Partially coupled multi-innovation stochastic gradient type identification methods for multivariate pseudo-linear regressive systems
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    Abstract:

    For multivariate pseudo-linear regressive moving average systems,a multivariate extended stochastic gradient(ESG) algorithm is discussed.In order to reduce the computational cost of the identification algorithm,we decompose a multivariate system into several subsystems,and derive a partially coupled(subsystem) ESG algorithm and a partially coupled(subsystem) multi-innovation ESG algorithm according to the coupling identification concept and the multi-innovation identification theory.Furthermore,we extend these methods to multivariate pseudo-linear autoregressive moving average systems and present a partially coupled(subsystem) generalized extended stochastic gradient(GESG) algorithm and a partially coupled(subsystem) multi-innovation GESG algorithm.The computational efficiencies of the multivariate ESG algorithm,the partially coupled ESG algorithm and the partially coupled multi-innovation ESG algorithm are analyzed.

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DING Feng, WANG Feifei, WANG Xuehai. Partially coupled multi-innovation stochastic gradient type identification methods for multivariate pseudo-linear regressive systems[J]. Journal of Nanjing University of Information Science & Technology,2014,6(2):97-112

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  • Received:April 08,2014
  • Online: April 21,2014
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