基于双向LSTM的齿轮点蚀早期故障诊断

Xueyi Li, Jialin Li, Chengying Zhao, Yongzhi Qu, D. He
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引用次数: 8

摘要

齿轮点蚀故障的早期诊断已受到业界的广泛关注。近几十年来,随着人工神经网络的普及,研究人员将深度学习方法应用于早期齿轮点蚀故障的识别。然而,经典的故障诊断方法通常根据采集信号的时间序列使用深度神经网络。在这种情况下,通常忽略逆时域信号方向的特征提取。针对这一不足,本文在传统的长短期记忆(LSTM)网络的基础上,提出了一种基于原始振动信号的双向LSTM (Bi-LSTM)网络,构建了齿轮早期点蚀故障诊断模型。利用Bi-LSTM网络同时对两个方向的振动信号进行特征提取,以评估齿轮早期点蚀故障的程度,从而更好地从齿轮原始振动信号中提取齿轮点蚀特征。通过实验数据分析,与传统LSTM模型相比,双向LSTM对齿轮早期点蚀故障诊断的分类准确率达到96%以上,提高了4.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Gear Pitting Fault Diagnosis Based on Bi-directional LSTM
The early gear pitting fault diagnosis has received much attention in the industry. In recent decades, with the popularity growth of artificial neural network, researchers have applied deep learning methods to figure out early gear pitting faults. However, the classical fault diagnosis methods usually use deep neural networks according to the time sequence of the collected signals. In this case, the feature extraction in the direction of the inverse time-domain signals is usually ignored. Aimed at overcoming this shortage, ground on a traditional Long Short Term Memory (LSTM) network, this paper proposes a Bidirectional LSTM (Bi-LSTM) to construct a fault diagnosis model of early gear pitting using raw vibration signals. Using the Bi-LSTM network, feature extraction of the vibrational signals in both directions is simultaneously carried out to evaluate the degree of the early gear pitting faults to better extract the gear pitting characteristics from the raw vibration signals of the gear. Through the analysis of the experimental data, compared with the traditional LSTM model, the Bi-directional LSTM has a classification accuracy of over 96% for early gear pitting fault diagnosis, which is an increase of 4.1%.
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