Esempio n. 1
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    def test_gaussian_fit_length_default(self):

        t0 = time.perf_counter()
        rms_gauss = gaussian_fit(self.time_array, self.gaussian_dist)[2]
        t1 = time.perf_counter()

        runtime = t1 - t0
        result = (rms_gauss - self.length_gauss) / self.length_gauss

        return runtime, result
Esempio n. 2
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    def test_gaussian_fit_length_minimize_trust_constr(self):

        fitOpt = FitOptions(fittingRoutine='minimize', method='trust-constr')
        t0 = time.perf_counter()
        rms_gauss = gaussian_fit(self.time_array,
                                 self.gaussian_dist,
                                 fitOpt=fitOpt)[2]
        t1 = time.perf_counter()

        runtime = t1 - t0
        result = (rms_gauss - self.length_gauss) / self.length_gauss

        return runtime, result
Esempio n. 3
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binom_params_gauss = binomial_from_width_ratio(time_array,
                                               gaussian_dist,
                                               plotOpt=plotOpt,
                                               ratio_LUT=new_LUT)

print('Gauss: Initial ->', initial_params_gauss, '/ Final ->',
      _binomial_full_to_rms(*binom_params_gauss[-2:]))

# ## 3. Distribution fitting routines

# In[11]:

from blond_common.fitting.profile import gaussian_fit, parabolic_amplitude_fit, binomial_amplitudeN_fit, PlotOptions

fitparams_gauss = gaussian_fit(time_array, gaussian_dist)

fitparams_parabamp = parabolic_amplitude_fit(time_array, parabamp_dist)

fitparams_binom = binomial_amplitudeN_fit(time_array, binom_dist)

print('Gauss: Initial ->', initial_params_gauss, '/ Final ->', fitparams_gauss)
print('Parab. amp.: Initial ->', initial_params_parabamp, '/ Final ->',
      fitparams_parabamp)
print('Binomial: Initial ->', initial_params_binom, '/ Final ->',
      fitparams_binom)

# In[12]:

plotOpt = PlotOptions(figname='Fit-1', clf=False)