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面向标签噪声鲁棒的时序分类方法:基于自监督标签校正

Label-Noise-Resistant Time-Series Classification With Self-Supervised Label Correction

作者 Yimeng He · Zidong Wang · Weibo Liu · Jingzhong Fang · Linwei Chen · Zhihuan Song
期刊 IEEE Transactions on Industrial Informatics
出版日期 2025年11月
卷/期 第 22 卷 第 2 期
技术分类 智能化与AI应用
技术标签 故障诊断 深度学习 机器学习 智能化与AI应用
相关度评分 ★★★★ 4.0 / 5.0
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中文摘要

工业系统可靠运行依赖精准的故障分类,但历史数据常含标签噪声,导致模型性能下降。本文提出LNRTSC方法,结合注意力机制编码器、局部一致性驱动的标签置信度评估及两阶段自监督增强(重建损失+改进对比损失),在TEP和SEU-gearbox数据集上显著提升噪声标签下的分类精度。

English Abstract

The reliable operation of industrial systems requires not only the prompt detection of faults but also their accurate classification into the appropriate categories. At present, numerous data-driven industrial fault detection and diagnosis models, which have been developed based on historical fault data, frequently neglect the issue of label noise. When labels are corrupted by noise, a significant degradation in the performance of industrial fault detection models can be observed. In this article, a label-noise-resistant time-series classification (LNRTSC) method based on consistency-driven label correction is proposed. First, an attention-based temporal correlation-enhanced encoder is introduced to extract low-dimensional representations of industrial time series. Then, label confidence, which is assessed based on local label consistency, is utilized to correct noisy labels during training. In addition, a two-stage self-supervised enhancement strategy is designed to guarantee the reliability of the corrected labels. Specifically, a reconstruction loss term is introduced to assist feature extraction in the warming-up stage, and a newly designed contrastive loss term is added to the loss function for the LNL training stage, which mitigates the effect of false negatives. Finally, the effectiveness of the LNRTSC method is validated on the Tennessee Eastman process and the SEU-gearbox datasets. When compared to peer methods, the LNRTSC approach demonstrates substantial improvements in fault classification performance on corrupted data.
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SunView 深度解读

该方法可直接赋能阳光电源iSolarCloud智能运维平台及ST系列PCS、PowerTitan储能系统的故障早期识别与分类能力,尤其适用于光伏电站逆变器异常(如MPPT失效、IGBT过热)、储能BMS误报等标签不一致场景。建议将LNRTSC嵌入边缘侧轻量化模型,部署于组串式逆变器本地AI模块或PowerStack边缘网关,提升弱标注条件下的故障诊断鲁棒性,降低人工复核成本。