基于传递分量分析的齿轮箱多工况故障诊断跨域特征融合

Junyao Xie, Laibin Zhang, Li-xiang Duan, Jinjiang Wang
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引用次数: 91

摘要

利用传递分量分析(TCA)的谱包络预处理和时域同步平均原理,从时域和频域进行跨域特征提取和融合,用于齿轮箱故障诊断。考虑到TCA是基于核方法开发的,在齿轮箱试验台各种工况下的综合实验中,研究了高斯核、线性核、多项式核和PolyPlus核等不同核对TCA性能的影响。实验结果表明,与其他基线降维方法相比,该方法可以有效地提取和融合齿轮箱工况的跨域特征,增强了各种工况下历史数据的重用性。此外,具有高斯核的TCA具有最佳的性能,特别是对于低频操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On cross-domain feature fusion in gearbox fault diagnosis under various operating conditions based on Transfer Component Analysis
This paper addresses the cross-domain feature extraction and fusion from time-domain and frequency-domain with spectrum envelop preprocessing and time domain synchronization average principle using Transfer Component Analysis (TCA) for gearbox fault diagnosis. Considering TCA is developed based on kernel methods, the effects of different kernels including Gaussian kernel, Linear kernel, Polynomial kernel and PolyPlus kernel on the performance of TCA are investigated and evaluated in comprehensive experiments of gearbox testbed under various operating conditions. The experimental results show that the presented method can extract and fuse the cross-domain features of gearbox conditions by enhancing the reuse of historical data under various operating conditions efficiently, compared with other baseline dimension reduction methods. In addition, TCA with Gaussian kernel presents best performance, especially for low frequency levels of operation.
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