Esempio n. 1
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 def get_test_data(self,seed=None):
     u = []
     for i in range(1000):
         if i%7==0:
             u.append(self.random.normal(scale=1)+1)
         else:
             u.append(u[-1])
     exp = System_data(u=u)
     return self.apply_experiment(exp)
Esempio n. 2
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    def apply_experiment(self, experiment):
        '''Return the u,(x),y combination 
        todo: move this function to System'''
        u = experiment.u
        # N_transient = experiment.N_transient
        x = None
        from scipy import signal
        y = signal.lfilter(self.b, self.a, u)

        return System_data(u=u,
                           x=x,
                           y=y,
                           system_dict=self.settings,
                           experiment_dict=experiment.settings)
Esempio n. 3
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    def plot_and_fit(sys):
        global id
        exp = System_data(u=np.random.normal(scale=0.1, size=1000))
        sys = sys()
        sys_data = sys.apply_experiment(exp)

        SYS = deepSI.fit_systems.System_IO_fit_linear
        sys_fit, score, kwargs, _ = deepSI.fit_systems.grid_search(
            SYS, sys_data, dict(na=range(0, 10), nb=range(1, 10)))
        na, nb = kwargs['na'], kwargs['nb']

        sys_data_predict = sys_fit.apply_experiment(sys_data)
        plt.subplot(2, 3, id)
        sys_data.plot()
        sys_data_predict.plot()
        plt.title(f'{sys.name} BFR {sys_data_predict.NRMS(sys_data):.2%}')
        plt.legend(['real', f'predict na={na},nb={nb}'])
        # plt.title(sys.name)
        id += 1
Esempio n. 4
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            dx2 = 0

        return [dx1, dx2]



if __name__ == '__main__':
    # sys = Double_bath()
    # sys_data = sys.get_train_data()

    # SYS = fit_systems.System_IO_fit_linear
    # score, sys_fit, kwargs, _ = fit_systems.grid_search(SYS, sys_data, dict(na=range(0,3),nb=range(1,20)))
    # sys_data_predict = sys_fit.apply_experiment(sys_data)
    # sys_data.plot()
    # sys_data_predict.plot(show=True)
    sys = Cascaded_tanks_continuous(dt=2)
    data = System_data(u=np.ones(shape=(300))*5)
    data = sys.apply_experiment(data,save_state=True)
    data.plot(show=True)
    from matplotlib import pyplot as plt

    plt.plot(data.x)
    plt.show()
    print(np.max(data.x,axis=0))

    #longest timescale = 25
    #max x1 = 9. and x2 = 35
    #overflow at 20 x2 and 
    #u max = 8
    #dt = 2
Esempio n. 5
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    def f(self, x, u):
        u = np.array(u)
        if u.ndim == 0:
            u = u[None]
        return np.dot(self.Adis, x) + np.dot(self.Bdis, u)


if __name__ == '__main__':
    np.random.seed(42)
    A = np.array([[0.89, 0.], [0., 0.45]])  #(2,2) x<-x
    B = np.array([[0.3], [2.5]])  #(2,1) x<-u
    C = np.array([[0.7, 1.]])  #(1,2) y<-u
    D = np.array([[0.0]])  #(1,1)
    sys = SS_linear(A=A, B=B, C=C, D=D)
    exp = System_data(u=np.random.normal(size=1000)[:, None])
    sys_data = sys.apply_experiment(exp)
    # sys_data.plot(show=True)

    sys_fit = SS_linear(nx=4)
    sys_fit.fit(sys_data, SS_f=10)
    sys_data_predict = sys_fit.apply_experiment(sys_data)
    print(sys_data_predict.NRMS(sys_data))  #0017893805399810095
    # sys_data_fitted = sys_fit.simulation(sys_data)
    # print(sys_fit.A,sys_fit.B,sys_fit.C,sys_fit.D)
    # sys_data.plot(show=False)
    # sys_data_fitted.plot()
    # print(sys_data_fitted.NMSE(sys_data))

    # sys = deepSI.systems.Nonlin_io_normals()
    # train_data = sys.sample_system()
Esempio n. 6
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 def get_test_data(self):
     exp = System_data(
         u=self.random.uniform(low=-2.5, high=2.5, size=(2000, )))
     return self.apply_experiment(exp)
Esempio n. 7
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 def get_test_data(self):
     exp = System_data(u=self.random.uniform(-1, 1, size=10**4))
     return self.apply_experiment(exp)
Esempio n. 8
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    x' = v
    Fmax < a
    Fmin > -a
    """
    def __init__(self, Fmax=0.25, image_height=25, image_width=25):
        self.image_height, self.image_width = image_height, image_width
        super(Ball_in_box_video, self).__init__(Fmax=Fmax)
        self.observation_space = Box(0.,
                                     1.,
                                     shape=(self.image_height,
                                            self.image_width))

    def h(self, x, u):
        # A = np.zeros((self.image_width,self.image_height))
        Y = np.linspace(0, 1, num=self.image_height)
        X = np.linspace(0, 1, num=self.image_width)
        X, Y = np.meshgrid(X, Y)
        # self.X = X[y,x]
        r = 0.22
        A = np.clip((r**2 - (X - x[0])**2 - (Y - x[1])**2) / r**2, 0, 1)
        return A  #return position


if __name__ == '__main__':
    sys = Ball_in_box_video()
    exp = System_data(u=[sys.action_space.sample() for i in range(1000)])
    print(sys.action_space.low)
    sys_data = sys.apply_experiment(exp)

    sys_data.to_video(file_name='test')
Esempio n. 9
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 def get_test_data(self):
     exp = System_data(u=np.random.normal(size=1000))
     return self.apply_experiment(exp)
Esempio n. 10
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    def io_step(self, uy):
        return self.reg.predict(
            [uy])[0] if uy.ndim == 1 else self.reg.predict(uy)


from sklearn import linear_model


class Sklearn_io_linear(Sklearn_io):
    def __init__(self, na, nb):
        super(Sklearn_io_linear,
              self).__init__(na, nb, linear_model.LinearRegression())


if __name__ == '__main__':
    import numpy as np
    from matplotlib import pyplot as plt
    sys = deepSI.systems.Wiener_sysid_book()
    sys_data = sys.apply_experiment(
        System_data(u=np.random.normal(scale=0.1, size=400)))
    sys = Sklearn_io_linear(na=2, nb=1)
    sys.fit(sys_data)

    # sys, score, kwargs = deepSI.fit_systems.fit_system_tuner(Sklearn_io_linear,sys_data,dict(na=range(1,10),nb=range(1,10)))
    # print(score,kwargs)
    # sys.apply_experiment(sys_data).plot()
    # sys_data.plot(show=True)
    print(f'len(sys_data)={len(sys_data)}')
    plt.plot(sys.n_step_error(sys_data))
    plt.show()
    sys.one_step_ahead(sys_data).plot(show=True)
Esempio n. 11
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import deepSI
from deepSI.systems.system import System, System_deriv, System_data
import numpy as np

class Van_der_pol_oscillator(System_deriv):
    """docstring for Van_der_pol_oscillator"""
    def __init__(self, dt=0.2,mu=2.5):
        self.mu = mu
        super(Van_der_pol_oscillator, self).__init__(nx=2,dt=dt)

    def reset(self):
        x = np.random.uniform(low=[-3,-3],high=[3,3],size=(2,))
        for i in range(500):
            x = self.f(x,0)
        self.x = x
        return self.h(self.x)

    def h(self,x):
        return x[0]

    def deriv(self,state,u): #will be converted by Deriv system
        x, y = state #unpack
        xp = self.mu*(x-x**3/3-y)
        yp = 1/self.mu*(x-u)
        return np.array([xp,yp])


if __name__ == '__main__':
    sys = Van_der_pol_oscillator()
    sys_data = sys.apply_experiment(System_data(u=0*np.sin(np.linspace(0,2*np.pi*20,num=10000))))
    sys_data[:1000].plot(show=True)
from deepSI.systems.system import System, System_deriv, System_data
import numpy as np


class Van_der_pol_oscillator(System_deriv):
    """docstring for Van_der_pol_oscillator"""
    def __init__(self, dt=0.2, mu=2.5):
        self.mu = mu
        super(Van_der_pol_oscillator, self).__init__(nx=2, dt=dt)

    def reset_state(self):
        x = np.random.uniform(low=[-3, -3], high=[3, 3], size=(2, ))
        for i in range(500):
            x = self.f(x, 0)
        self.x = x

    def h(self, x, u):
        return x[0]

    def deriv(self, state, u):  #will be converted by Deriv system
        x, y = state  #unpack
        xp = self.mu * (x - x**3 / 3 - y)
        yp = 1 / self.mu * (x - u)
        return np.array([xp, yp])


if __name__ == '__main__':
    sys = Van_der_pol_oscillator()
    sys_data = sys.apply_experiment(
        System_data(u=0 * np.sin(np.linspace(0, 2 * np.pi * 20, num=10000))))
    sys_data[:1000].plot(show=True)