Identification of combined sensor faults in structural health monitoring systems

Heba Al-Nasser, Thamer Al-Zuriqat, K. Dragos, Carlos Chillón Geck, Kay Smarsly
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Abstract

Fault diagnosis (FD), comprising fault detection, isolation, identification and accommodation, enables structural health monitoring (SHM) systems to operate reliably by allowing timely rectification of sensor faults that may cause data corruption or loss. Although sensor fault identification is scarce in FD of SHM systems, recent FD methods have included fault identification assuming one sensor fault at a time. However, real-world SHM systems may include combined faults that simultaneously affect individual sensors. This paper presents a methodology for identifying combined sensor faults occurring simultaneously in individual sensors. To improve the quality of FD and comprehend the causes leading to sensor faults, the identification of combined sensor faults (ICSF) methodology is based on a formal classification of the types of combined sensor faults. Specifically, the ICSF methodology builds upon long short-term memory networks, i.e. a type of recurrent neural networks, used for classifying “sequences”, such as sets of acceleration measurements. The ICSF methodology is validated using real-world acceleration measurements from an SHM system installed on a bridge, demonstrating the capability of the long short-term memory networks in identifying combined sensor faults, thus improving the quality of FD in SHM systems. Future research aims to decentralize the ICSF methodology and to reformulate the classification models in a mathematical form with an explanation interface, using explainable artificial intelligence, for increased transparency.
识别结构健康监测系统中的组合传感器故障
故障诊断(FD)包括故障检测、隔离、识别和排除,通过及时排除可能导致数据损坏或丢失的传感器故障,使结构健康监测(SHM)系统能够可靠运行。虽然传感器故障识别在结构健康监测(SHM)系统的故障诊断中并不多见,但最近的故障诊断方法都包括假设一次只发生一个传感器故障的故障识别。然而,现实世界中的 SHM 系统可能包括同时影响单个传感器的组合故障。本文介绍了一种识别同时发生在单个传感器上的组合传感器故障的方法。为提高 FD 质量并理解导致传感器故障的原因,组合传感器故障识别 (ICSF) 方法基于对组合传感器故障类型的正式分类。具体来说,ICSF 方法基于长短期记忆网络,即一种用于对加速度测量集等 "序列 "进行分类的递归神经网络。ICSF 方法利用安装在桥梁上的 SHM 系统的实际加速度测量数据进行了验证,证明了长短期记忆网络在识别组合传感器故障方面的能力,从而提高了 SHM 系统的 FD 质量。未来研究的目标是将 ICSF 方法分散化,并利用可解释的人工智能,以数学形式重新制定带有解释界面的分类模型,以提高透明度。
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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