Nonparametric identification of nonlinear dynamic systems

By: Material type: ArticleArticleLanguage: English Publication details: KIT Scientific Publishing 2018Description: 1 electronic resource (XXVIII, 194 p. p.)ISBN:
  • KSP/1000085419
  • 9783731508342
Subject(s): Online resources: Summary: A nonparametric identification method for highly nonlinear systems is presented that is able to reconstruct the underlying nonlinearities without a priori knowledge of the describing nonlinear functions. The approach is based on nonlinear Kalman Filter algorithms using the well-known state augmentation technique that turns the filter into a dual state and parameter estimator, of which an extension towards nonparametric identification is proposed in the present work.
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A nonparametric identification method for highly nonlinear systems is presented that is able to reconstruct the underlying nonlinearities without a priori knowledge of the describing nonlinear functions. The approach is based on nonlinear Kalman Filter algorithms using the well-known state augmentation technique that turns the filter into a dual state and parameter estimator, of which an extension towards nonparametric identification is proposed in the present work.

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