Esempio n. 1
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    def _apply_controls_to_measurements(self, udata, qdata):

        udata = inputchecks.check_controls_data(udata, \
            self._discretization.system.nu, \
            self._discretization.number_of_controls)
        qdata = inputchecks.check_constant_controls_data(qdata, \
            self._discretization.system.nq)

        optimization_variables_for_measurements = ci.veccat([ \

                self._discretization.optimization_variables["U"],
                self._discretization.optimization_variables["Q"],
                self._discretization.optimization_variables["X"],
                self._discretization.optimization_variables["EPS_U"],
                self._discretization.optimization_variables["P"],

            ])

        optimization_variables_controls_applied = ci.veccat([ \

                udata,
                qdata,
                self._discretization.optimization_variables["X"],
                self._discretization.optimization_variables["EPS_U"],
                self._discretization.optimization_variables["P"],

            ])

        measurements_fcn = ci.mx_function( \
            "measurements_fcn", \
            [optimization_variables_for_measurements], \
            [self._discretization.measurements])

        self._measurements_controls_applied = \
            measurements_fcn(optimization_variables_controls_applied)
Esempio n. 2
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    def _apply_controls_to_measurements(self, udata, qdata):

        udata = inputchecks.check_controls_data(udata, \
            self._discretization.system.nu, \
            self._discretization.number_of_controls)
        qdata = inputchecks.check_constant_controls_data(qdata, \
            self._discretization.system.nq)

        optimization_variables_for_measurements = ci.veccat([ \

                self._discretization.optimization_variables["U"], 
                self._discretization.optimization_variables["Q"], 
                self._discretization.optimization_variables["X"], 
                self._discretization.optimization_variables["EPS_U"], 
                self._discretization.optimization_variables["P"], 

            ])

        optimization_variables_controls_applied = ci.veccat([ \

                udata, 
                qdata, 
                self._discretization.optimization_variables["X"], 
                self._discretization.optimization_variables["EPS_U"], 
                self._discretization.optimization_variables["P"], 

            ])

        measurements_fcn = ci.mx_function( \
            "measurements_fcn", \
            [optimization_variables_for_measurements], \
            [self._discretization.measurements])

        [self._measurements_controls_applied] = \
            measurements_fcn([optimization_variables_controls_applied])
Esempio n. 3
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    def _set_optimization_variables_lower_bounds(self, umin, qmin, xmin, x0):

        umin_user_provided = umin

        umin = inputchecks.check_controls_data(umin, \
            self._discretization.system.nu, 1)

        if umin_user_provided is None:

            umin = -np.inf * np.ones(umin.shape)

        Umin = ci.repmat(umin, 1, \
            self._discretization.optimization_variables["U"].shape[1])


        qmin_user_provided = qmin

        qmin = inputchecks.check_constant_controls_data(qmin, \
            self._discretization.system.nq)

        if qmin_user_provided is None:

            qmin = -np.inf * np.ones(qmin.shape)

        Qmin = qmin


        xmin_user_provided = xmin

        xmin = inputchecks.check_states_data(xmin, \
            self._discretization.system.nx, 0)

        if xmin_user_provided is None:

            xmin = -np.inf * np.ones(xmin.shape)

        Xmin = ci.repmat(xmin, 1, \
            self._discretization.optimization_variables["X"].shape[1])

        Xmin[:,0] = x0


        self._optimization_variables_lower_bounds = ci.veccat([ \

                Umin,
                Qmin,
                Xmin,

            ])
Esempio n. 4
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    def _set_optimization_variables_lower_bounds(self, umin, qmin, xmin, x0):

        umin_user_provided = umin

        umin = inputchecks.check_controls_data(umin, \
            self._discretization.system.nu, 1)

        if umin_user_provided is None:

            umin = -np.inf * np.ones(umin.shape)

        Umin = ci.repmat(umin, 1, \
            self._discretization.optimization_variables["U"].shape[1])


        qmin_user_provided = qmin

        qmin = inputchecks.check_constant_controls_data(qmin, \
            self._discretization.system.nq)

        if qmin_user_provided is None:

            qmin = -np.inf * np.ones(qmin.shape)

        Qmin = qmin


        xmin_user_provided = xmin

        xmin = inputchecks.check_states_data(xmin, \
            self._discretization.system.nx, 0)

        if xmin_user_provided is None:

            xmin = -np.inf * np.ones(xmin.shape)

        Xmin = ci.repmat(xmin, 1, \
            self._discretization.optimization_variables["X"].shape[1])

        Xmin[:,0] = x0


        self._optimization_variables_lower_bounds = ci.veccat([ \

                Umin,
                Qmin,
                Xmin,

            ])
Esempio n. 5
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    def _set_optimization_variables_upper_bounds(self, umax, qmax, xmax, x0):

        umax_user_provided = umax

        umax = inputchecks.check_controls_data(umax, \
            self._discretization.system.nu, 1)

        if umax_user_provided is None:

            umax = np.inf * np.ones(umax.shape)

        Umax = ci.repmat(umax, 1, \
            self._discretization.optimization_variables["U"].shape[1])


        qmax_user_provided = qmax

        qmax = inputchecks.check_constant_controls_data(qmax, \
            self._discretization.system.nq)

        if qmax_user_provided is None:

            qmax = -np.inf * np.ones(qmax.shape)

        Qmax = qmax


        xmax_user_provided = xmax

        xmax = inputchecks.check_states_data(xmax, \
            self._discretization.system.nx, 0)

        if xmax_user_provided is None:

            xmax = np.inf * np.ones(xmax.shape)

        Xmax = ci.repmat(xmax, 1, \
            self._discretization.optimization_variables["X"].shape[1])

        Xmax[:,0] = x0


        self._optimization_variables_upper_bounds = ci.veccat([ \

                Umax,
                Xmax,

            ])
Esempio n. 6
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    def _set_optimization_variables_upper_bounds(self, umax, qmax, xmax, x0):

        umax_user_provided = umax

        umax = inputchecks.check_controls_data(umax, \
            self._discretization.system.nu, 1)

        if umax_user_provided is None:

            umax = np.inf * np.ones(umax.shape)

        Umax = ci.repmat(umax, 1, \
            self._discretization.optimization_variables["U"].shape[1])


        qmax_user_provided = qmax

        qmax = inputchecks.check_constant_controls_data(qmax, \
            self._discretization.system.nq)

        if qmax_user_provided is None:

            qmax = -np.inf * np.ones(qmax.shape)

        Qmax = qmax


        xmax_user_provided = xmax

        xmax = inputchecks.check_states_data(xmax, \
            self._discretization.system.nx, 0)

        if xmax_user_provided is None:

            xmax = np.inf * np.ones(xmax.shape)

        Xmax = ci.repmat(xmax, 1, \
            self._discretization.optimization_variables["X"].shape[1])

        Xmax[:,0] = x0


        self._optimization_variables_upper_bounds = ci.veccat([ \

                Umax,
                Xmax,

            ])
Esempio n. 7
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    def __initialize_simulation(self, x0, time_points, udata, integrator_options_user):

        self.__x0 = inputchecks.check_states_data(x0, self.__system.nx, 0)

        time_points = inputchecks.check_time_points_input(time_points)
        number_of_integration_steps = time_points.size - 1
        time_steps = time_points[1:] - time_points[:-1]

        udata = inputchecks.check_controls_data(udata, self.__system.nu, number_of_integration_steps)

        self.__simulation_input = ci.vertcat([np.atleast_2d(time_steps), udata])

        integrator_options = integrator_options_user.copy()
        integrator_options.update({"t0": 0, "tf": 1})  # ,  "number_of_finite_elements": 1})
        # integrator = ci.Integrator("integrator", "rk", \
        integrator = ci.Integrator("integrator", "cvodes", self.__dae_scaled, integrator_options)

        self.__simulation = integrator.mapaccum("simulation", number_of_integration_steps)
Esempio n. 8
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    def __initialize_simulation(self, x0, time_points, udata, \
        integrator_options_user):

        self.__x0 = inputchecks.check_states_data(x0, self.__system.nx, 0)

        time_points = inputchecks.check_time_points_input(time_points)
        number_of_integration_steps = time_points.size - 1
        time_steps = time_points[1:] - time_points[:-1]

        udata = inputchecks.check_controls_data(udata, self.__system.nu, \
            number_of_integration_steps)

        self.__simulation_input = ci.vertcat([np.atleast_2d(time_steps), udata])

        integrator_options = integrator_options_user.copy()
        integrator_options.update({"t0": 0, "tf": 1, "expand": True}) # ,  "number_of_finite_elements": 1})
        # integrator = ci.Integrator("integrator", "rk", \
        integrator = ci.Integrator("integrator", "cvodes", \
            self.__dae_scaled, integrator_options)

        self.__simulation = integrator.mapaccum("simulation", \
            number_of_integration_steps)
Esempio n. 9
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    def _set_optimization_variables_initials(self, qinit, x0, uinit):

        self.simulation = Simulation(self._discretization.system, \
            self._pdata, qinit)
        self.simulation.run_system_simulation(x0, \
            self._discretization.time_points, uinit, print_status = False)
        xinit = self.simulation.simulation_results

        repretitions_xinit = \
            self._discretization.optimization_variables["X"][:,:-1].shape[1] / \
                self._discretization.number_of_intervals
        
        Xinit = ci.repmat(xinit[:, :-1], repretitions_xinit, 1)

        Xinit = ci.horzcat([ \

            Xinit.reshape((self._discretization.system.nx, \
                Xinit.size() / self._discretization.system.nx)),
            xinit[:, -1],

            ])

        uinit = inputchecks.check_controls_data(uinit, \
            self._discretization.system.nu, \
            self._discretization.number_of_intervals)
        Uinit = uinit

        qinit = inputchecks.check_constant_controls_data(qinit, \
            self._discretization.system.nq)
        Qinit = qinit

        self._optimization_variables_initials = ci.veccat([ \

                Uinit,
                Qinit,
                Xinit,

            ])
Esempio n. 10
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    def _set_optimization_variables_initials(self, qinit, x0, uinit):

        self.simulation = Simulation(self._discretization.system, \
            self._pdata, qinit)
        self.simulation.run_system_simulation(x0, \
            self._discretization.time_points, uinit, print_status = False)
        xinit = self.simulation.simulation_results

        repretitions_xinit = \
            self._discretization.optimization_variables["X"][:,:-1].shape[1] / \
                self._discretization.number_of_intervals
        
        Xinit = ci.repmat(xinit[:, :-1], repretitions_xinit, 1)

        Xinit = ci.horzcat([ \

            Xinit.reshape((self._discretization.system.nx, \
                Xinit.numel() / self._discretization.system.nx)),
            xinit[:, -1],

            ])

        uinit = inputchecks.check_controls_data(uinit, \
            self._discretization.system.nu, \
            self._discretization.number_of_intervals)
        Uinit = uinit

        qinit = inputchecks.check_constant_controls_data(qinit, \
            self._discretization.system.nq)
        Qinit = qinit

        self._optimization_variables_initials = ci.veccat([ \

                Uinit,
                Qinit,
                Xinit,

            ])