cp,
               dobs_re.reshape((5, 2))[:, 0] / bp * 1e6,
               "k-",
               label="Obs (real)")
    ax1.loglog(
        frequency_cp,
        dobs_re.reshape((5, 2))[:, 1] / bp * 1e6,
        "k--",
        label="Obs (imag)",
    )
    ax1.loglog(
        frequency_cp,
        dpred_re.reshape((5, 2))[:, 0] / bp * 1e6,
        "k+",
        ms=10,
        markeredgewidth=2.0,
        label="Pred (real)",
    )
    ax1.loglog(
        frequency_cp,
        dpred_re.reshape((5, 2))[:, 1] / bp * 1e6,
        "ko",
        ms=6,
        markeredgecolor="k",
        markeredgewidth=0.5,
        label="Pred (imag)",
    )
    ax1.set_title("(b) RESOLVE")
    ax1.set_xlabel("Frequency (Hz)")
    ax1.set_ylabel("Bz (ppm)")
    ax1.grid(True)
    ax1.legend(loc=3, fontsize=11)

    # SkyTEM data
    ax2.loglog(times_off[3:] * 1e6, dobs_sky / area, "b-", label="Obs")
    ax2.loglog(
        times_off[3:] * 1e6,
        -dpred_sky / area,
        "bo",
        ms=4,
        markeredgecolor="k",
        markeredgewidth=0.5,
        label="Pred",
    )
    ax2.set_xlim(times_off.min() * 1e6 * 1.2, times_off.max() * 1e6 * 1.1)

    ax2.set_xlabel("Time ($\mu s$)")
    ax2.set_ylabel("dBz / dt (V/A-m$^4$)")
    ax2.set_title("(c) SkyTEM High-moment")
    ax2.grid(True)
    ax2.legend(loc=3)

    a3 = plt.axes([0.86, 0.33, 0.1, 0.09], facecolor=[0.8, 0.8, 0.8, 0.6])
    a3.plot(prob.times * 1e6, wave, "k-")
    a3.plot(rx.times * 1e6,
            np.zeros_like(rx.times),
            "k|",
            markeredgewidth=1,
            markersize=12)
    a3.set_xlim([prob.times.min() * 1e6 * 0.75, prob.times.max() * 1e6 * 1.1])
    a3.set_title("(d) Waveform", fontsize=11)
    a3.set_xticks([prob.times.min() * 1e6, t0 * 1e6, prob.times.max() * 1e6])
    a3.set_yticks([])
    # a3.set_xticklabels(['0', '2e4'])
    a3.set_xticklabels(["-1e4", "0", "1e4"])

    plt.tight_layout()

    if saveFig:
        plt.savefig("booky1D_time_freq.png", dpi=600)

    if plotIt:
        plt.show()

    resolve.close()
    skytem.close()
    if cleanup:
        print(os.path.split(directory)[:-1])
        os.remove(
            os.path.sep.join(directory.split()[:-1] +
                             ["._bookpurnong_inversion"]))
        os.remove(downloads)
        shutil.rmtree(directory)
Example #4
0
# Set up the source list
src_list = [
    TDEM.Src.LineCurrent(
        rxList=rec_list,
        loc=np.array([[*src[::2]], [*src[1::2]]]),
    ),
]

# Create `Survey`
survey = TDEM.Survey(src_list)

# Define the `Simulation`
prob = TDEM.Simulation3DElectricField(
    mesh,
    survey=survey,
    rhoMap=maps.IdentityMap(mesh),
    Solver=pymatsolver.Pardiso,
    timeSteps=time_steps,
)

###############################################################################
# Compute
# """""""

spg_bg = prob.dpred(mres_bg)
spg_tg = prob.dpred(mres_tg)

###############################################################################
# (F) Plots
# ---------