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首页> 外文期刊>International Journal of Adaptive Control and Signal Processing >Persistent tracking and identification of regime-switching systems with structural uncertainties: unmodeled dynamics, observation bias, and nonlinear model mismatch
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Persistent tracking and identification of regime-switching systems with structural uncertainties: unmodeled dynamics, observation bias, and nonlinear model mismatch

机译:具有结构不确定性的状态切换系统的持久跟踪和识别:未建模的动力学,观测偏差和非线性模型不匹配

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摘要

This work focuses on tracking and system identification of systems with regime-switching parameters, which are modeled by a Markov process. It introduces a framework for persistent identification problems that encompass many typical system uncertainties, including parameter switching, stochastic observation disturbances, deterministic unmodeled dynamics, sensor observation bias, and nonlinear model mismatch. In accordance with the 'frequency' of the parameter switching process, we divide the problems into two classes. For fast-switching systems, the switching parameters are stochastic processes modeled by irreducible and aperiodic Markov chains. Because accurately tracking real-time parameters in such systems is not possible because of the uncertainty principles, the effect of parameter switching is evaluated on their average by the stationary distribution of the Markovian chain and estimated by the least squares algorithms. We derive upper and lower bounds on identification errors, which characterize how identification accuracy depends on the earlier uncertainty terms. When the system parameters switch their values infrequently in a probabilistic sense, their values can be tracked based on input/output observations. Stochastic approximation algorithms with adaptive step sizes are used for such systems. Simulation studies are carried out to demonstrate that slowly varying parameters could be tracked with reasonable accuracy.
机译:这项工作的重点是通过Markov流程对具有状态切换参数的系统进行跟踪和系统识别。它介绍了一个持久识别问题的框架,该框架包含许多典型的系统不确定性,包括参数切换,随机观测干扰,确定性未建模动力学,传感器观测偏差和非线性模型不匹配。根据参数切换过程的“频率”,我们将问题分为两类。对于快速切换系统,切换参数是由不可约和非周期性马尔可夫链建模的随机过程。由于不确定性原理,由于无法在此类系统中准确跟踪实时参数,因此,通过马尔可夫链的平稳分布对参数切换的效果进行平均评估,并通过最小二乘算法对其进行估算。我们推导了识别错误的上限和下限,它们表征了识别准确性如何取决于早期的不确定性项。当系统参数在概率意义上很少切换其值时,可以基于输入/输出观察来跟踪其值。具有自适应步长的随机逼近算法用于此类系统。进行仿真研究以证明可以以合理的精度跟踪缓慢变化的参数。

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