微特电机 ›› 2026, Vol. 54 ›› Issue (6): 70-74.

• 生产技术 • 上一篇    下一篇

基于多层极限学习机的风力发电机状态检测方法

刘保松,张  伟,兰  维,毕  圣,柴致远,徐  悦,张诚瑞,耿  倬,耿超龙,李  旋   

  1. 华电电科新能技术( 杭州) 有限公司,杭州 310013
  • 出版日期:2026-06-26 发布日期:2026-06-26
  • 作者简介:刘保松( 1986—) ,男,硕士,正高级工程师,研究方向为能源项目建设运行管理、电力市场营销、能源企业数智化建设等。

Wind Power Generator State Detection Method Based on Multi-Layer Extreme Learning Machine

LIU Baosong, ZHANG Wei, LAN Wei, BI Sheng, CHAI Zhiyuan, XU Yue, ZHANG Chengrui, GENG Zhuo, GENG Chaolong, LI Xuan   

  1. Huadian Dianke New Energy Technology ( Hangzhou) Co.,Ltd.,Hangzhou 310013,China
  • Online:2026-06-26 Published:2026-06-26

摘要: 风力发电机运行中,多源监测信号因为强噪声呈复杂特性,故障特征频域重叠混淆,易误判漏报。 为此,提出一种基于多传感器信息融合与多层极限学习机的状态智能检测方法。 通过集成多维监测数据,采用希尔伯特-黄变换进行自适应频域分解,提取频域能量特征;构建多层极限学习机模型实现分层辨识与精准分类。 实验结果表明,所提方法在早期退化状态识别中仅出现 1 例误判,各类状态下 F1 分数均稳定在 0. 9 以上,可为电机智能运维提供可靠路径。

关键词: 风力发电机, 状态检修, 多层极限学习机, 希尔伯特-黄变换, 频域分析

Abstract: During the operation of wind power generation machines,multiple source monitoring signals exhibit complex characteristics due to strong noise. The fault characteristics in the frequency domain overlap and are confusing, making it prone to misjudgment and missed detection. Therefore,a state intelligent detection method based on multi-sensor information fusion and multi-layer extreme learning machine is proposed. By integrating multi-dimensional monitoring data,the HilbertHuang transform is used for adaptive frequency domain decomposition to extract frequency domain energy features;a multilayer extreme learning machine model is constructed to achieve hierarchical identification and precise classification.
Experimental results show that in the early degradation state recognition, only one misjudgment occurred. The F1 score in various states is stable at above 0. 9,providing a reliable path for intelligent operation and maintenance of the machines.

Key words: wind power generators, condition-based maintenance, multilayer extreme learning machine, hilbert-huang transform, frequency-domain analysis

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