System Identification (SI) is a methodology for building mathematical models of dynamic systems from experimental data, i.e., using measurements of the system input/output (IO) signals to estimate the values of adjustable parameters in a given model structure. The process of SI requires some steps, such as measurement of the IO signals of the system in time or frequency domain, selection of a candidate model structure, choice and application of a method to estimate the value of the adjustable parameters in the candidate model structure, validation and evaluation of the estimated model to see if the model is right for the application needs, which should be done preferably with a different set of data, [PS] and [Lj1]. © 2015 Springer International Publishing.
CITATION STYLE
Esteves, M. S., Perdicoúlis, T. P. A., & Dos Santos, P. L. (2015). System identification methods for identification of state models. In Lecture Notes in Electrical Engineering (Vol. 321 LNEE, pp. 417–427). Springer Verlag. https://doi.org/10.1007/978-3-319-10380-8_40
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