Radial Basis Functions for Process Control

نویسندگان

  • Lyle H. Ungar
  • Tom Johnson
  • Richard D. De Veaux
چکیده

Radial basis function (RBFs) neural networks provide an attractive method for high dimensional nonparametric estimation for use in nonlinear control. They are faster to train than conventional feedforward networks with sigmoidal activation networks (\backpropagation nets"), and provide a model structure better suited for adaptive control. This article gives a brief survey of the use of RBFs and then introduces a new statistical interpretation of radial basis functions and a new method of estimating the parameters, using the EM algorithm. This new statistical interpretation allows us to provide con dence limits on predictions made using the networks.

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تاریخ انتشار 1994