基于突变点检测与改进粒子滤波的风力机回转支承剩余寿命预测

刘明君, 王双川, 董增寿

太阳能学报 ›› 2026, Vol. 47 ›› Issue (2) : 408-417.

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太阳能学报 ›› 2026, Vol. 47 ›› Issue (2) : 408-417. DOI: 10.19912/j.0254-0096.tynxb.2024-1354

基于突变点检测与改进粒子滤波的风力机回转支承剩余寿命预测

  • 刘明君1,2, 王双川2,3, 董增寿2,3
作者信息 +

REMAINING USEFUL LIFE PREDICTION FOR WIND TURBINE SLEWING BEARINGS BASED ON MUTATION POINT DETECTION AND IMPROVED PARTICLE FILTERING

  • Liu Mingjun1,2, Wang Shuangchuan2,3, Dong Zengshou2,3
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文章历史 +

摘要

风力机回转支承在运行过程中易受恶劣环境及突发工况等因素影响导致难以准确估计其剩余寿命,因此,提出一种结合Wiener过程和改进粒子滤波的剩余寿命预测方法。首先,通过突变点检测方法识别退化过程中的突变点。其次,采用非线性Wiener过程构建带突变点的状态空间模型,并对传统粒子滤波进行改进,推导出剩余寿命的概率密度函数及参数更新公式。最后,以风力机回转支承的数据为例,验证所提方法的有效性和优越性。

Abstract

A remaining useful life prediction method based on the Wiener process and an improved particle filter is proposed to address the challenge of accurately estimating the remaining life of wind turbine slewing bearings due to their accelerated degradation under harsh environmental conditions and sudden operational scenarios. Firstly, the mutation point in the degradation process is identified using a mutation point detection method, and the traditional particle filter algorithm is improved. Secondly, the state space model with mutation points is constructed using a nonlinear Wiener process, and the probability density function of the remaining useful life and the parameter update formula are derived. Finally, data from wind turbine slewing bearings are used as an example to verify the effectiveness and superiority of the proposed method.

关键词

风力机 / 剩余寿命预测 / Wiener过程 / 突变点 / 粒子滤波

Key words

wind turbines / remaining useful life prediction / Wiener process / mutation point / particle filter

引用本文

导出引用
刘明君, 王双川, 董增寿. 基于突变点检测与改进粒子滤波的风力机回转支承剩余寿命预测[J]. 太阳能学报. 2026, 47(2): 408-417 https://doi.org/10.19912/j.0254-0096.tynxb.2024-1354
Liu Mingjun, Wang Shuangchuan, Dong Zengshou. REMAINING USEFUL LIFE PREDICTION FOR WIND TURBINE SLEWING BEARINGS BASED ON MUTATION POINT DETECTION AND IMPROVED PARTICLE FILTERING[J]. Acta Energiae Solaris Sinica. 2026, 47(2): 408-417 https://doi.org/10.19912/j.0254-0096.tynxb.2024-1354
中图分类号: TK83   

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基金

山西省基础研究计划自由探索类自然科学研究面上项目(202203021211205); 忻州市科技局基础研究计划项目(20230505); 忻州师范学院培育科研项目(x20250096)

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