论文标题

深层散射光谱德语对组件级预后和健康管理(PHM)的故障检测和诊断(PHM)

Deep Scattering Spectrum germaneness to Fault Detection and Diagnosis for Component-level Prognostics and Health Management (PHM)

论文作者

Rohan, Ali

论文摘要

在预测和健康管理(PHM)系统的故障检测和诊断中,大多数方法都利用机器学习(ML)或深度学习(DL)(在ML的情况下提取某些特征或过滤器)自动提取特征(在DL的情况下(对于DL)来执行重要分类任务。特别是在对工业机器人的断层检测和诊断中,电流,振动或声学信号是信息的主要来源,该特征域可以将信号映射到其成分组件中具有不同级别的压缩信息可以减少典型ML和DL基于基于ML和DL的框架的大小。深散射光谱(DSS)是使用小波变换(WT)类比来分开并提取信号各种时间和频域中编码的信息的策略之一。结果,这项工作的重点是研究DSS与工业机器人机械组件的故障检测和措施的相关性。我们使用多个工业机器人和不同的机械故障来建立一种方法,以使用从输入信号中提取的低变化功能对故障进行分类。提出的方法是在实际的测试台上实施的,并在简单且复杂的分类问题中表现出令人满意的性能,分别为99.7%和88.1%。

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.

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