Recent Advance on State Estimation of Stochastic Hybrid Systems

L. Wang
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Abstract

This presentation summarizes some recent progress on observability and observer design for stochastic hybrid systems in which all subsystems are unobservable. Such hybrid systems capture the emerging technologies on networked systems in which capabilities of individual sensing devices are highly limited and cannot provide sufficient information for estimating the entire states of the system. A central operator needs to combine information from different sensing systems to obtain information on the states of the entire system. The notion of stochastic observability, its probabilistic descriptions, design methods for subsystem observers, and their organization for estimating the entire state are discussed. Convergence properties are established, including strong convergence and exponential convergence rate. Estimation error probabilities under finite data are derived by using the large deviation principles.
随机混合系统状态估计研究进展
本文综述了所有子系统都不可观测的随机混合系统的可观测性和观测器设计的一些最新进展。这种混合系统捕捉了网络系统上的新兴技术,其中单个传感设备的能力非常有限,无法提供足够的信息来估计系统的整个状态。中央操作员需要将来自不同传感系统的信息结合起来,以获得整个系统的状态信息。讨论了随机可观测性的概念、随机可观测性的概率描述、子系统观测器的设计方法以及用于估计系统整体状态的观测器组织。建立了收敛性,包括强收敛性和指数收敛率。利用大偏差原理推导了有限数据下的估计误差概率。
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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