An approach to out-of-sequence measurements in feedback control systems

D. Pachner, V. Havlena
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引用次数: 3

Abstract

Complex communication network architectures are becoming more frequent in control applications. In such networked control systems, it is often the case that information on process variables is received out-of-time-order. This paper presents a Bayesian approach to handling this out-of-sequence information problem. Such approach leads to a solution involving the joint probability density of current state and past measurements not yet received. Under linear Gaussian assumptions, the Bayesian solution reduces to an augmented state Kalman filter. Our approach augments the state dynamically based on the list of missing observations. As this solution can be time and memory consuming, two simplified implementations of the algorithm are presented.
反馈控制系统中的乱序测量方法
复杂的通信网络结构在控制应用中越来越常见。在这种网络化控制系统中,过程变量信息的接收往往是无序的。本文提出了一种贝叶斯方法来处理这种无序信息问题。这种方法导致了一个涉及当前状态和过去尚未收到的测量的联合概率密度的解决方案。在线性高斯假设下,贝叶斯解简化为增广状态卡尔曼滤波。我们的方法基于缺失观测值的列表动态地增强状态。由于这种解决方案可能会消耗时间和内存,因此提出了两种简化的算法实现。
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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