Adaptive Parameter Estimation under Finite Excitation

22 May 2023  ·  Siyu Chen, Jing Na, Yingbo Huang ·

Although persistent excitation is often acknowledged as a sufficient condition to exponentially converge in the field of adaptive parameter estimation, it must be noted that in practical applications this may be unguaranteed. Recently, more attention has turned to another relaxed condition, i.e., finite excitation. In this paper, for a class of nominal nonlinear systems with unknown constant parameters, a novel method that combines the Newton algorithm and the time-varying factor is proposed, which can achieve exponential convergence under finite excitation. First, by introducing pre-filtering, the nominal system is transformed to a linear parameterized form. Then the detailed mathematical derivation is outlined from an estimation error accumulated cost function. And it is given that the theoretical analysis of the proposed method in stability and robustness. Finally, comparative numerical simulations are given to illustrate the superiority of the proposed method.

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