Recursive System Identification by Stochastic Approximation

نویسنده

  • HAN-FU CHEN
چکیده

The convergence theorems for the stochastic approximation (SA) algorithm with expanding truncations are first presented, which the system identification methods discussed in the paper are essentially based on. Then, the recursive identification algorithms are respectively defined for the multivariate errors-in-variables systems, Hammerstein systems, and Wiener systems. All estimates given in the paper are strongly consistent.

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تاریخ انتشار 2007