def test(self):
        df1 = mms.run_spatial('steady-adapt.i', 7, mpi=8)

        fig = mms.ConvergencePlot(xlabel='Element Size ($h$)', ylabel='$L_2$ Error')
        fig.plot(df1,
                 label='steady-adapt',
                 marker='o',
                 markersize=8,
                 num_fitted_points=3,
                 slope_precision=1)
        fig.save('steady-adapt.png')

        for _,value in fig.label_to_slope.items():
            self.assertTrue(fuzzyEqual(value, 1., .05))
示例#2
0
文件: test.py 项目: yfzhang910/moose
    def test(self):
        df1 = mms.run_spatial('advection-diffusion-reaction.i', 7, mpi=2)

        fig = mms.ConvergencePlot(xlabel='Element Size ($h$)', ylabel='$L_2$ Error')
        fig.plot(df1,
                 label='compact-adr',
                 marker='o',
                 markersize=8,
                 num_fitted_points=3,
                 slope_precision=1)
        fig.save('compact-adr.png')

        for _,value in fig.label_to_slope.items():
            self.assertTrue(fuzzyEqual(value, 2., .05))
示例#3
0
文件: test.py 项目: cticenhour/moose
    def test(self):
        df1 = mms.run_spatial('skewed.i',
                              5,
                              'Variables/v/face_interp_method=average',
                              mpi=1)

        fig = mms.ConvergencePlot(xlabel='Element Size ($h$)',
                                  ylabel='$L_2$ Error')
        fig.plot(df1,
                 label='average',
                 marker='o',
                 markersize=8,
                 num_fitted_points=3,
                 slope_precision=1)
        fig.save('average.png')

        for _, value in fig.label_to_slope.items():
            self.assertTrue(fuzzyEqual(value, 1., .15))
示例#4
0
文件: test.py 项目: cticenhour/moose
    def test(self):
        df1 = mms.run_spatial(
            'skewed.i',
            5,
            'Variables/v/face_interp_method=skewness-corrected FVKernels/advection/advected_interp_method=skewness-corrected',
            mpi=1)

        fig = mms.ConvergencePlot(xlabel='Element Size ($h$)',
                                  ylabel='$L_2$ Error')
        fig.plot(df1,
                 label='corrected-advection',
                 marker='o',
                 markersize=8,
                 num_fitted_points=3,
                 slope_precision=1)
        fig.save('corrected-advection.png')

        for _, value in fig.label_to_slope.items():
            self.assertTrue(fuzzyEqual(value, 2.0, .1))