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Data-driven recursive least squares methods for non-affined nonlinear discrete-time systems

机译:非固定非线性离散时间系统的数据驱动递推最小二乘法

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摘要

Aiming at identifying nonlinear systems, one of the most challenging problems in system identification, a class of data-driven recursive least squares algorithms are presented in this work. First, a full form dynamic linearization based linear data model for nonlinear systems is derived. Consequently, a full form dynamic linearization-based data-driven recursive least squares identification method for estimating the unknown parameter of the obtained linear data model is proposed along with convergence analysis and prediction of the outputs subject to stochastic noises. Furthermore, a partial form dynamic linearization-based data-driven recursive least squares identification algorithm is also developed as a special case of the full form dynamic linearization based algorithm. The proposed two identification algorithms for the nonlinear nonaffine discrete-time systems are flexible in applications without relying on any explicit mechanism model information of the systems. Additionally, the number of the parameters in the obtained linear data model can be tuned flexibly to reduce computation complexity. The validity of the two identification algorithms is verified by rigorous theoretical analysis and simulation studies.
机译:为了识别非线性系统,这是系统识别中最具挑战性的问题之一,本文提出了一类数据驱动的递归最小二乘算法。首先,针对非线性系统,推导了基于完整动态线性化的线性数据模型。因此,提出了一种用于估计获得的线性数据模型的未知参数的,基于动态线性化的完整形式的基于数据驱动的递归最小二乘辨识方法,以及收敛分析和预测受随机噪声影响的输出。此外,还开发了基于局部形式动态线性化的数据驱动递归最小二乘识别算法,作为基于形式动态线性化算法的特例。针对非线性非仿射离散时间系统提出的两种识别算法在应用中具有灵活性,而无需依赖于系统的任何明确的机理模型信息。另外,可以灵活地调整获得的线性数据模型中参数的数量,以减少计算复杂性。严格的理论分析和仿真研究验证了两种识别算法的有效性。

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