fit_best_2comp_residual_cnv#
- mufasa.master_fitter.fit_best_2comp_residual_cnv(reg, window_hwidth=3.5, res_snr_cut=3, savefit=True, planemask=None)[source]#
Fit the convolved residual of the best-fit two-component spectral model with a one-component model.
- Parameters:
reg (Region) – The Region object containing the spectral cube and associated fit results.
window_hwidth (float, optional) – Half-width (in km/s) of the velocity window used for moment-based guesses. Defaults to 3.5. This value is approximately half the separation between the main hyperfine and satellite components.
res_snr_cut (float, optional) – Minimum signal-to-noise ratio for residual peak intensity to include a pixel in the fitting. This threshold is applied only during the generation of moment-based guesses and not during the actual recovery fit. Defaults to 3.
savefit (bool, optional) – If True, saves the fit results of the convolved residual to disk. Defaults to True.
planemask (numpy.ndarray, optional) – Boolean mask specifying which spatial pixels to fit. If provided, fitting is restricted to these pixels. Defaults to None.
- Return type:
None
- Raises:
SNRMaskError – If no pixels meet the signal-to-noise threshold or mask criteria for fitting.
StartFitError – If no pixels successfully start fitting due to poor initial guesses or insufficient signal.
Notes
This function fits the residual of the best-fit two-component model using a one-component model.
The approach assumes that the two-component model sufficiently describes the data; however, if the model is inadequate, the results may not accurately capture the true residual structure.
The purpose of this fit is solely to provide initial guesses for subsequent, more detailed fits.
If no valid pixels meet the SNR threshold (res_snr_cut), the function raises an SNRMaskError.
Examples
>>> from region import Region >>> reg = Region('input_cube.fits', 'output_root', fittype='nh3') >>> fit_best_2comp_residual_cnv(reg, window_hwidth=4.0, res_snr_cut=2.5, savefit=True) >>> # Fits the convolved residual of the two-component model using a one-component model.