Example #1
0
    def normalize(self, values):
        coincidence_count = values[0]
        spike_count = values[1]
        delta = self.delta*self.dt

        gamma = get_gamma_factor(coincidence_count, spike_count, 
                                 self.target_spikes_count, self.target_spikes_rate, 
                                 delta)
        
        return gamma
Example #2
0
    def normalize(self, values):
        coincidence_count = values[0]
        spike_count = values[1]
        delta = self.delta * self.dt

        gamma = get_gamma_factor(coincidence_count, spike_count,
                                 self.target_spikes_count,
                                 self.target_spikes_rate, delta)

        return gamma
Example #3
0
    def evaluate(self, **param_values):
        """
        Use fitparams['delays'] to take delays into account
        Use fitparams['refractory'] to take refractory into account
        """
        delays = param_values.pop('delays', zeros(self.neurons))
        refractory = param_values.pop('refractory', zeros(self.neurons))

        # kron spike delays
        delays = kron(delays, ones(self.slices))
        refractory = kron(refractory, ones(self.slices))

        # Sets the parameter values in the NeuronGroup object
        self.group.reinit()
        for param, value in param_values.iteritems():
            self.group.state(param)[:] = kron(value, ones(self.slices)) # kron param_values if slicing
            
        # Reinitializes the model variables
        if self.initial_values is not None:
            for param, value in self.initial_values.iteritems():
                self.group.state(param)[:] = value

        if self.use_gpu:
            # Reinitializes the simulation object
            self.mf.reinit_vars(self.input, self.I_offset, self.spiketimes, self.spiketimes_offset, delays, refractory)
            # LAUNCHES the simulation on the GPU
            self.mf.launch(self.duration, self.stepsize)
            coincidence_count = self.mf.coincidence_count
            spike_count = self.mf.spike_count
        else:
            # set the refractory period
            if self.max_refractory is not None:
                self.group.refractory = refractory
            
            self.cc = CoincidenceCounter(self.group, self.spiketimes, self.spiketimes_offset,
                                        onset=self.onset, delta=self.delta)
            # Sets the spike delay values
            self.cc.spikedelays = delays
            # Reinitializes the simulation objects
            self.group.clock.reinit()
#            self.cc.reinit()
            net = Network(self.group, self.cc)
            # LAUNCHES the simulation on the CPU
            net.run(self.duration)
            coincidence_count = self.cc.coincidences
            spike_count = self.cc.model_length

        coincidence_count = sum(reshape(coincidence_count, (self.slices, -1)), axis=0)
        spike_count = sum(reshape(spike_count, (self.slices, -1)), axis=0)

        gamma = get_gamma_factor(coincidence_count, spike_count, self.target_length, self.target_rates, self.delta)

        return gamma
Example #4
0
    def evaluate(self, **param_values):
        """
        Use fitparams['delays'] to take delays into account
        Use fitparams['refractory'] to take refractory into account
        """
        delays = param_values.pop('delays', zeros(self.neurons))
        refractory = param_values.pop('refractory', zeros(self.neurons))

        # kron spike delays
        delays = kron(delays, ones(self.slices))
        refractory = kron(refractory, ones(self.slices))

        # Sets the parameter values in the NeuronGroup object
        self.group.reinit()
        for param, value in param_values.iteritems():
            self.group.state(param)[:] = kron(value, ones(
                self.slices))  # kron param_values if slicing

        # Reinitializes the model variables
        if self.initial_values is not None:
            for param, value in self.initial_values.iteritems():
                self.group.state(param)[:] = value

        if self.use_gpu:
            # Reinitializes the simulation object
            self.mf.reinit_vars(self.input, self.I_offset, self.spiketimes,
                                self.spiketimes_offset, delays, refractory)
            # LAUNCHES the simulation on the GPU
            self.mf.launch(self.duration, self.stepsize)
            coincidence_count = self.mf.coincidence_count
            spike_count = self.mf.spike_count
        else:
            # set the refractory period
            if self.max_refractory is not None:
                self.group.refractory = refractory

            self.cc = CoincidenceCounter(self.group,
                                         self.spiketimes,
                                         self.spiketimes_offset,
                                         onset=self.onset,
                                         delta=self.delta)
            # Sets the spike delay values
            self.cc.spikedelays = delays
            # Reinitializes the simulation objects
            self.group.clock.reinit()
            #            self.cc.reinit()
            net = Network(self.group, self.cc)
            # LAUNCHES the simulation on the CPU
            net.run(self.duration)
            coincidence_count = self.cc.coincidences
            spike_count = self.cc.model_length

        coincidence_count = sum(reshape(coincidence_count, (self.slices, -1)),
                                axis=0)
        spike_count = sum(reshape(spike_count, (self.slices, -1)), axis=0)

        gamma = get_gamma_factor(coincidence_count, spike_count,
                                 self.target_length, self.target_rates,
                                 self.delta)

        return gamma