Observer/Kalman filter identification with support vector machines Online publication date: Mon, 20-Jun-2022
by Sinchai Chinvorarat; Chien-Hsun Kuo
International Journal of Modelling, Identification and Control (IJMIC), Vol. 39, No. 2, 2021
Abstract: This paper presents a novel identification filter by utilising the SVM technique with the OKID to identify the nonlinear dynamic system. The proposed filter increases the identifiability and accuracy of the state space realisation model. By integrating the SVM with the OKID in a single identification block, the rich training input and output data from the dynamic system are fed into the identification block and start computing the hyperplane classifier with a radial basis kernel function as a nonlinear mapping function. The algorithm can determine nonlinear signals (noise) from the hyperplane parameters. The modified input-output data determined by filtering out nonlinear signals from the dynamic system output are used for the OKID filter. Since the proposed SVM/OKID filter identifies the discrete model from the nearly un-noise signals, it demonstrates high accuracy in identifying the nonlinear dynamic system over the regular OKID.
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