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Bi-directional digital twin prototype anchoring with multi-periodicity learning for few-shot fault diagnosis

arXiv:2603.07054v1
Predicted impact top 82% in AI · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses the critical problem of intelligent fault diagnosis in industrial machinery when only extremely limited labeled data is available, which is a significant challenge for industrial practitioners.

This paper proposes a bi-directional digital twin prototype anchoring method with multi-periodicity learning for intelligent fault diagnosis in few-shot scenarios. The method constructs a framework for meta-training in a digital twin virtual space and test-time adaptation in the physical space, demonstrating superiority and effectiveness in experiments on an asynchronous motor under multiple few-shot settings and three working conditions.

Intelligent fault diagnosis (IFD) has emerged as a powerful paradigm for ensuring the safety and reliability of industrial machinery. However, traditional IFD methods rely heavily on abundant labeled data for training, which is often difficult to obtain in practical industrial environments. Constructing a digital twin (DT) of the physical asset to obtain simulation data has therefore become a promising alternative. Nevertheless, existing DT-assisted diagnosis methods mainly transfer diagnostic knowledge through domain adaptation techniques, which still require a considerable amount of unlabeled data from the target asset. To address the challenges in few-shot scenarios where only extremely limited samples are available, a bi-directional DT prototype anchoring method with multi-periodicity learning is proposed. Specifically, a framework involving meta-training in the DT virtual space and test-time adaptation in the physical space is constructed for reliable few-shot model adaptation for the target asset. A bi-directional twin-domain prototype anchoring strategy with covariance-guided augmentation for adaptation is further developed to improve the robustness of prototype estimation. In addition, a multi-periodicity feature learning module is designed to capture the intrinsic periodic characteristics within current signals. A DT of an asynchronous motor is built based on finite element method, and experiments are conducted under multiple few-shot settings and three working conditions. Comparative and ablation studies demonstrate the superiority and effectiveness of the proposed method for few-shot fault diagnosis.

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