DocumentCode :
1713062
Title :
Selecting inputs and measuring nonlinearity in system identification
Author :
Poncet, Andreas ; Moschytz, George S.
Author_Institution :
Swiss Federal Inst. of Technol., Zurich, Switzerland
fYear :
1996
Firstpage :
2
Lastpage :
10
Abstract :
The problems of selecting inputs and measuring system nonlinearity are stated in terms of statistical estimation theory The natural solution which emerges consists in estimating and comparing Bayes risk (minimum mean square error) with the linear minimum risk. For any subset of inputs, these quantities are defined as the overall best performance achievable using a nonlinear and a linear model, respectively. A method based on kernel density estimation is presented to compute both quantities directly from a batch of input-output data, prior to any model choice. The relevance of a particular input subset can thus be naturally quantified by its corresponding minimum risk. As a consequence, superfluous input variables can, in principle, be detected and removed before the tedious task of model structure design, Furthermore, the method enables to determine a priori the improvement which can potentially be achieved by using a nonlinear model instead of a linear one. In practice, the method is limited by the required amount of data increasing exponentially with the number of inputs, which is characteristic of nonparametric estimation techniques
Keywords :
Bayes methods; identification; least mean squares methods; nonlinear systems; statistical analysis; Bayes risk; input selection; input-output data; kernel density estimation; linear minimum risk; minimum mean square error; model structure design; nonparametric estimation techniques; statistical estimation theory; system identification; system nonlinearity measurement; Estimation theory; Information processing; Input variables; Kernel; Mean square error methods; Multilayer perceptrons; Polynomials; Signal processing; System identification; Turning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks for Identification, Control, Robotics, and Signal/Image Processing, 1996. Proceedings., International Workshop on
Conference_Location :
Venice
Print_ISBN :
0-8186-7456-3
Type :
conf
DOI :
10.1109/NICRSP.1996.542739
Filename :
542739
Link To Document :
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