Beispiel #1
0
import openturns as ot
from matplotlib import pyplot as plt
from openturns.viewer import View
covarianceModel = ot.RankMCovarianceModel()
if covarianceModel.getInputDimension() == 1:
    scale = covarianceModel.getScale()[0]
    if covarianceModel.isStationary():
        def f(x):
            return [covarianceModel(x)[0, 0]]
        func = ot.PythonFunction(1,1,f)
        func.setDescription(['$tau$', '$cov$'])
        cov_graph = func.draw(-3.0 * scale, 3.0 * scale, 129)
        fig = plt.figure(figsize=(10, 4))
        plt.suptitle(str(covarianceModel))
        cov_axis = fig.add_subplot(111)
        View(cov_graph, figure=fig, axes=[cov_axis], add_legend=False)
    else:
        def f(x):
            return [covarianceModel([x[0]], [x[1]])[0, 0]]
        func = ot.PythonFunction(2,1,f)
        func.setDescription(['$s$', '$t$', '$cov$'])
        cov_graph = func.draw([-3.0 * scale]*2, [3.0 * scale]*2, [129]*2)
        fig = plt.figure(figsize=(10, 4))
        plt.suptitle(str(covarianceModel))
        cov_axis = fig.add_subplot(111)
        View(cov_graph, figure=fig, axes=[cov_axis], add_legend=False, square_axes=True)
Beispiel #2
0
from openturns.viewer import View
if ot.MaternModel().__class__.__name__ == 'ExponentialModel':
    covarianceModel = ot.ExponentialModel([0.5], [5.0])
elif ot.MaternModel().__class__.__name__ == 'GeneralizedExponential':
    covarianceModel = ot.GeneralizedExponential([2.0], [3.0], 1.5)
elif ot.MaternModel().__class__.__name__ == 'ProductCovarianceModel':
    amplitude = [1.0]
    scale1 = [4.0]
    scale2 = [4.0]
    cov1 = ot.ExponentialModel(scale1, amplitude)
    cov2 = ot.ExponentialModel(scale2, amplitude)
    covarianceModel = ot.ProductCovarianceModel([cov1, cov2])
elif ot.MaternModel().__class__.__name__ == 'RankMCovarianceModel':
    variance = [1.0, 2.0]
    basis = ot.LinearBasisFactory().build()
    covarianceModel = ot.RankMCovarianceModel(variance, basis)
else:
    covarianceModel = ot.MaternModel()
title = str(covarianceModel)[:100]
if covarianceModel.getInputDimension() == 1:
    scale = covarianceModel.getScale()[0]
    if covarianceModel.isStationary():

        def f(x):
            return [covarianceModel(x)[0, 0]]

        func = ot.PythonFunction(1, 1, f)
        func.setDescription(['$tau$', '$cov$'])
        cov_graph = func.draw(-3.0 * scale, 3.0 * scale, 129)
        cov_graph.setTitle(title)
        fig = plt.figure(figsize=(10, 4))
Beispiel #3
0
import openturns as ot
from matplotlib import pyplot as plt
from openturns.viewer import View
if ot.RankMCovarianceModel().__class__.__name__ == 'ExponentialModel':
    covarianceModel = ot.ExponentialModel([0.5], [5.0])
elif ot.RankMCovarianceModel().__class__.__name__ == 'GeneralizedExponential':
    covarianceModel = ot.GeneralizedExponential([2.0], [3.0], 1.5)
elif ot.RankMCovarianceModel().__class__.__name__ == 'ProductCovarianceModel':
    amplitude = [1.0]
    scale1 = [4.0]
    scale2 = [4.0]
    cov1 = ot.ExponentialModel(scale1, amplitude)
    cov2 = ot.ExponentialModel(scale2, amplitude)
    covarianceModel = ot.ProductCovarianceModel([cov1, cov2])
elif ot.RankMCovarianceModel().__class__.__name__ == 'RankMCovarianceModel':
    variance = [1.0, 2.0]
    basis = ot.LinearBasisFactory().build()
    covarianceModel = ot.RankMCovarianceModel(variance, basis)
else:
    covarianceModel = ot.RankMCovarianceModel()
title = str(covarianceModel)[:100]
if covarianceModel.getInputDimension() == 1:
    scale = covarianceModel.getScale()[0]
    if covarianceModel.isStationary():
        def f(x):
            return [covarianceModel(x)[0, 0]]
        func = ot.PythonFunction(1, 1, f)
        func.setDescription(['$tau$', '$cov$'])
        cov_graph = func.draw(-3.0 * scale, 3.0 * scale, 129)
        cov_graph.setTitle(title)
        fig = plt.figure(figsize=(10, 4))