The stochastic gradient identification algorithm has slow convergence rates. This paper presents a modified stochastic gradient algorithm by introducing a convergence index in order to improve the convergence rate of the parameter estimation. The parameter estimation accuracy can be enhanced by choosing the convergence index and a numerical example shows that the proposed method is efficient.
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