基于城市轨道交通车辆轴承数据的故障诊断预测模型研究

Fault Diagnosis and Prognostic Model Based on Bearing Data of Urban Rail Transit Vehicles

  • 摘要:
    目的 针对城市轨道交通车辆轴承的预测性维护,现有故障诊断模型存在不足。一方面,受限于特定工况与单一数据分布,跨数据集迁移时模型性能下降明显;另一方面,由于故障诊断数据集规模普遍较小且异质性强,采样频率、通道配置与工况条件差异显著,导致通用模型架构的构建与稳定学习面临挑战。为了实现早期识别与跨场景可靠泛化,有必要对故障诊断预测模型进行研究。
    方法 对故障诊断与时序基础模型研究进展进行了综述,明确了需要研究的问题。对异构数据,以及预训练和小样本微调过程进行了符号化建模,给出了统一学习目标与训练流程。提出了故障诊断预测基础模型总体框架,并在框架内组织数据预处理与数据协调环节,以支撑基础模型的联合预训练与下游适配。最后依据试验设置与对比评测体系,在10个轴承数据集上完成了预训练,并在XJTU-SY、UO与KAIST数据集开展小样本评测,设置多类对比基线并统计训练效率。
    结果及结论 基于多个故障诊断数据集共40亿数据点的预训练,模型在小样本微调条件下取得了稳定提升,并在多数据集评测中达到了最优或接近最优的表现,验证了所提模型在跨场景故障诊断任务中的有效性。

     

    Abstract:
    Objective For predictive maintenance of bearings in urban rail transit vehicles, existing fault diagnosis models exhibit limitations. On the one hand, constrained by specific operating conditions and single data distribution, the models’ performance degrades significantly when transferred across datasets. On the other hand, fault diagnosis datasets are generally small in scale and highly heterogeneous, with substantial differences in sampling frequency, channel configurations, and operating conditions, which poses challenges to the construction of universal model architectures and stable learning. To achieve early identification and reliable cross-scenario generalization, it is necessary to study fault diagnosis and prognostic models.
    Method The research progress on fault diagnosis and time-series foundation models is reviewed, and the key problems to be addressed are clarified. Heterogeneous data, as well as the pre-training and few-shot fine-tuning processes are symbolically modeled, and a unified learning objective and training procedure are formulated. An overall framework for a fault diagnosis and prognostic foundation model is proposed, within which data preprocessing and data coordination modules are organized to support joint pre-training of the foundation model and downstream adaptation. Finally, according to the experimental setup and comparative evaluation system, a pre-training is completed on 10 bearing datasets, and the few-shot evaluations are performed on the XJTU-SY, UO, and KAIST datasets, with multiple baseline methods for comparison and training efficiency statistics.
    Result & Conclusion  Through pre-training on multiple fault diagnosis datasets comprising a total of 4 billion data points, the proposed model achieves stable improvements under few-shot fine-tuning conditions and attains optimal or near-optimal performance across multiple dataset evaluations, verifying its effectiveness in cross-scenario fault diagnosis tasks.

     

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