Research on Fault Diagnosis of Highway Bi-LSTM Based on Attention Mechanism

Xueyi Li, Kaiyu Su, Qiushi He, Xiangkai Wang, Zhijie Xie
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引用次数: 4

Abstract

Deep groove ball bearings are widely used in rotary machinery. Accurate for bearing faults diagnosis is essential for equipment maintenance. For common depth learning methods, the feature extraction of inverse time domain signal direction and the attention to key features are usually ignored. Based on the long short term memory(LSTM) network, this study proposes an attention-based highway bidirectional long short term memory (AHBi-LSTM) network for fault diagnosis based on the raw vibration signal. By increasing the Attention mechanism and Highway, the ability of the network to extract features is increased. The bidirectional LSTM network simultaneously extracts the raw vibration signal in positive and inverse time-domains to better extract the fault features. Six deep groove ball bearings with different health conditions were used to validate the AHBi-LSTM method in an experiment. The results showed that the accuracy of the proposed method for bearing fault diagnosis was over 98%, which was 8.66% higher than that of the LSTM model. The AHBi-LSTM model is also better than other relevant models for bearing fault diagnosis.
基于注意机制的公路Bi-LSTM故障诊断研究
深沟球轴承广泛应用于旋转机械。准确的轴承故障诊断对设备维护至关重要。在常用的深度学习方法中,往往忽略了逆时域信号方向的特征提取和对关键特征的关注。在长短期记忆(LSTM)网络的基础上,提出了一种基于注意力的公路双向长短期记忆(AHBi-LSTM)网络,用于基于原始振动信号的故障诊断。通过增加注意机制和高速公路,提高了网络提取特征的能力。双向LSTM网络在正时域和逆时域同时提取原始振动信号,更好地提取故障特征。以6个不同健康状态的深沟球轴承为实验对象,验证了AHBi-LSTM方法。结果表明,该方法对轴承故障诊断的准确率达到98%以上,比lstm模型的准确率提高了8.66%。AHBi-LSTM模型在轴承故障诊断方面也优于其他相关模型。
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