线性系统滑动观测器设计与稳定性的新方法

Y. Wong, Z. Man, Jinchuan Zheng, Q. Han, Jiong Jin
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引用次数: 1

摘要

滑动观测器最早由Slotine在20世纪80年代中期提出,并从机器学习的角度进行了详细的探讨。一个由领导系统和多个追随者组成的君主强制学习概念被引入到命名的观察者中。在学习过程中,领导者作为一个榜样,表现出有限收敛性,让追随者学习。通过在每个follower子系统中使用加权切换函数,强迫学习允许follower模仿leader的收敛行为,从而实现各自的有限时间收敛。在此基础上,结合Lyapunov稳定性定理,采用映射函数的思想,提出了一种新的设计方法,大大简化了滑动观测器的设计过程。最重要的是,该方法从整体上证明了滑动观测器存在有限时间收敛性。数值算例验证了理论分析的正确性。
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A New Approach to Sliding Observer Design and Stability for Linear System
The sliding observer, first introduced by Slotine in mid-1980s, is explored in details from the viewpoint of machine learning. A monarchacial forced learning concept that consists of a leading system and multiple followers is introduced to the named observer. In the learning process, the leader acts as a role model, which exhibits finite convergence property, for the followers to learn. By employing the weighted switching functions in each of the followers' subsystem, forced learning allows the followers to imitate the leader's convergence behaviour, thus, achieving their respective finite-time convergence. On the basis of this concept, a new design method, which greatly simplifies the process of sliding observer design, is proposed by adopting the idea of mapping functions in conjunction with Lyapunov stability theorem. Of the utmost importance, this method proves the existence of finite-time convergence property in the sliding observer as a whole. Numerical examples are presented to verify the theoretical analysis.
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