An ensemble of convolution-based methods for fault detection using vibration signals

Xian Yeow Lee, Aman Kumar, L. Vidyaratne, Aniruddha Rajendra Rao, Ahmed K. Farahat, Chetan R. Gupta
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引用次数: 1

Abstract

This paper focuses on solving a fault detection problem using multivariate time series of vibration signals collected from planetary gearboxes in a test rig. Various traditional machine learning and deep learning methods have been proposed for multivariate time-series classification, including distance-based, functional data-oriented, feature-driven, and convolution kernel-based methods. Recent studies have shown using convolution kernel-based methods like ROCKET, and 1D convolutional neural networks with ResNet and FCN, have robust performance for multivariate time-series data classification. We propose an ensemble of three convolution kernel-based methods and show its efficacy on this fault detection problem by outperforming other approaches and achieving an accuracy of more than 98.8%.
基于卷积的振动信号故障检测方法集成
研究了利用某试验台行星齿轮箱振动信号的多元时间序列进行故障检测的问题。各种传统的机器学习和深度学习方法已经被提出用于多变量时间序列分类,包括基于距离的、面向功能数据的、特征驱动的和基于卷积核的方法。最近的研究表明,使用基于卷积核的方法,如ROCKET,以及带有ResNet和FCN的1D卷积神经网络,对多变量时间序列数据分类具有鲁棒性。我们提出了一种基于卷积核的三种方法的集成,并证明了它在故障检测问题上的有效性,优于其他方法,准确率超过98.8%。
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