Self-organising symbolic aggregate approximation for real-time fault detection and diagnosis in transient dynamic systems

M. Gallimore, C. Bingham, M. Riley
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引用次数: 2

Abstract

The development of accurate fault detection and diagnosis (FDD) techniques are an important aspect of monitoring system health, whether it be an industrial machine or human system. In FDD systems where real-time or mobile monitoring is required there is a need to minimise computational overhead whilst maintaining detection and diagnosis accuracy. Symbolic Aggregate Approximation (SAX) is one such method, whereby reduced representations of signals are used to create symbolic representations for similarity search. Data reduction is achieved through application of the Piecewise Aggregate Approximation (PAA) algorithm. However, this can often lead to the loss of key information characteristics resulting in misclassification of signal types and a high risk of false alarms. This paper proposes a novel methodology based on SAX for generating more accurate symbolic representations, called Self-Organising Symbolic Aggregate Approximation (SOSAX). Data reduction is achieved through the application of an optimised PAA algorithm, Self-Organising Piecewise Aggregate Approximation (SOPAA). The approach is validated through the classification of electrocardiogram (ECG) signals where it is shown to outperform standard SAX in terms of inter-class separation and intra-class distance of signal types.
基于自组织符号聚合逼近的暂态动态系统实时故障检测与诊断
发展准确的故障检测和诊断技术是监测系统健康状况的一个重要方面,无论是工业机器还是人类系统。在需要实时或移动监测的FDD系统中,需要在保持检测和诊断准确性的同时最大限度地减少计算开销。符号聚合近似(SAX)就是这样一种方法,它使用简化的信号表示来创建用于相似性搜索的符号表示。数据约简是通过应用分段聚合近似(PAA)算法实现的。然而,这通常会导致关键信息特征的丢失,从而导致信号类型的错误分类和高误报风险。本文提出了一种基于SAX生成更精确符号表示的新方法,称为自组织符号聚合近似(SOSAX)。数据缩减是通过应用一种优化的PAA算法,自组织分段聚合近似(SOPAA)来实现的。通过心电图(ECG)信号的分类验证了该方法,在信号类型的类间分离和类内距离方面,该方法优于标准SAX。
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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