Abstract
Recently, data-driven approaches have been extensively used in fault diagnosis. However, most existing methods are based on single-sensor fault data, which is hard to suit for complex industrial systems. Extracting complementary fault features from multi-sensor monitoring data is imperative, especially under limited labeled samples. Inspired by the success of self-supervised learning in handling unlabeled data, we propose a cross-sensor contrastive learning-based pre-training method for machinery fault diagnosis under sample-limited conditions. In the initial pre-training phase, we introduce an innovative cross-sensor contrastive framework to capture complementary features among different sensors for enhancing the acquisition of discriminative fault features. Then, in the fine-tuning phase, a novel cross-sensor interactive attention is designed for effective feature fusion to provide a more robust feature representation. The proposed method is validated on three benchmark datasets, demonstrating superior diagnostic performance under limited labeled samples and well-adapted to different working conditions.
| Original language | English |
|---|---|
| Article number | 113075 |
| Journal | Knowledge-Based Systems |
| Volume | 311 |
| DOIs | |
| State | Published - 28 Feb 2025 |
Keywords
- Cross-sensor fusion
- Fault diagnosis
- Pre-training
- Sample-limited
- Self-supervised learning
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