Comparative Analysis of Parameter Convergence for Several Least-Squares Estimation Schemes

成果类型:
Article
署名作者:
Pan, Yongping; Shi, Tian; Ortega, Romeo
署名单位:
Sun Yat Sen University; Sun Yat Sen University; Instituto Tecnologico Autonomo de Mexico
刊物名称:
IEEE TRANSACTIONS ON AUTOMATIC CONTROL
ISSN/ISSBN:
0018-9286
DOI:
10.1109/TAC.2023.3326054
发表日期:
2024
页码:
3341-3348
关键词:
adaptive control closed-loop identification least-squares estimation nonlinear parametrization
摘要:
Least-squares parameter estimation is important in system identification and adaptive control owing to its enhanced performance and robustness compared to gradient-descent parameter estimation. Based on a unified class of uncertain nonlinear systems, we introduce the standard least-squares estimator (LSE) and six variations from the old to the latest ones, namely a filterless LSE, a high-gain LSE, a filtered high-gain LSE, a finite-time LSE, a dynamic regressor extension and mixing (DREM)-based LSE, and a composite learning LSE. A unique and in-depth comparative analysis of these LSEs is provided to reveal their technical natures and clarify several theoretical misunderstandings. Besides, it is demonstrated that only the finite-time LSE, DREM-LSE, and composite learning LSE can achieve parameter convergence under sufficient excitation that is strictly weaker than persistent excitation, and they can also be easily extended to the case with nonlinear-in-the-parameters uncertainties. Comprehensive simulation comparisons have verified the above theoretical findings.
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