def test_local_regressor_cm_intersite(monkeypatch): """Test local regressor process for intersite processing""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np # patch out the writeTF function monkeypatch.setattr(LocalRegressor, "writeResult", mock_local_regressor_writeResult) selector = mock_window_selector() regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"], inCross=["Hx", "Hy"]) regressor.setOutput("inter", ["Ex", "Ey"], outCross=["Ex", "Ey"]) regressor.setMethod("cm", intercept=False) regressor.setSmooth("hann", 1) regressor.process() # expected expected_evalfreq = np.array([24, 40]) expected_impedances = [ np.array([[6.0 + 0.0j, 8.0 + 0.0j], [4.0 + 0.0j, 1.0 + 0.0j]]), np.array([[6.0 + 0.0j, 8.0 + 0.0j], [4.0 + 0.0j, 1.0 + 0.0j]]), ] expected_variances = [ np.array([[9.14649740e-29, 5.89343794e-29], [1.42914022e-30, 9.20849678e-31]]), np.array([[1.38145310e-28, 1.84606779e-28], [3.45363276e-29, 4.61516947e-29]]), ] np.testing.assert_equal(regressor.evalFreq, expected_evalfreq) np.testing.assert_almost_equal(regressor.parameters[0], expected_impedances[0]) np.testing.assert_almost_equal(regressor.parameters[1], expected_impedances[1]) np.testing.assert_almost_equal(regressor.variances[0], expected_variances[0]) np.testing.assert_almost_equal(regressor.variances[1], expected_variances[1])
def test_local_regressor_cm_tipper(monkeypatch): """Test local regressor process for different combination of inputs and ouputs (tipper)""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np # patch out the writeTF function monkeypatch.setattr(LocalRegressor, "writeResult", mock_local_regressor_writeResult) selector = mock_window_selector() regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"], inCross=["Hx", "Hy"]) regressor.setOutput("local", ["Hz"], outCross=None) regressor.setMethod("cm", intercept=False) regressor.setSmooth("hann", 1) regressor.process() # expected expected_evalfreq = np.array([24, 40]) expected_impedances = [ np.array([[2.0 + 0.0j, 8.0 + 0.0j]]), np.array([[2.0 + 0.0j, 8.0 + 0.0j]]), ] expected_variances = [ np.array([[3.41232327e-27, 2.19175834e-27]]), np.array([[5.18941937e-29, 6.91709078e-29]]), ] np.testing.assert_equal(regressor.evalFreq, expected_evalfreq) np.testing.assert_almost_equal(regressor.parameters[0], expected_impedances[0]) np.testing.assert_almost_equal(regressor.parameters[1], expected_impedances[1]) np.testing.assert_almost_equal(regressor.variances[0], expected_variances[0]) np.testing.assert_almost_equal(regressor.variances[1], expected_variances[1])
def test_local_regressor_cm(monkeypatch): """Test local regressor process using standard parameters""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np # patch out the writeTF function monkeypatch.setattr(LocalRegressor, "writeResult", mock_local_regressor_writeResult) selector = mock_window_selector() regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"]) regressor.setOutput("local", ["Ex", "Ey"]) regressor.setMethod("cm", intercept=False) regressor.setSmooth("hann", 1) assert regressor.inCross == ["Hx", "Hy"] assert regressor.outCross == ["Ex", "Ey"] regressor.process() # expected expected_evalfreq = np.array([24, 40]) expected_impedances = [ np.array([[3 + 0.0j, 5 + 0.0j], [2 + 0.0j, 7 + 0.0j]]), np.array([[3 + 0.0j, 5 + 0.0j], [2 + 0.0j, 7 + 0.0j]]), ] expected_variances = [ np.array([[2.08722609e-28, 1.34197332e-28], [2.31914010e-29, 1.49108146e-29]]), np.array([[4.59299270e-29, 6.12727229e-29], [1.34977745e-28, 1.80066778e-28]]), ] np.testing.assert_equal(regressor.evalFreq, expected_evalfreq) np.testing.assert_almost_equal(regressor.parameters[0], expected_impedances[0]) np.testing.assert_almost_equal(regressor.parameters[1], expected_impedances[1]) np.testing.assert_almost_equal(regressor.variances[0], expected_variances[0]) np.testing.assert_almost_equal(regressor.variances[1], expected_variances[1])
def test_local_regressor_mm_intercept(monkeypatch): """Test local regressor process with addition of intercept term""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np # patch out the writeTF function monkeypatch.setattr(LocalRegressor, "writeResult", mock_local_regressor_writeResult) selector = mock_window_selector(intercept=True) regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"], inCross=["Hx", "Hy"]) regressor.setOutput("local", ["Ex", "Ey"], outCross=["Ex", "Ey"]) regressor.setMethod("mm", intercept=True) regressor.setSmooth("hann", 1) regressor.process() # expected expected_evalfreq = np.array([24, 40]) expected_impedances = [ np.array( [ [3.0 + 0.0j, 5.0 + 0.0j, 5.0 + 0.0j], [2.0 + 0.0j, 7.0 + 0.0j, -9.0 + 0.0j], ] ), np.array( [ [3.0 + 0.0j, 5.0 + 0.0j, 5.0 + 0.0j], [2.0 + 0.0j, 7.0 + 0.0j, -9.0 + 0.0j], ] ), ] expected_variances = [ np.array( [ [1.21088688e-23, 7.25740911e-24, 3.34802360e-23], [3.95687739e-23, 2.37154094e-23, 1.09405091e-22], ] ), np.array( [ [2.48945809e-27, 3.32569517e-27, 2.95106525e-26], [1.00812766e-27, 1.34676912e-27, 1.19505948e-26], ] ), ] print(regressor.parameters) print(regressor.variances) np.testing.assert_equal(regressor.evalFreq, expected_evalfreq) np.testing.assert_almost_equal(regressor.parameters[0], expected_impedances[0]) np.testing.assert_almost_equal(regressor.parameters[1], expected_impedances[1]) np.testing.assert_almost_equal(regressor.variances[0], expected_variances[0]) np.testing.assert_almost_equal(regressor.variances[1], expected_variances[1])
def test_local_regressor_getSmoothLen(monkeypatch): """Test local regressor process""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np selector = mock_window_selector() from mocks import mock_window_selector regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"]) regressor.setOutput("local", ["Ex", "Ey"]) regressor.setSmooth("hann", 1) assert regressor.smoothLen == 1 regressor.setSmooth("hann", 12) assert regressor.getSmoothLen(65) == 13
def test_local_regressor_setInput(): """Test local regressor setInput""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector selector = mock_window_selector() regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"]) assert regressor.inSite == "local" assert regressor.inChannels == ["Hx", "Hy"] assert regressor.inSize == 2 assert regressor.inCross == ["Hx", "Hy"] regressor.setInput("inter", ["Ex", "Hy", "Hx"], inCross=["Ex", "Hy"]) assert regressor.inSite == "inter" assert regressor.inChannels == ["Ex", "Hy", "Hx"] assert regressor.inSize == 3 assert regressor.inCross == ["Ex", "Hy"]
def test_local_regressor_cm_noise(monkeypatch): """Test local regressor process with addition of noise""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np # patch out the writeTF function monkeypatch.setattr(LocalRegressor, "writeResult", mock_local_regressor_writeResult) selector = mock_window_selector(localnoise=True) regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"], inCross=["Hx", "Hy"]) regressor.setOutput("local", ["Ex", "Ey"], outCross=["Ex", "Ey"]) regressor.setMethod("cm", intercept=False) regressor.setSmooth("hann", 1) regressor.process() # expected expected_evalfreq = np.array([24, 40]) expected_impedances = [ np.array( [ [4.0781224 + 0.0j, 3.567369 + 0.0j], [1.85376383 + 0.0j, 6.98454182 + 0.0j], ] ), np.array( [ [3.79687613 + 0.0j, 3.83744749 + 0.0j], [4.64021435 + 0.0j, 3.41744201 + 0.0j], ] ), ] expected_variances = [ np.array([[0.04024341, 0.02563386], [0.0075834, 0.0048304]]), np.array([[0.00760705, 0.01007484], [2.48409977, 3.28996458]]), ] np.testing.assert_equal(regressor.evalFreq, expected_evalfreq) np.testing.assert_almost_equal(regressor.parameters[0], expected_impedances[0]) np.testing.assert_almost_equal(regressor.parameters[1], expected_impedances[1]) np.testing.assert_almost_equal(regressor.variances[0], expected_variances[0]) np.testing.assert_almost_equal(regressor.variances[1], expected_variances[1])
def test_local_regressor_mm_noise(monkeypatch): """Test local regressor process with addition of noise""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np # patch out the writeTF function monkeypatch.setattr(LocalRegressor, "writeResult", mock_local_regressor_writeResult) selector = mock_window_selector(localnoise=True) regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"], inCross=["Hx", "Hy"]) regressor.setOutput("local", ["Ex", "Ey"], outCross=["Ex", "Ey"]) regressor.setMethod("mm", intercept=False) regressor.setSmooth("hann", 1) regressor.process() # expected expected_evalfreq = np.array([24, 40]) expected_impedances = [ np.array( [ [4.30696333 + 0.0j, 3.38002297 + 0.0j], [2.5217861 + 0.0j, 6.44672487 + 0.0j], ] ), np.array( [ [4.23654503 + 0.0j, 3.33331255 + 0.0j], [-8.19366818 + 0.0j, 18.06316472 + 0.0j], ] ), ] expected_variances = [ np.array([[1.72623564e-04, 1.09956096e-04], [1.55939006e-01, 9.93285271e-02]]), np.array([[0.00691985, 0.00916471], [0.03841539, 0.0508777]]), ] np.testing.assert_equal(regressor.evalFreq, expected_evalfreq) np.testing.assert_almost_equal(regressor.parameters[0], expected_impedances[0]) np.testing.assert_almost_equal(regressor.parameters[1], expected_impedances[1]) np.testing.assert_almost_equal(regressor.variances[0], expected_variances[0]) np.testing.assert_almost_equal(regressor.variances[1], expected_variances[1])
def test_local_regressor_ols_noise(monkeypatch): """Test local regressor process with addition of noise""" from resistics.regression.local import LocalRegressor from mocks import mock_window_selector import numpy as np # patch out the writeTF function monkeypatch.setattr(LocalRegressor, "writeResult", mock_local_regressor_writeResult) selector = mock_window_selector(localnoise=True) regressor = LocalRegressor(selector, "test") regressor.setInput("local", ["Hx", "Hy"], inCross=["Hx", "Hy"]) regressor.setOutput("local", ["Ex", "Ey"], outCross=["Ex", "Ey"]) regressor.setMethod("ols", intercept=False) regressor.setSmooth("hann", 1) regressor.process() # expected expected_evalfreq = np.array([24, 40]) expected_impedances = [ np.array( [ [4.28572653 + 0.0j, 3.39668529 + 0.0j], [0.95079059 + 0.0j, 7.70464292 + 0.0j], ] ), np.array( [ [4.16918831 + 0.0j, 3.4135369 + 0.0j], [-3.12128344 + 0.0j, 12.22876995 + 0.0j], ] ), ] expected_variances = [ np.array([[0.00041475, 0.00026418], [0.1143862, 0.07286062]]), np.array([[0.00432538, 0.00572858], [2.26643718, 3.00169024]]), ] np.testing.assert_equal(regressor.evalFreq, expected_evalfreq) np.testing.assert_almost_equal(regressor.parameters[0], expected_impedances[0]) np.testing.assert_almost_equal(regressor.parameters[1], expected_impedances[1]) np.testing.assert_almost_equal(regressor.variances[0], expected_variances[0]) np.testing.assert_almost_equal(regressor.variances[1], expected_variances[1])