Long short-term memory based fault diagnosis of rolling element bearings using vibration signals

振动 结构工程 期限(时间) 断层(地质) 方位(导航) 工程类 滚动轴承 要素(刑法) 计算机科学 控制理论(社会学) 声学 物理 地质学 人工智能 量子力学 地震学 法学 控制(管理) 政治学
作者
Devendra Sahu,Ritesh Kumar Dewangan,Surendra Pal Singh Matharu
出处
期刊:Journal of Vibration and Control [SAGE Publishing]
卷期号:32 (9-10): 2116-2127 被引量:2
标识
DOI:10.1177/10775463251328176
摘要

The reliable and efficient operation of rotating machinery in various industries relies on the condition of bearings, which play a crucial role in reducing friction, supporting loads, preventing wear, and extending equipment lifespan. However, accurate and timely fault detection of bearings is essential to ensure smooth system performance and prevent unexpected failures. This study presents an integrated approach using Long Short-Term Memory (LSTM) networks and Empirical Mode Decomposition (EMD) to enhance the diagnostic accuracy for fault diagnosis of rolling element bearings. The experiment involved operating a test rig over 2000 h in a controlled environment at a constant 800 r/min speed and 2.1 kN load to induce gradual wear defects on the bearing surface. Vibration signals were acquired at various stages of the experiment. The EMD enhanced the acquired signal and selected the optimum Intrinsic mode function (IMF) using the maximum energy ratio method, these signals were used to implement the LSTM model to classify the various stages of bearing faults. The model was evaluated using accuracy, confusion matrix, and t-SNE visualization, achieving an average prediction accuracy of 96.6%. The findings suggest that the proposed model provides a reliable diagnostic tool to enhance fault diagnosis accuracy in rolling element bearings.
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