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AeroGPT:利用大规模音频模型进行航空发动机轴承故障诊断

AeroGPT: Leveraging Large-Scale Audio Model for Aero-Engine Bearing Fault Diagnosis

IEEE Transactions on Cybernetics · 2026
被引 1 · 同刊同年前 4%
ABS 3

中文导读

提出AeroGPT框架,利用大规模音频模型和振动信号对齐技术,直接生成可解释的故障标签,在航空发动机轴承数据集上达到98.94%和100%的准确率,无需后处理。

Abstract

Aerospace engines, as critical components in the aviation and aerospace industries, require continuous and accurate fault diagnosis to ensure operational safety and prevent catastrophic failures. While deep learning techniques have been extensively studied in this context, they typically output logits or confidence scores, necessitating postprocessing to obtain actionable insights. Furthermore, the potential of large-scale audio models for this task remains largely untapped. To address these limitations, this article proposes AeroGPT, a novel framework that transfers knowledge from the general audio domain to aero-engine bearing fault diagnosis. AeroGPT leverages a large-scale audio model and incorporates vibration signal alignment (VSA) to adapt general audio knowledge to domain-specific vibration patterns, along with generative fault classification (GFC) to directly generate interpretable fault labels. This approach eliminates the need for label postprocessing and supports interactive, interpretable, and actionable fault diagnosis, thereby enhancing industrial applicability. Through comprehensive experimental validation on two aero-engine bearing datasets, AeroGPT achieves 98.94% accuracy on the Dynamic and Identification Research Group (DIRG) dataset and 100% accuracy on Harbin Institute of Technology (HIT) bearing dataset, outperforming representative deep learning approaches. Qualitative analysis and further discussion also demonstrate its potential for interactive diagnosis and real-world deployment, highlighting the promise of large-scale audio models to advance fault diagnosis in aerospace applications.

航空发动机故障诊断深度学习音频信号处理轴承