Litcius/Paper detail

A Multi-Level Fusion Framework for Bearing Fault Diagnosis Using Multi-Source Information

Xiaojun Deng, Yuanhao Sun, Lin Li, Peng Xia

2025Processes9 citationsDOIOpen Access PDF

Abstract

Rotating machinery is essential to modern industrial systems, where rolling bearings play a critical role in ensuring mechanical stability and operational efficiency. Failures in bearings can result in serious safety risks and significant financial losses, which highlights the need for accurate and robust methods for diagnosing bearing faults. Traditional diagnostic methods relying on single-source data often fail to fully leverage the rich information provided by multiple sensors and are more prone to performance degradation under noisy conditions. Therefore, this paper proposes a novel bearing fault diagnosis method based on a multi-level fusion framework. First, the Symmetrized Dot Pattern (SDP) method is applied to fuse multi-source signals into unified SDP images, enabling effective fusion at the data level. Then, a combination of RepLKNet and Bidirectional Gated Recurrent Unit (BiGRU) networks extracts multi-modal features, which are then fused through a cross-attention mechanism to enhance feature representation. Finally, information entropy is utilized to assess the reliability of each feature channel, enabling dynamic weighting to further strengthen model robustness. The experiments conducted on public datasets and noise-augmented datasets demonstrate that the proposed method significantly surpasses other single-source and multi-source data fusion models in terms of diagnostic accuracy and robustness to noise.

Topics & Concepts

Bearing (navigation)Information fusionFault (geology)Computer scienceFusionArtificial intelligenceGeologySeismologyLinguisticsPhilosophyMachine Fault Diagnosis TechniquesFault Detection and Control SystemsAdvanced Computational Techniques and Applications