Reassigned wavelet scalogram for gear fault detection under nonstationary operational conditions

Xiaowang Chen, Zhipeng Feng, Chuan Zhao
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引用次数: 0

Abstract

Gear transmission systems have extensive use in wind turbines, helicopters and heavy trucks, and their fault detection is of vital importance for ensuring industrial safety. However, they often run under non stationary conditions, which accelerate the mechanical deterioration and meanwhile result in time-varying characteristics which can barely be identified through time or frequency domain analysis. Time-frequency analysis is often utilized to provide intuitive presentation of time and frequency information concurrently, yet limited time-frequency resolution and cross-term/inner interferences hinder the accurate fault identification by conventional linear or bilinear methods. In this paper the reassigned wavelet scalogram, which has merits of fine time-frequency resolution and cross-term free nature, is applied to reveal potential gear fault under non stationary conditions. Its advantage over traditional time-frequency representations is demonstrated using a numerical simulated gearbox vibration signal, and results of lab experimental evaluation indicate that real-world gear fault is successfully diagnosed.
非平稳工况下齿轮故障检测的小波变换
齿轮传动系统在风力涡轮机、直升机和重型卡车中有着广泛的应用,其故障检测对于确保工业安全至关重要。然而,它们往往在非平稳条件下运行,这加速了机械性能的劣化,同时也导致了时变特性,这些特性很难通过时域或频域分析来识别。通常利用时频分析同时提供时间和频率信息的直观表示,但传统线性或双线性方法的时频分辨率有限和交叉项/内干扰阻碍了故障的准确识别。本文将具有时频分辨率高、跨项自由等优点的重分配小波尺度图应用于非平稳工况下齿轮潜在故障的揭示。通过对齿轮箱振动信号的数值模拟,证明了该方法优于传统时频表示方法的优点,并通过实验室实验验证了该方法对实际齿轮故障的诊断效果。
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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