ALMformer: a modified Transformer based on Adaptive frequency enhanced attention, large kernel convolution, and multi-scale implementation for bearing fault diagnosis

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Abstract

Bearing fault diagnosis has attracted increasing attention due to its critical role in monitoring the health of rotating machinery. Data-driven models based on deep learning (DL) have demonstrated powerful capabilities in feature extraction. However, their performance often degrades under strong noise interference, limiting their applicability in real-world industrial scenarios. To address this issue, this paper proposes a novel attention-enhanced Transformer model that integrates large-kernel convolution and multi-scale CNN structures for robust fault diagnosis. The proposed framework effectively combines spatial-temporal feature modeling with adaptive frequency-domain enhancement, enabling it to suppress noise and emphasize informative diagnostic features. Experimental results on the Paderborn University and Case Western Reserve University datasets show that the proposed method achieves superior recognition accuracy under various signal-to-noise ratios, outperforming several state-of-the-art models. Furthermore, ablation studies and visualization analyses validate the effectiveness and rationality of the proposed architecture.

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