On adaptive identification of systems having multiple nonlinearities

N. N. Karabutov
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引用次数: 1

Abstract

Objectives. The solution to the relevant problem of identifying systems with multiple nonlinearities depends on such factors as feedback, ways of connecting nonlinear links, and signal properties. The specifics of nonlinear systems affect control systems design methods. As a rule, the basis for the development of a mathematical model involves the linearization of a system. Under conditions of uncertainty, the identification problem becomes even more relevant. Therefore, the present work sets out to develop an approach to the identification of nonlinear dynamical systems under conditions of uncertainty. In order to obtain a solution to the problem, an adaptive identification method is developed by decomposing the system into subsystems. Methods. Methods applied include the adaptive identification method, implicit identified representation, S-synchronization of a nonlinear system, and the Lyapunov vector function method. Results . A generalization of the excitation constancy condition based on fulfilling the S-synchronizability for a nonlinear system is proposed along with a method for decomposing the system in the output space. Adaptive algorithms are obtained on the basis of the second Lyapunov method. The boundedness of the adaptive system trajectories in parametric and coordinate spaces is demonstrated. Approaches for self-oscillation generation and nonlinear correction of a nonlinear system are considered along with obtained exponential stability conditions for the adaptive system. Conclusions . Simulation results confirm the possibility of applying the proposed approach to solving the problems of adaptive identification while taking the estimation of the structural identifiability (S-synchronization) of the system nonlinear part into account. The influence of the structure and relations of the system on the quality of the obtained parametric estimates is investigated. The proposed methods can be used in developing identification and control systems for complex dynamic systems.
多非线性系统的自适应辨识
目标。辨识多重非线性系统的相关问题的解决取决于反馈、非线性链路的连接方式和信号特性等因素。非线性系统的特性影响着控制系统的设计方法。通常,建立数学模型的基础涉及系统的线性化。在不确定的条件下,识别问题变得更加相关。因此,目前的工作旨在开发一种在不确定条件下识别非线性动力系统的方法。为了求解这一问题,提出了一种将系统分解为多个子系统的自适应辨识方法。方法。应用的方法包括自适应辨识法、隐式辨识表示、非线性系统的s -同步和李雅普诺夫向量函数法。结果。提出了一种基于满足s同步性的非线性系统激励恒定条件的推广方法,并给出了系统在输出空间的分解方法。在第二李雅普诺夫方法的基础上得到了自适应算法。证明了自适应系统轨迹在参数空间和坐标空间中的有界性。研究了非线性系统的自振荡产生和非线性校正方法,得到了自适应系统的指数稳定性条件。结论。仿真结果验证了该方法在考虑系统非线性部分的结构可辨识性(s同步)估计的情况下解决自适应辨识问题的可能性。研究了系统的结构和关系对得到的参数估计质量的影响。该方法可用于开发复杂动态系统的辨识和控制系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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