.. note::
    :class: sphx-glr-download-link-note

    Click :ref:`here <sphx_glr_download_examples_example_fit_multi_datasets.py>` to download the full example code
.. rst-class:: sphx-glr-example-title

.. _sphx_glr_examples_example_fit_multi_datasets.py:


Fit Multiple Data Sets
======================

Fitting multiple (simulated) Gaussian data sets simultaneously.

All minimizers require the residual array to be one-dimensional. Therefore, in
the ``objective`` we need to ```flatten``` the array before returning it.

TODO: this should be using the Model interface / built-in models!


.. code-block:: default

    import matplotlib.pyplot as plt
    import numpy as np

    from lmfit import Parameters, minimize, report_fit


    def gauss(x, amp, cen, sigma):
        """Gaussian lineshape."""
        return amp * np.exp(-(x-cen)**2 / (2.*sigma**2))


    def gauss_dataset(params, i, x):
        """Calculate Gaussian lineshape from parameters for data set."""
        amp = params['amp_%i' % (i+1)]
        cen = params['cen_%i' % (i+1)]
        sig = params['sig_%i' % (i+1)]
        return gauss(x, amp, cen, sig)


    def objective(params, x, data):
        """Calculate total residual for fits of Gaussians to several data sets."""
        ndata, _ = data.shape
        resid = 0.0*data[:]

        # make residual per data set
        for i in range(ndata):
            resid[i, :] = data[i, :] - gauss_dataset(params, i, x)

        # now flatten this to a 1D array, as minimize() needs
        return resid.flatten()








Create five simulated Gaussian data sets


.. code-block:: default


    x = np.linspace(-1, 2, 151)
    data = []
    for i in np.arange(5):
        params = Parameters()
        amp = 0.60 + 9.50*np.random.rand()
        cen = -0.20 + 1.20*np.random.rand()
        sig = 0.25 + 0.03*np.random.rand()
        dat = gauss(x, amp, cen, sig) + np.random.normal(size=x.size, scale=0.1)
        data.append(dat)
    data = np.array(data)







Create five sets of fitting parameters, one per data set


.. code-block:: default


    fit_params = Parameters()
    for iy, y in enumerate(data):
        fit_params.add('amp_%i' % (iy+1), value=0.5, min=0.0, max=200)
        fit_params.add('cen_%i' % (iy+1), value=0.4, min=-2.0, max=2.0)
        fit_params.add('sig_%i' % (iy+1), value=0.3, min=0.01, max=3.0)







Constrain the values of sigma to be the same for all peaks by assigning
sig_2, ..., sig_5 to be equal to sig_1.


.. code-block:: default


    for iy in (2, 3, 4, 5):
        fit_params['sig_%i' % iy].expr = 'sig_1'







Run the global fit and show the fitting result


.. code-block:: default


    out = minimize(objective, fit_params, args=(x, data))
    report_fit(out.params)





.. rst-class:: sphx-glr-script-out

 Out:

 .. code-block:: none

    [[Variables]]
        amp_1:  6.35769745 +/- 0.02471391 (0.39%) (init = 0.5)
        cen_1: -0.06087255 +/- 0.00141148 (2.32%) (init = 0.4)
        sig_1:  0.27096733 +/- 6.7335e-04 (0.25%) (init = 0.3)
        amp_2:  6.23505243 +/- 0.02466565 (0.40%) (init = 0.5)
        cen_2:  0.90331537 +/- 0.00143924 (0.16%) (init = 0.4)
        sig_2:  0.27096733 +/- 6.7335e-04 (0.25%) == 'sig_1'
        amp_3:  6.74510330 +/- 0.02487197 (0.37%) (init = 0.5)
        cen_3:  0.30698606 +/- 0.00133040 (0.43%) (init = 0.4)
        sig_3:  0.27096733 +/- 6.7335e-04 (0.25%) == 'sig_1'
        amp_4:  3.62962270 +/- 0.02384778 (0.66%) (init = 0.5)
        cen_4:  0.00271542 +/- 0.00247235 (91.05%) (init = 0.4)
        sig_4:  0.27096733 +/- 6.7335e-04 (0.25%) == 'sig_1'
        amp_5:  6.29975266 +/- 0.02469084 (0.39%) (init = 0.5)
        cen_5: -0.15885172 +/- 0.00142452 (0.90%) (init = 0.4)
        sig_5:  0.27096733 +/- 6.7335e-04 (0.25%) == 'sig_1'
    [[Correlations]] (unreported correlations are < 0.100)
        C(sig_1, amp_3) = -0.337
        C(amp_1, sig_1) = -0.320
        C(sig_1, amp_5) = -0.317
        C(sig_1, amp_2) = -0.314
        C(sig_1, amp_4) = -0.189
        C(amp_1, amp_3) =  0.108
        C(amp_3, amp_5) =  0.107
        C(amp_2, amp_3) =  0.106
        C(amp_1, amp_5) =  0.101
        C(amp_1, amp_2) =  0.100



Plot the data sets and fits


.. code-block:: default


    plt.figure()
    for i in range(5):
        y_fit = gauss_dataset(out.params, i, x)
        plt.plot(x, data[i, :], 'o', x, y_fit, '-')
    plt.show()



.. image:: /examples/images/sphx_glr_example_fit_multi_datasets_001.png
    :class: sphx-glr-single-img


.. rst-class:: sphx-glr-script-out

 Out:

 .. code-block:: none

    /Users/Newville/Codes/lmfit-py/examples/example_fit_multi_datasets.py:88: UserWarning: Matplotlib is currently using agg, which is a non-GUI backend, so cannot show the figure.
      plt.show()




.. rst-class:: sphx-glr-timing

   **Total running time of the script:** ( 0 minutes  0.207 seconds)


.. _sphx_glr_download_examples_example_fit_multi_datasets.py:


.. only :: html

 .. container:: sphx-glr-footer
    :class: sphx-glr-footer-example



  .. container:: sphx-glr-download

     :download:`Download Python source code: example_fit_multi_datasets.py <example_fit_multi_datasets.py>`



  .. container:: sphx-glr-download

     :download:`Download Jupyter notebook: example_fit_multi_datasets.ipynb <example_fit_multi_datasets.ipynb>`


.. only:: html

 .. rst-class:: sphx-glr-signature

    `Gallery generated by Sphinx-Gallery <https://sphinx-gallery.github.io>`_
