2024
DOI: 10.1007/s13369-024-09842-5
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Enhanced Fault Classification in Bearings: A Multi-Domain Feature Extraction Approach with LSTM-Attention and LASSO

Ayşenur Hatipoğlu,
Meltem Süpürtülü,
Ersen Yılmaz

Abstract: In various engineering fields, bearings are crucial for the operation of rotating machinery. Therefore, the early and precise detection of bearing failures is essential to prevent mechanical issues and maintain optimal machinery performance. This study proposes a fault classification framework based on multi-domain feature extraction, the least absolute shrinkage and selection operator method, long-short term memory, and the self-attention mechanism. Fifteen time-domain, five frequency-domain, and four chaotic… Show more

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