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基于压缩感知非接触测量的斜齿轮箱智能故障诊断

Intelligent fault diagnosis of helical gearboxes with compressive sensing based non-contact measurements.

作者信息

Tang Xiaoli, Xu Yuandong, Sun Xiuquan, Liu Yanfen, Jia Yu, Gu Fengshou, Ball Andrew D

机构信息

School of Engineering and Technology, Aston University, Birmingham B4 7ET, UK.

Dynamics Group, Department of Mechanical Engineering, Imperial College London, London SW7 2AZ, UK.

出版信息

ISA Trans. 2023 Feb;133:559-574. doi: 10.1016/j.isatra.2022.07.020. Epub 2022 Jul 21.

Abstract

Helical gearboxes play a critical role in power transmission of industrial applications. They are vulnerable to various faults due to long-term and heavy-duty operating conditions. To improve the safety and reliability of helical gearboxes, it is necessary to monitor their health conditions and diagnose various types of faults. The conventional measurements for gearbox fault diagnosis mainly include lubricant analysis, vibration, airborne acoustics, thermal images, electrical signals, etc. However, a single domain measurement may lead to unreliable fault diagnosis and the contact installation of transducers is not always accessible, especially in harsh and dangerous environments. In this article, a Compressive Sensing (CS)-based Dual-Channel Convolutional Neural Network (CNN) method was proposed to accurately and intelligently diagnose common gearbox faults based on two complementary non-contact measurements (thermal images and acoustic signals) from a mobile phone. The raw acoustic signals were analysed by the Modulation Signal Bispectrum (MSB) to highlight the coupled modulation components relating to gear faults and suppress the irrelevant components and random noise, which generates a series of two-dimensional matrices as sparse MSB magnitude images. Then, CS was used to reduce the image redundancy but retain key information owing to the high sparsity of thermal images and acoustic MSB images, which significantly accelerates the CNN training speed. The experimental results convincingly demonstrate that the proposed CS-based Dual-Channel CNN method significantly improves the diagnostic accuracy (99.39% on average) of industrial helical gearbox faults compared to the single-channel ones.

摘要

斜齿轮箱在工业应用的动力传输中起着关键作用。由于长期和重载的运行条件,它们容易出现各种故障。为了提高斜齿轮箱的安全性和可靠性,有必要监测其健康状况并诊断各种类型的故障。用于齿轮箱故障诊断的传统测量方法主要包括润滑剂分析、振动、空气声、热图像、电信号等。然而,单一领域的测量可能导致不可靠的故障诊断,并且传感器的接触式安装并不总是可行的,特别是在恶劣和危险的环境中。在本文中,提出了一种基于压缩感知(CS)的双通道卷积神经网络(CNN)方法,以基于来自手机的两种互补非接触测量(热图像和声信号)准确、智能地诊断常见的齿轮箱故障。通过调制信号双谱(MSB)分析原始声信号,以突出与齿轮故障相关的耦合调制分量并抑制无关分量和随机噪声,从而生成一系列二维矩阵作为稀疏MSB幅度图像。然后,由于热图像和声MSB图像的高稀疏性,使用CS来减少图像冗余但保留关键信息,这显著加快了CNN的训练速度。实验结果令人信服地表明,与单通道方法相比,所提出的基于CS的双通道CNN方法显著提高了工业斜齿轮箱故障的诊断准确率(平均99.39%)。

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