示例#1
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def test_spline():
    wt_tab = V80()
    wt_spline = V80()
    wt_spline.spline_ct_power(err_tol_factor=1e-2)
    ws_lst = np.arange(3, 25, .001)

    # mean and max error
    assert (wt_tab.power(ws_lst) - wt_spline.power(ws_lst)).mean() < 1
    assert ((wt_tab.power(ws_lst) - wt_spline.power(ws_lst)).max()) < 1400

    # max change of gradient 80 times lower
    assert np.diff(np.diff(wt_spline.power(ws_lst))).max() * 80 < np.diff(np.diff(wt_tab.power(ws_lst))).max()

    ws_pts = [6.99, 7.01]
    dpdu_tab_pts = np.diag(fd(wt_tab.power)(np.array(ws_pts)))
    with use_autograd_in():
        dpdu_spline_pts = np.diag(autograd(wt_spline.power)(np.array(ws_pts)))
    npt.assert_array_almost_equal(dpdu_spline_pts, [205555.17794162, 211859.45965873])

    if 0:
        plt.plot(ws_lst, wt_tab.power(ws_lst))
        plt.plot(ws_lst, wt_spline.power(ws_lst))

        for wt, dpdu_pts, label in [(wt_tab, dpdu_tab_pts, 'V80 tabular'),
                                    (wt_spline, dpdu_spline_pts, 'V80 spline')]:
            for ws, dpdu in zip(ws_pts, dpdu_pts):
                plot_gradients(wt.power(ws), dpdu, ws, label, 1)

        ax = plt.gca().twinx()
        ax.plot(ws_lst, wt.power(ws_lst) - wt_spline.power(ws_lst))
        plt.figure()
        plt.plot(np.diff(np.diff(wt_tab.power(ws_lst))))
        plt.plot(np.diff(np.diff(wt_spline.power(ws_lst))))
        plt.show()
示例#2
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def test_set_gradients():
    wt = IEA37_WindTurbines()

    def dpctdu(ws, run_only):
        if run_only == 0:
            return np.where((ws > 4) & (ws <= 9.8),
                            100000 * ws,  # not the right gradient, but similar to the reference
                            0)
        else:
            return np.full(ws.shape, 0)
    wt.powerCtFunction.set_gradient_funcs(dpctdu)
    with use_autograd_in([WindTurbines, iea37_reader, power_ct_functions, wind_turbines_deprecated]):
        ws_lst = np.arange(3, 25, .1)
        plt.plot(ws_lst, wt.power(ws_lst))

        ws_pts = np.array([3., 6., 9., 12.])
        dpdu_lst = autograd(wt.power)(ws_pts)
        if 0:
            for dpdu, ws in zip(dpdu_lst, ws_pts):
                plot_gradients(wt.power(ws), dpdu, ws, "", 1)

            plt.show()
        dpdu_ref = np.where((ws_pts > 4) & (ws_pts <= 9.8),
                            100000 * ws_pts,
                            0)
        npt.assert_array_almost_equal(dpdu_lst, dpdu_ref)
示例#3
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def test_method():
    wt_linear = V80()
    wt_pchip = V80(method='pchip')
    wt_spline = V80(method='spline')
    ws_lst = np.arange(3, 25, .001)
    for wt in [wt_linear, wt_pchip, wt_spline]:
        wt.enable_autograd()

    ws_pts = [6.99, 7.01]
    with use_autograd_in():
        dpdu_linear_pts = autograd(wt_linear.power)(np.array(ws_pts))
        dpdu_pchip_pts = autograd(wt_pchip.power)(np.array(ws_pts))
        dpdu_spline_pts = autograd(wt_spline.power)(np.array(ws_pts))

    if 0:
        wt_dp_label_lst = [(wt_linear, dpdu_linear_pts, 'linear'),
                           (wt_pchip, dpdu_pchip_pts, 'pchip'),
                           (wt_spline, dpdu_spline_pts, 'spline')]
        for wt, dpdu_pts, label in wt_dp_label_lst:
            c = plt.plot(ws_lst, wt.power(ws_lst), label=label)[0].get_color()
            gradients.color_dict[label] = c

            for ws, dpdu in zip(ws_pts, dpdu_pts):
                plot_gradients(wt.power(ws), dpdu, ws, label)

        plt.legend()
        plt.figure()
        for wt, dpdu_pts, label in wt_dp_label_lst:
            plt.plot(ws_lst, wt_linear.power(ws_lst) - wt.power(ws_lst), label=label)

        plt.legend()
        plt.ylabel('Power difference wrt. linear')

        plt.figure()
        for wt, dpdu_pts, label in wt_dp_label_lst:
            plt.plot(np.diff(np.diff(wt.power(ws_lst))), label=label)
        plt.ylabel('Change of gradient')
        plt.legend()

        plt.show()

    # mean and max error
    for wt, mean_tol, absmean_tol, max_tol in [(wt_pchip, 213, 2323, 15632),
                                               (wt_spline, 1, 1, 1380)]:
        assert np.abs((wt_linear.power(ws_lst) - wt.power(ws_lst)).mean()) < mean_tol
        assert np.abs((wt_linear.power(ws_lst) - wt.power(ws_lst)).mean()) < absmean_tol
        assert np.abs((wt_linear.power(ws_lst) - wt.power(ws_lst)).max()) < max_tol

    for wt, diff_grad_max, dpdu_pts, ref_dpdu_pts in [(wt_linear, 64, dpdu_linear_pts, [178000.00007264, 236000.00003353]),
                                                      (wt_pchip, 0.2, dpdu_pchip_pts, [
                                                       202520.16516056, 203694.66294614]),
                                                      (wt_spline, 0.8, dpdu_spline_pts, [205555.17794162, 211859.45965873])]:
        assert np.diff(np.diff(wt.power(ws_lst))).max() < diff_grad_max
        npt.assert_array_almost_equal(dpdu_pts, ref_dpdu_pts)
示例#4
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 def aep(x,
         y,
         h=None,
         type=0,
         wd=None,
         ws=None,
         yaw_ilk=None):  # @ReservedAssignment
     if gradient_method == autograd:
         with use_autograd_in():
             return self.aep(x, y, h, type, wd, ws, yaw_ilk)
     else:
         return self.aep(x, y, h, type, wd, ws, yaw_ilk)
示例#5
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def test_gradients():
    wt = IEA37_WindTurbines()
    with use_autograd_in([WindTurbines, iea37_reader]):
        ws_lst = np.arange(3, 25, .1)
        plt.plot(ws_lst, wt.power(ws_lst))

        ws_pts = np.array([3., 6., 9., 12.])
        dpdu_lst = np.diag(autograd(wt.power)(ws_pts))
        if 0:
            for dpdu, ws in zip(dpdu_lst, ws_pts):
                plot_gradients(wt.power(ws), dpdu, ws, "", 1)

            plt.show()
        dpdu_ref = np.where((ws_pts > 4) & (ws_pts <= 9.8),
                            3 * 3350000 * (ws_pts - 4)**2 / (9.8 - 4)**3, 0)

        npt.assert_array_almost_equal(dpdu_lst, dpdu_ref)
示例#6
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def test_set_gradients():
    wt = IEA37_WindTurbines()

    wt.set_gradient_funcs(lambda ws: np.where((ws > 4) & (ws <= 9.8),
                                              100000 * ws,  # not the right gradient, but similar to the reference
                                              0), lambda ws: 0)
    with use_autograd_in([WindTurbines, iea37_reader]):
        ws_lst = np.arange(3, 25, .1)
        plt.plot(ws_lst, wt.power(ws_lst))

        ws_pts = np.array([3., 6., 9., 12.])
        dpdu_lst = np.diag(autograd(wt.power)(ws_pts))
        if 0:
            for dpdu, ws in zip(dpdu_lst, ws_pts):
                plot_gradients(wt.power(ws), dpdu, ws, "", 1)

            plt.show()
        dpdu_ref = np.where((ws_pts > 4) & (ws_pts <= 9.8),
                            100000 * ws_pts,
                            0)

        npt.assert_array_almost_equal(dpdu_lst, dpdu_ref)
示例#7
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 def aep(x, y, h, type, wd, ws, yaw_ilk):  # @ReservedAssignment
     if gradient_method == autograd:
         with use_autograd_in():
             return self.aep(
                 x,
                 y,
                 h,
                 type,
                 wd,
                 ws,
                 yaw_ilk,
                 normalize_probabilities=normalize_probabilities,
                 with_wake_loss=with_wake_loss)
     else:
         return self.aep(
             x,
             y,
             h,
             type,
             wd,
             ws,
             yaw_ilk,
             normalize_probabilities=normalize_probabilities,
             with_wake_loss=with_wake_loss)
示例#8
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def test_use_autograd_in(obj):
    assert wind_turbines.np == np
    with use_autograd_in([obj]):
        assert wind_turbines.np == anp
    assert wind_turbines.np == np
                             ct=v80_upct[2]),
              PowerCtTabular(ws=v80_upct[0],
                             power=v80_upct[1] * 1.1,
                             power_unit='w',
                             ct=v80_upct[2] + .1)
          ])), [73260., 195800., 379499.9998, 101199.9999
                ], [0.818, 0.001, -0.014, -0.3])])
@pytest.mark.parametrize('grad_method', [autograd, cs, fd])
def test_gradients(case, wt, dpdu_ref, dctdu_ref, grad_method):

    ws_pts = np.array([3.1, 6., 9., 12.])
    if isinstance(dpdu_ref, FunctionType):
        dpdu_ref, dctdu_ref = dpdu_ref(ws_pts), dctdu_ref(ws_pts)

    with use_autograd_in([
            WindTurbines, iea37_reader, power_ct_functions,
            wind_turbines_deprecated
    ]):
        if grad_method == autograd:
            wt.enable_autograd()
        ws_lst = np.arange(2, 25, .1)
        kwargs = {k: 1 for k in wt.function_inputs[0]}
        dpdu_lst = grad_method(wt.power)(ws_pts, **kwargs)
        dctdu_lst = grad_method(wt.ct)(ws_pts, **kwargs)

    if 0:
        gradients.color_dict = {'power': 'b', 'ct': 'r'}
        plt.plot(ws_lst, wt.power(ws_lst, **kwargs), label='power')
        c = plt.plot([], label='ct')[0].get_color()
        for dpdu, ws in zip(dpdu_lst, ws_pts):
            plot_gradients(wt.power(ws, **kwargs), dpdu, ws, "power", 1)
        ax = plt.twinx()