Beispiel #1
0
def test_lead_field_class_same_output_as_function():
    global old_code
    lf = Lead_Field()
    for i in range(len(old_code)):
        lead_field_class = lf.calculate(old_code[i]['gen_conf'])
        lead_field_function = calculate_lead_field(old_code[i]['gen_conf'])
        assert_array_equal(lead_field_class, lead_field_function)
    def __init__(self, parameter_list=None, parameters=None, n_sub=23, n_gen=1):
        # Optimal bounds for fitting
        self.magnitude_bounds = (0, None) # unnecessary?
        self.depth_bounds = (4.49, 7.05) # cortex
        self.theta_bounds = (0,pi/2)
        self.phi_bounds = (0,2*pi) # unnecessary?
        self.orientation_bounds = (0, pi/2)
        self.orientation_phi_bounds = (0,2*pi) # unnecessary?
        self.gen_variance_bounds = (None, None)
        self.gen_covariance_bounds = (None, None)
        self.el_variance_bounds = (None, None)

        # Parameter limits for randomizing model
        self.magnitude_lim = (1, 10000000)
        self.depth_lim = (4.49, 7.05) # cortex
        self.phi_lim = (0,2*pi)
        self.theta_lim = (0,pi/2)
        self.orientation_lim = (0, pi/2) # cortex
        self.orientation_phi_lim = (0,2*pi)
        self.gen_variance_lim = [0, 1000000]
        self.gen_covariance_lim = [0, 1000000]
        self.el_variance_lim = [0, 20]

        # Variability parameters
        self.sigma_e = 0
        self.sigma_g = 0
        self.sigma_c = 0

        self.n_gen = n_gen
        self.n_sub = n_sub
        self.n_el = 60
        
        self.lf = Lead_Field()

        self.gen_conf = None

        self.up_to_date = {}
        
        if parameter_list == None or 'locations and orientations' not in parameter_list:
            self.set_random_parameters(['locations and orientations']) 
            # Amplitudes should be set separately, but for now they're not...
            #self.set_random_parameters(['locations and orientations', 
            #                            'amplitudes'])
        
        if parameter_list != None:
            self.set_parameters(parameter_list, parameters)
       
        # This is not working, amplitudes are being set above along with
        # locations and orientations, which shouldn't be the case
        #if 'amplitudes' not in parameter_list:
        #    self.set_random_parameters(['amplitudes'])
        
        self.recalculate_model()
Beispiel #3
0
    def __init__(
        self, n_sub, n_gen, variability_electrodes="none", variability_generators="none", variability_connections="none"
    ):
        self.n_gen = n_gen  # generators
        self.n_sub = n_sub  # subjects
        self.n_el = 60  # Hard-coded to use a specific electrode set

        self.up_to_date = {}
        self.set_parameter_limits()
        self.gen_conf = None
        self.lf = Lead_Field()

        self.set_variability_type(variability_electrodes, variability_generators, variability_connections)
        self.sigma_e = 0
        self.sigma_g = zeros(self.n_gen)
        self.sigma_c = zeros((self.n_gen, self.n_gen))
Beispiel #4
0
class ERP_Variability_Model:
    def __init__(
        self, n_sub, n_gen, variability_electrodes="none", variability_generators="none", variability_connections="none"
    ):
        self.n_gen = n_gen  # generators
        self.n_sub = n_sub  # subjects
        self.n_el = 60  # Hard-coded to use a specific electrode set

        self.up_to_date = {}
        self.set_parameter_limits()
        self.gen_conf = None
        self.lf = Lead_Field()

        self.set_variability_type(variability_electrodes, variability_generators, variability_connections)
        self.sigma_e = 0
        self.sigma_g = zeros(self.n_gen)
        self.sigma_c = zeros((self.n_gen, self.n_gen))

    def print_model(self, topographies=False):
        print ("ERP Model Parameters")
        print ("====================")
        print ("Number of generators: " + str(self.n_gen) + "\n")
        print ("Variability")
        print ("-----------")
        print ("* Electrodes (self.sigma_e)")
        print self.sigma_e
        print ("* Generators (self.cov_gen)")
        print self.cov_gen
        print ("* Final covariance matrix (self.cov)")
        print self.cov
        for gen in range(self.n_gen):
            print ("\nGenerator " + str(gen + 1))
            print ("-------------------")
            print ("LOCATION, Depth: " + str(self.gen_conf[gen]["depth"]))
            print ("LOCATION, Theta: " + str(self.gen_conf[gen]["theta"]))
            print ("LOCATION, Phi: " + str(self.gen_conf[gen]["phi"]))
            print ("ORIENTATION: " + str(self.gen_conf[gen]["orientation"]))
            print ("ORIENTATION, Phi: " + str(self.gen_conf[gen]["orientation_phi"]))
            print ("MAGNITUDE: " + str(self.gen_conf[gen]["magnitude"]))
            if topographies:
                pyplot.figure()
                plot_topographic_map((self.gen_conf[gen]["magnitude"] * self.lf.calculate([self.gen_conf[gen]]))[:, 0])

    def plot_model(self, to_plot):
        for one_plot in to_plot:
            if one_plot == "mean":
                plot_topographic_map(self.mean)
                pyplot.title("Topographic map of mean")

                # Individual generator means
                pyplot.figure()
                for i in range(self.n_gen):
                    pyplot.subplot(1, self.n_gen, i)
                    plot_topographic_map(self.mean)
                pyplot.figtext(0.5, 0.75, "Topographic maps of means of each generator", ha="center")

            if one_plot == "variance":
                pyplot.figure()
                plot_topographic_map(self.cov.diagonal())
                pyplot.title("Topographic map of variance")

                # Individual generator variances
                pyplot.figure()
                for i in range(self.n_gen):
                    pyplot.subplot(1, self.n_gen, i)
                    single_cov = dot(transpose(self.lead_field[:, i][newaxis]), self.lead_field[:, i][newaxis])
                    if self.variability_generators == "constant":
                        single_cov = self.sigma_g * single_cov
                    elif self.variability_generators == "individual":
                        single_cov = self.sigma_g[i] * single_cov
                    plot_topographic_map(single_cov.diagonal())
                pyplot.figtext(0.5, 0.75, "Topographic maps of variance of each generator", ha="center")

            if one_plot == "covariance matrix":
                pyplot.figure()
                plot_covariance_matrix(self.data, self.cov)
                pyplot.title("Covariance matrix")

    def set_parameter_limits(self):
        # Parameter bounds for randomizing model parameters
        self.limits = {}
        # Location and orientation
        self.limits["depth"] = (4.49, 7.05)  # roughly the cortex
        self.limits["phi"] = (0, 2 * pi)
        self.limits["theta"] = (0, pi / 2)
        self.limits["orientation"] = (0, pi / 2)  # cortex
        self.limits["orientation_phi"] = (0, 2 * pi)
        # Magnitude
        self.limits["magnitude"] = (0, 1000)
        # Variability
        self.limits["generator_variance"] = [0, 1000000]
        self.limits["electrode_variance"] = [0, 20]
        # Covariance needs no limits becuase it is limited by the variance of
        # the two generators in question
        # self.limits['generator_covariance'] = [0, 1000000]
        # Constant number of generators
        self.limits["n_gen"] = (self.n_gen, self.n_gen)

    def set_variability_type(self, variability_electrodes, variability_generators, variability_connections):
        if variability_electrodes not in ["constant", "individual", "none"]:
            raise ValueError
        else:
            self.variability_electrodes = variability_electrodes

        if variability_generators not in ["constant", "individual", "none"]:
            raise ValueError
        else:
            self.variability_generators = variability_generators

        if variability_connections not in ["individual", "none"]:
            raise ValueError
        else:
            self.variability_connections = variability_connections

    def set_gen_conf(self, gen_conf):
        self.gen_conf = gen_conf
        self.n_gen = len(gen_conf)

    def set_random(self):
        self.set_random_locations_orientations()
        self.set_random_magnitudes()
        self.set_random_variability()

    def set_random_locations_orientations(self):
        self.gen_conf = random_generator_placement(self.limits)
        self.up_to_date["lead field"] = False
        self.up_to_date["mean"] = False
        self.up_to_date["covariance generators"] = False
        self.up_to_date["covariance"] = False

    def set_random_magnitudes(self):
        limits = self.limits["magnitude"]
        for i in range(self.n_gen):
            self.gen_conf[i]["magnitude"] = limits[0] + uniform(limits[1] - limits[0])
        self.up_to_date["mean"] = False

    def set_random_variability(self):
        self.set_random_variability_electrodes()
        self.set_random_variability_generators()
        self.set_random_variability_connections()

    def set_random_variability_electrodes(self):
        limits = self.limits["electrode_variance"]
        if self.variability_electrodes == "none":
            self.sigma_e = 0
        elif self.variability_electrodes == "constant":
            self.sigma_e = limits[0] + uniform(limits[1] - limits[0])
        elif self.variability_electrodes == "individual":
            self.sigma_e = []
            for i in range(self.n_el):
                self.sigma_e.append(limits[0] + uniform(limits[1] - limits[0]))

    def set_random_variability_generators(self):
        limits = self.limits["generator_variance"]
        if self.variability_generators == "none":
            self.sigma_g = 0
        elif self.variability_generators == "constant":
            self.sigma_g = limits[0] + uniform(limits[1] - limits[0])
        elif self.variability_generators == "individual":
            self.sigma_g = []
            for i in range(self.n_gen):
                self.sigma_g.append(limits[0] + uniform(limits[1] - limits[0]))

    def set_random_variability_connections(self):
        if self.variability_connections == "none":
            self.sigma_c = zeros((self.n_gen, self.n_gen))
        elif self.variability_connections == "individual":
            self.sigma_c = zeros((self.n_gen, self.n_gen))
            for row in range(self.n_gen):
                for column in range(self.n_gen):
                    if row < column:
                        sigma_c = uniform(sqrt(self.sigma_g[row] * self.sigma_g[column]))
                        self.sigma_c[row, column] = sigma_c
                        self.sigma_c[column, row] = sigma_c

    def calculate_lead_field(self):
        self.lead_field = self.lf.calculate(self.gen_conf)
        self.up_to_date["lead field"] = True
        self.up_to_date["mean"] = False
        self.up_to_date["covariance generators"] = False
        self.up_to_date["covariance"] = False
        return self.lead_field

    def calculate_mean(self):
        if not self.up_to_date["lead field"]:
            self.calculate_lead_field()

        gen_amplitudes = []
        for i in range(self.n_gen):
            gen_amplitudes.append(self.gen_conf[i]["magnitude"])
        self.mean = dot(self.lead_field, gen_amplitudes)

        self.up_to_date["mean"] = True

        return self.mean

    def calculate_cov_gen(self):
        if not self.up_to_date["lead field"]:
            self.calculate_lead_field()

        self.cov_gen = zeros((self.n_gen, self.n_gen))
        for row in range(self.n_gen):
            for column in range(self.n_gen):
                if row == column:
                    if self.variability_generators == "individual":
                        self.cov_gen[row, column] = self.sigma_g[row]
                    elif self.variability_generators == "constant":
                        self.cov_gen[row, column] = self.sigma_g
                elif column > row:
                    if self.variability_connections == "individual":
                        self.cov_gen[row, column] = self.sigma_c[row, column]
                        self.cov_gen[column, row] = self.sigma_c[row, column]

        self.up_to_date["covariance generators"] = True
        self.up_to_date["covariance"] = False

        return self.cov_gen

    def calculate_cov(self):
        if not self.up_to_date["lead field"]:
            self.calculate_lead_field()
        if not self.up_to_date["covariance generators"]:
            self.calculate_cov_gen()

        # TODO: Make it work for individual electrode variance as well
        self.cov = dot(dot(self.lead_field, self.cov_gen), transpose(self.lead_field)) + self.sigma_e * identity(
            self.n_el
        )

        self.up_to_date["covariance"] = True

        return self.cov

    def simulate(self):
        self.data = multivariate_normal(self.mean, self.cov, self.n_sub)
        return self.data

    def recalculate_model(self):
        self.up_to_date["lead field"] = False
        self.up_to_date["mean"] = False
        self.up_to_date["covariance generators"] = False
        self.up_to_date["covariance"] = False

        self.calculate_lead_field()
        self.calculate_mean()
        self.calculate_cov()
        self.simulate()
class ERP_Model():
    def __init__(self, parameter_list=None, parameters=None, n_sub=23, n_gen=1):
        # Optimal bounds for fitting
        self.magnitude_bounds = (0, None) # unnecessary?
        self.depth_bounds = (4.49, 7.05) # cortex
        self.theta_bounds = (0,pi/2)
        self.phi_bounds = (0,2*pi) # unnecessary?
        self.orientation_bounds = (0, pi/2)
        self.orientation_phi_bounds = (0,2*pi) # unnecessary?
        self.gen_variance_bounds = (None, None)
        self.gen_covariance_bounds = (None, None)
        self.el_variance_bounds = (None, None)

        # Parameter limits for randomizing model
        self.magnitude_lim = (1, 10000000)
        self.depth_lim = (4.49, 7.05) # cortex
        self.phi_lim = (0,2*pi)
        self.theta_lim = (0,pi/2)
        self.orientation_lim = (0, pi/2) # cortex
        self.orientation_phi_lim = (0,2*pi)
        self.gen_variance_lim = [0, 1000000]
        self.gen_covariance_lim = [0, 1000000]
        self.el_variance_lim = [0, 20]

        # Variability parameters
        self.sigma_e = 0
        self.sigma_g = 0
        self.sigma_c = 0

        self.n_gen = n_gen
        self.n_sub = n_sub
        self.n_el = 60
        
        self.lf = Lead_Field()

        self.gen_conf = None

        self.up_to_date = {}
        
        if parameter_list == None or 'locations and orientations' not in parameter_list:
            self.set_random_parameters(['locations and orientations']) 
            # Amplitudes should be set separately, but for now they're not...
            #self.set_random_parameters(['locations and orientations', 
            #                            'amplitudes'])
        
        if parameter_list != None:
            self.set_parameters(parameter_list, parameters)
       
        # This is not working, amplitudes are being set above along with
        # locations and orientations, which shouldn't be the case
        #if 'amplitudes' not in parameter_list:
        #    self.set_random_parameters(['amplitudes'])
        
        self.recalculate_model()


    def print_model(self, topographies=False):
        print('ERP Model Parameters')
        print('====================')
        print('Number of generators: ' + str(self.n_gen) + '\n')
        print('Variability')
        print('-----------')
        if self.sigma_e == 0:
            print('* No electrode variance.')
        else:
            print('* Electrode variance: ' + str(self.sigma_e))
        print('* Generator covariance matrix:')
        print(self.cov_gen)
        #if self.n_gen > 1 and isinstance(self.sigma_g, list):
        #    print('* Individual generator variance.')
        #elif self.n_gen > 1:
        #    print('* Generator variance: ' + str(self.sigma_g))
        #if self.n_gen > 1 and isinstance(self.sigma_c, list):
        #    print('* Individual generator covariance.')
        #elif self.n_gen > 1:
        #    print('* Generator variance: ' + str(self.sigma_g))
        for gen in range(self.n_gen):
            print('Generator ' + str(gen+1))
            print('-------------------')
            print('LOCATION, Depth: ' + str(self.gen_conf[gen]['depth']))
            print('LOCATION, Theta: ' + str(self.gen_conf[gen]['theta']))
            print('LOCATION, Phi: ' + str(self.gen_conf[gen]['phi']))
            print('ORIENTATION: ' + str(self.gen_conf[gen]['orientation']))
            print('ORIENTATION, Phi: ' + str(self.gen_conf[gen]['orientation_phi']))
            print('MAGNITUDE: ' + str(self.gen_conf[gen]['magnitude']))
            if topographies:
                pyplot.figure()
                plot_topographic_map((self.gen_conf[gen]['magnitude'] *
                                      self.lf.calculate(
                                      [self.gen_conf[gen]]))[:,0])


    def set_random_parameters(self, parameter_list):
        for i in range(len(parameter_list)):
            if parameter_list[i] == 'locations and orientations':
                self.gen_conf = random_generator_configuration((self.n_gen,
                                self.n_gen), self.depth_lim, self.orientation_lim, 
                                self.magnitude_lim)[0]
            
            elif parameter_list[i] == 'generator variance':
                self.sigma_g = self.gen_variance_lim[0] +\
                        uniform(self.gen_variance_lim[1] -\
                                self.gen_variance_lim[0])
            
            elif parameter_list[i] == 'generator variances individual':
                self.sigma_g = []
                for j in range(self.n_gen):
                    sigma_g = self.gen_variance_lim[0] +\
                                uniform(self.gen_variance_lim[1] -\
                                        self.gen_variance_lim[0])
                    self.sigma_g.append(sigma_g)
            
            elif parameter_list[i] == 'generator covariance':
                self.sigma_c = self.gen_covariance_lim[0] +\
                        uniform(self.gen_covariance_lim[1] -\
                                self.gen_covariance_lim[0])

            elif parameter_list[i] == 'generator covariances individual':
                self.sigma_c = zeros((self.n_gen, self.n_gen))
                for row in range(self.n_gen):
                    for column in range(self.n_gen):
                        if row < column:
                            sigma_c = self.gen_covariance_lim[0] +\
                                        uniform(self.gen_covariance_lim[1] -\
                                                self.gen_covariance_lim[0])
                            self.sigma_c[row,column] = sigma_c
                            self.sigma_c[column,row] = sigma_c
            
            elif parameter_list[i] == 'electrode variance':
                self.sigma_e = self.el_variance_lim[0] +\
                        uniform(self.el_variance_lim[1] -\
                                self.el_variance_lim[0])

        self.up_to_date['lead field'] = False
        self.up_to_date['mean'] = False
        self.up_to_date['covariance generators'] = False
        self.up_to_date['covariance'] = False

    def set_parameters(self, parameter_list, parameters):
        """This function enables you to fit any sets of parameters, i.e.:
        
        * location and orientations
        * amplitudes
        * generator variance
        * generator variances individual
        * generator covariance
        * generator covariances individual
        * electrode variance
        
        You need to pass the list of parameters and a list of their values:
            
            set_parameters(self, parameter_list, parameters),
        
        where parameter_list would be of the form (GLVM model):
            
            ['locations and orientations', 'amplitudes', 'equal variance']
        
        and depending on what parameters are listed, the parameters variable
        will be expected to hold different values, but always in a list
        """
        par = 0 # the current parameter
        for i in range(len(parameter_list)):
            gen_amplitudes = []
            for j in range(self.n_gen):
                gen_amplitudes.append(self.gen_conf[j]['magnitude'])
            if parameter_list[i] == 'locations and orientations':
                self.gen_conf = []
                n_gen_parameters = 5
                # Creating generator configuration
                for gen in range(self.n_gen):
                    self.gen_conf.append({})
                    self.gen_conf[gen]['depth'] = parameters[par]
                    self.gen_conf[gen]['orientation'] = parameters[par + 1]
                    self.gen_conf[gen]['orientation_phi'] = parameters[par + 2]
                    self.gen_conf[gen]['phi'] = parameters[par + 3]
                    self.gen_conf[gen]['theta'] = parameters[par + 4]
                    self.gen_conf[gen]['magnitude'] = gen_amplitudes[gen]
                    par += n_gen_parameters                
                    
            if parameter_list[i] == 'amplitudes':
                if self.gen_conf == None:
                    print('WARNING: Trying to set amplitudes without generators')
                for gen in range(self.n_gen):
                    self.gen_conf[gen]['magnitude'] = parameters[par]
                    par += 1
            
            if parameter_list[i] == 'generator variance':
                self.sigma_g = parameters[par]
                par += 1

            if parameter_list[i] == 'generator variances individual':
                self.sigma_g = list(parameters[par : par + self.n_gen])
                par += self.n_gen

            if parameter_list[i] == 'generator covariance':
                self.sigma_c = parameters[par]
                par += 1
            
            if parameter_list[i] == 'generator covariances individual':
                self.sigma_c = zeros((self.n_gen, self.n_gen))
                for row in range(self.n_gen):
                    for col in range(self.n_gen):
                        if row < col:
                            self.sigma_c[row,col] = parameters[par]
                            self.sigma_c[col,row] = parameters[par]
                            par += 1
            
            if parameter_list[i] == 'electrode variance':
                self.sigma_e = parameters[par]
                par += 1
        
        self.up_to_date['lead field'] = False
        self.up_to_date['mean'] = False
        self.up_to_date['covariance generators'] = False
        self.up_to_date['covariance'] = False

    def get_parameters(self, parameter_list):
        parameters = []
        for i in range(len(parameter_list)):
            if parameter_list[i] == 'locations and orientations':
                for gen in range(self.n_gen):
                    parameters.append(self.gen_conf[gen]['depth'])
                    parameters.append(self.gen_conf[gen]['orientation'])
                    parameters.append(self.gen_conf[gen]['orientation_phi'])
                    parameters.append(self.gen_conf[gen]['phi'])
                    parameters.append(self.gen_conf[gen]['theta'])
            
            if parameter_list[i] == 'amplitudes':
                for gen in range(self.n_gen):
                    parameters.append(self.gen_conf[gen]['magnitude'])
            
            if parameter_list[i] == 'generator variance':
                if not isinstance(self.sigma_g, list):
                    parameters.append(self.sigma_g)
                else:
                    print('WARNING: Variances expected to be identical for \
                          all generators, however self.sigma_g holds a list, \
                          not a single value')

            if parameter_list[i] == 'generator variances individual':
                if isinstance(self.sigma_g, list):
                    for j in range(len(self.sigma_g)):
                        parameters.append(self.sigma_g[j])
                else:
                    print('WARNING: Variances expected to be different for \
                          all generators, however self.sigma_g does not hold \
                          a list')
            
            if parameter_list[i] == 'generator covariance':
                if not isinstance(self.sigma_c, ndarray):
                    parameters.append(self.sigma_c)
                else:
                    print('WARNING: Generator covariance expected to be \
                          identical for all generators, however self.sigma_c \
                          holds an array, not a single value')

            if parameter_list[i] == 'generator covariances individual':
                if isinstance(self.sigma_c, ndarray):
                    for row in range(self.n_gen):
                        for col in range(self.n_gen):
                            if row < col:
                                parameters.append(self.sigma_c[row,col])
                else:
                    print('WARNING: Generator covariances expected to be \
                          different for all generator pairs, however \
                          self.sigma_c is not an array')

            if parameter_list[i] == 'electrode variance':
                parameters.append(self.sigma_e)

        return parameters
    
    def get_bounds(self, parameter_list):
        bounds = []
        for i in range(len(parameter_list)):
            if parameter_list[i] == 'locations and orientations':
                for j in range(self.n_gen):
                    bounds.append(self.depth_bounds)
                    bounds.append(self.orientation_bounds)
                    bounds.append(self.orientation_phi_bounds)
                    bounds.append(self.phi_bounds)
                    bounds.append(self.theta_bounds)
            
            if parameter_list[i] == 'amplitudes':
                for j in range(self.n_gen):
                    bounds.append(self.magnitude_bounds)
        
            if parameter_list[i] == 'generator variance':
                bounds.append(self.gen_variance_bounds)

            if parameter_list[i] == 'generator variances individual':
                for j in range(self.n_gen):
                    bounds.append(self.gen_variance_bounds)

            if parameter_list[i] == 'generator covariance':
                bounds.append(self.gen_covariance_bounds)

            if parameter_list[i] == 'generator covariances individual':
                for j in range(self.n_gen*(self.n_gen-1)/2):
                    bounds.append(self.gen_covariance_bounds)
            
            if parameter_list[i] == 'electrode variance':
                bounds.append(self.el_variance_bounds)

        return bounds
    
    def calculate_lead_field(self):
        self.lead_field = self.lf.calculate(self.gen_conf)
        self.up_to_date['lead field'] = True
        self.up_to_date['mean'] = False
        self.up_to_date['covariance'] = False
        return self.lead_field

    def calculate_mean(self):
        if not self.up_to_date['lead field']: self.calculate_lead_field()
        gen_amplitudes = []
        for i in range(self.n_gen):
            gen_amplitudes.append(self.gen_conf[i]['magnitude'])
        self.mean = dot(self.lead_field, gen_amplitudes)
        self.up_to_date['mean'] = True
        return self.mean

    def calculate_cov_gen(self):
        self.cov_gen = zeros((self.n_gen, self.n_gen))
        for row in range(self.n_gen):
            for column in range(self.n_gen):
                if row == column:
                    if isinstance(self.sigma_g, list):
                        self.cov_gen[row,column] = self.sigma_g[row]
                    else:
                        self.cov_gen[row,column] = self.sigma_g
                elif column > row:
                    if isinstance(self.sigma_c, ndarray):
                        self.cov_gen[row,column] = self.sigma_c[row,column]
                        self.cov_gen[column,row] = self.sigma_c[row,column]
                    else:
                        self.cov_gen[row,column] = self.sigma_c
                        self.cov_gen[column,row] = self.sigma_c
        
        self.up_to_date['covariance generators'] = True
        self.up_to_date['covariance'] = False

        return self.cov_gen

    def calculate_cov(self):
        if not self.up_to_date['lead field']: self.calculate_lead_field()
        if not self.up_to_date['covariance generators']:
            self.calculate_cov_gen()
        self.cov = dot(dot(self.lead_field, self.cov_gen),
                  transpose(self.lead_field)) + self.sigma_e *\
                  identity(self.n_el)
        self.up_to_date['covariance'] = True
        return self.cov

    def simulate(self):
        self.data = multivariate_normal(self.mean,self.cov,self.n_sub)
        return self.data
    
    def recalculate_model(self):
        self.calculate_lead_field()
        self.calculate_mean()
        self.calculate_cov()
        self.simulate()
Beispiel #6
0
def test_lead_field_class():
    global old_code
    lf = Lead_Field()
    for i in range(len(old_code)):
        lead_field = lf.calculate(old_code[i]['gen_conf'])
        assert_array_almost_equal(lead_field, old_code[i]['lead_field'], 17)