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Fitting of Data

 

This chapter deals with the modelling and the analysis of image and table data by fitting non--linear functions, using least squares approximation. The different non--linear least squares methods implemented in MIDAS are first shortly described and discussed. The MIDAS commands dealing with functions or linear combination of functions and with the modelling process are then presented.

The basic scheme under these commands is to provide the necessary tools to define the functions entering in the fit, to give initial guesses for the parameters and, in iterations controlled by the user, find the optimal parameters of the functions. These parameters can be used to generate fitted data either as images or as columns in tabular form.

Due to the nature of the methods, it is recommended to use these commands in fitting problems involving small amounts of data. For analysis involving large amounts of data, like full CCD images, there are algorithms, in the context of 2D--photometry, optimized for special purpose analyses. A tutorial command ( TUTORIAL/FIT) has been introduced in order to show the capabilities of the package.

A brief description of the implemented methods is included in section gif. Section gif describes how to specify functions in the fit. Section gif describes how to include external functions. The usage of the commands is illustrated in section gif. The output of the programs and their possible interpretation are discussed in section gif. An example is presented in section gif, it may be convenient for first time users to run the command TUTORIAL/FIT while reading this section. Section gif contains a summary of the commands. Finally, the functions supported in the current version are listed in section gif. References can be found in section gif.





Rein Warmels
Mon Jan 22 12:06:29 MET 1996