Exemplo n.º 1
0
 def get_fit_for_fitting(self):
     fit = Fit('exponential_fit',
         data=self.get_data(),
         model=self.get_model())
     fit.expression = 'exp'
     fit.independent = {'symbol': 't'}
     fit.parameters = [
         {'symbol': 'a', 'guess': 10},
         {'symbol': 'k', 'guess': 20},
     ]
     return fit
Exemplo n.º 2
0
 def test_all_variables(self):
     fit = Fit(model=Model())
     symbols = ('t', 'u', 'x', 'm', 'D', 'k', 'τ', 'a', 'b')
     fit.model.add_symbols(*symbols)
     fit.free_variables = ['t', 'u']
     fit.independent = {'symbol': 'x'}
     fit.parameters = [
         {'symbol': 'm', 'guess': 2},
         {'symbol': 'D', 'guess': 2},
         {'symbol': fit.model.symbol('k'), 'value': 3},
         {'symbol': 'τ', 'value': 4},
     ]
     fit.constants = [
         {'symbol': 'a'},
         {'symbol': 'b'},
     ]
     eq_(fit.all_variables, tuple( fit.model.symbol(s) for s in symbols ))
Exemplo n.º 3
0
 def test_function_with_more_symbols(self):
     fit = Fit()
     fit.model = Model()
     symbols = ('x', 'a', 'b', 'c', 'd', 'e', 'f')
     fit.model.add_symbols(*symbols)
     x, a, b, c, d, e, f = fit.model.get_symbols(*symbols)
     fit.model.expressions['exp'] = a * f + b * e + x * c + d
     fit.expression = 'exp'
     fit.independent = {'symbol': 'x'}
     fit.parameters = [
         {'symbol': 'a', 'guess': 2},
         {'symbol': 'b', 'guess': 3},
         {'symbol': 'c', 'value': 4, 'prefix': 'kilo'},
         {'symbol': 'd', 'value': 5},
     ]
     fit.constants = [
         {'symbol': 'e', 'value': 10},
         {'symbol': 'f', 'value': 12, 'prefix': 'milli'},
     ]
     eq_(fit.function(2, 4, 7), 8075.048)
Exemplo n.º 4
0
#

name = 'linear_polyfit'

# Load data from a csv file.
data = Data(name)
data.path = os.path.join('examples', 'data', 'linear.csv')
data.genfromtxt_args['skip_header'] = 1

# Create a linear model.
model = Model(name)
model.add_symbols('t', 'v', 'x_0')
t, v, x_0 = model.get_symbols('t', 'v', 'x_0')
model.expressions['line'] = v * t + x_0

# Create the fit using the data and model.
fit = Fit(name, data=data, model=model)
fit.expression = 'line'
fit.independent = {'symbol': 't', 'name': 'Time', 'units': 's'}
fit.dependent = {'name': 'Distance', 'units': 'm'}
fit.parameters = [
    {'symbol': 'v', 'guess': 1, 'units': 'm/s'},
    {'symbol': 'x_0', 'guess': 1, 'units': 'm'},
]

# Use `numpy.polyfit` to do the fit.
fit.options['fit_function'] = lambda f, x, y, p0, **op: (numpy.polyfit(x, y, 1), )

# Save the fit to disk.
save_example_fit(fit)
Exemplo n.º 5
0
#

name = 'linear_scaled'

# Load data from a csv file.
data = Data(name)
data.path = os.path.join('examples', 'data', 'linear.csv')
data.genfromtxt_args['skip_header'] = 1

# Assume the data was not saved in SI base units.
data.scale = ('micro', 'kilo')

# Create a linear model.
model = Model(name)
model.add_symbols('t', 'v', 'x_0')
t, v, x_0 = model.get_symbols('t', 'v', 'x_0')
model.expressions['line'] = v * t + x_0

# Create the fit using the data and model.
fit = Fit(name, data=data, model=model)
fit.expression = 'line'
fit.independent = {'symbol': 't', 'name': 'Time', 'prefix': 'micro', 'units': 'µs'}
fit.dependent = {'name': 'Distance', 'prefix': 'kilo', 'units': 'km'}
fit.parameters = [
    {'symbol': 'v', 'guess': 1, 'prefix': 10**9, 'units': 'km/µs'},
    {'symbol': 'x_0', 'value': 1, 'prefix': 'kilo', 'units': 'km'},
]

# Save the fit to disk.
save_example_fit(fit)