发电技术

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基于BERT大模型的风电机组发电机轴承状态监测系统故障数据识别

韩冰1,许爱民1,王海军2,邱虎1,王新1,纪贤瑞2,杨星宇3,陈林3*   

  1. 1.国家电投集团湖北电力有限公司风电分公司,湖北省 武汉市 430061;2.国家电投集团湖北电力有限公司,湖北省 武汉市 430061;3.华北电力大学能源动力与机械工程学院,北京市 昌平区 102206
  • 出版日期:2025-12-23 发布日期:2025-12-23
  • 基金资助:
    北京市重点研发计划项目(Z181100005118013)

Fault Data Identification in Condition Monitoring Systems for Wind Turbine Generator Bearings Based on BERT Model

HAN Bing1, XU Aimin1, WANG Haijun2, QIU Hu1, WANG Xin1, JI Xianrui1, YANG Xingyu3, CHEN Lin3*   

  1. 1. Wind Power Branch, SPIC Hubei Electric Power Co., Ltd., Wuhan 430061, Hubei Province, China; 2. SPIC Hubei Electric Power Co., Ltd., Wuhan 430061, Hubei Province, China; 3. School of Energy Power and Mechanical Engineering, North China Electric Power University, Changping District, Beijing 102206, China
  • Published:2025-12-23 Online:2025-12-23
  • Supported by:
    Project Supported by Beijing Municipal Key Research and Development Program Project (Z181100005118013)

摘要: 【目的】风电机组的发电机轴承在运行中容易出现损伤,传统依赖人工经验的频谱分析难以及时、准确判断故障。为降低风电机组运行的安全隐患、减少故障停机造成的经济损失,提出了一种基于BERT大模型的风电机组发电机轴承状态监测系统(condition monitoring system,CMS)数据的处理分析方法,用于精准识别故障数据。【方法】利用从实际风电场采集的CMS数据,生成包含轴承外圈特征频率、时域、频域等信息的17维特征量,将这些特征量结构化处理后输入BERT大模型,通过数据训练得到故障数据识别模型。【结果】使用同一风场其他风机的240组实际数据,测试模型的故障数据识别能力,识别准确率为98.8%。【结论】所提方法可用于精准分析识别复杂工况和强噪声环境条件下的CMS数据,可以为提升风电机组状态监测的智能化和精细化水平提供指导。

关键词: 风电机组, 发电机轴承, 状态监测系统, BERT模型, 故障诊断

Abstract: [Objectives] The generator bearings of wind turbines are prone to damage during operation, and traditional spectrum analysis, which relies on human experience, often fails to accurately and promptly detect faults. To reduce operational risks and minimize economic losses caused by fault-induced downtime, a data processing and analysis method based on the BERT large model is developed for the condition monitoring system (CMS) for wind turbine generator bearings, which can be used for precise fault data identification. [Methods] Using CMS data collected from an actual wind farm, 17-dimensional features containing bearing outer race characteristic frequencies, along with time-domain and frequency-domain information, are generated. These features are structurally processed and input into the BERT large model. A fault data identification model is obtained through data training. [Results] The model’s fault data identification capability is tested using 240 sets of actual data from other wind turbines in the same wind farm, achieving an identification accuracy of 98.8%. [Conclusions] The proposed method can be effectively used for precise analysis and identification of CMS data under complex operating conditions and high noise environments, providing valuable guidance and support for enhancing the intelligence and precision of wind turbine condition monitoring.

Key words: wind turbine, generator bearing, condition monitoring system, BERT model, fault diagnosis