In fault detection and diagnosis of prognostics and health management (PHM) systems, most of the methodologies utilize machine learning (ML) or deep learning (DL) through which either some features are extracted beforehand (in the case of ML) or filters are used to extract features autonomously (in case of DL) to perform the critical classification task. Particularly in the fault detection and diagnosis of industrial robots where electric current, vibration or acoustic emissions signals are the primary sources of information, a feature domain that can map the signals into their constituent components with compressed information at different levels can reduce the complexities and size of typical ML and DL-based frameworks. The Deep Scattering Spectrum (DSS) is one of the strategies that use the Wavelet Transform (WT) analogy to separate and extract the information encoded in a signal's various temporal and frequency domains. As a result, the focus of this work is on the study of the DSS's relevance to fault detection and daignosis for mechanical components of industrail robots. We used multiple industrial robots and distinct mechanical faults to build an approach for classifying the faults using low-variance features extracted from the input signals. The presented approach was implemented on the practical test benches and demonstrated satisfactory performance in fault detection and diagnosis for simple and complex classification problems with a classification accuracy of 99.7% and 88.1%, respectively.
翻译:在检测和诊断预测和健康管理系统(PHM)的错误时,大多数方法都使用机器学习或深层次学习(DL),通过这些方法事先提取某些特征(在ML的情况下)或过滤器自动提取特征(在DL的情况下),以完成关键的分类任务。特别是在检测和诊断工业机器人的错误时,电流、振动或声学排放信号是信息的主要来源,一个能够用不同层次的压缩信息将信号映射到其组成部分的特征域可以减少典型的 ML 和 DL 框架的复杂性和规模。深度散射谱(DSS)是使用Wavelet 变换(WT)类比的战略之一,用来分离和提取在信号的不同时间和频率域中编码的信息。结果,这项工作的重点是研究DSS对工业机器人机械部件的错误检测和光度的关联性能。我们使用多种工业机器人和独特的机械故障来分别构建一个精确度方法,用以用低变量进行精确度检测和精确度等级分析。