Darányi András, Abonyi János
HUN-REN-PE Complex Systems Monitoring Research Group, Department of Process Engineering, University of Pannonia, Egyetem u. 10, P.O. Box 158, H-8200 Veszprem, Hungary.
Sensors (Basel). 2024 Jan 23;24(3):719. doi: 10.3390/s24030719.
This paper proposes a monitoring procedure based on characterizing state probability distributions estimated using particle filters. The work highlights what types of information can be obtained during state estimation and how the revealed information helps to solve fault diagnosis tasks. If a failure is present in the system, the output predicted by the model is inconsistent with the actual output, which affects the operation of the estimator. The heterogeneity of the probability distribution of states increases, and a large proportion of the particles lose their information content. The correlation structure of the posterior probability density can also be altered by failures. The proposed method uses various indicators that characterize the heterogeneity and correlation structure of the state distribution, as well as the consistency between model predictions and observed behavior, to identify the effects of failures.The applicability of the utilized measures is demonstrated through a dynamic vehicle model, where actuator and sensor failure scenarios are investigated.
本文提出了一种基于表征使用粒子滤波器估计的状态概率分布的监测程序。这项工作突出了在状态估计期间可以获得哪些类型的信息,以及所揭示的信息如何有助于解决故障诊断任务。如果系统中存在故障,模型预测的输出与实际输出不一致,这会影响估计器的运行。状态概率分布的异质性增加,并且很大一部分粒子失去其信息内容。后验概率密度的相关结构也可能因故障而改变。所提出的方法使用各种指标来表征状态分布的异质性和相关结构,以及模型预测与观察到的行为之间的一致性,以识别故障的影响。通过一个动态车辆模型证明了所采用措施的适用性,其中研究了执行器和传感器故障场景。