Li Zhenen, Xue Yujie
School of Electrical Engineering, Xinjiang University, Urumqi, 830047, China.
Sci Rep. 2025 Mar 17;15(1):9169. doi: 10.1038/s41598-025-93532-1.
During the long-term operation of wind turbines, due to environmental factors and equipment aging, the health and reliability of each component will gradually decline, leading to failure. To assess the health status of wind turbines, timely grasp the subsequent changes and development trends, it is necessary to extract degradation characteristics, including time domain, frequency domain, and time-frequency domain characteristics. These degradation characteristics can reflect the operating status of the equipment, help build health indicator curves, and evaluate the health status of high-speed shaft bearings of wind turbines. Selecting reasonable degradation characteristics is an important prerequisite for constructing a health index curve, and using evaluation indicators to construct a comprehensive evaluation function to screen degradation characteristics. The feature fusion method based on a self-organizing feature mapping network is used to fuse multiple selected degradation features and fuse the selected multiple degradation features into a curve that can reflect the bearing degradation process. Finally, a quantitative analysis is performed on the health index curve to scientifically assess the health status of bearings. Bearings are one of the key components of wind turbines. Based on the health index curve constructed in this article, an appropriate prediction model is selected to predict the health index trend of bearings. A timely and effective grasp of the health trends of wind turbine bearings is of great practical significance for formulating scientific and reasonable maintenance measures for wind farms. The work of this article will be divided into the following four parts: (1) Extracting the time domain, frequency domain, and time-frequency domain degradation characteristics of high-speed shaft bearing vibration signals of wind turbines; (2) Comprehensive evaluation using monotonicity, correlation, and robustness constructs function to screen degenerate features; (3) Use self-organizing feature mapping network. The network integrates the selected degradation features and constructs a health index curve; (4) Based on the constructed health index curve, optimize the BiLSTM network hyperparameters through Bayesian and establish a BO-BiLSTM network model to achieve a more accurate and scientific prediction of the health index trend.
在风力发电机组的长期运行过程中,由于环境因素和设备老化,各部件的健康状况和可靠性会逐渐下降,进而导致故障。为了评估风力发电机组的健康状态,及时掌握其后续变化及发展趋势,有必要提取包括时域、频域和时频域特征在内的退化特征。这些退化特征能够反映设备的运行状态,有助于构建健康指标曲线,以及评估风力发电机组高速轴轴承的健康状况。选择合理的退化特征是构建健康指标曲线的重要前提,利用评估指标构建综合评估函数来筛选退化特征。基于自组织特征映射网络的特征融合方法用于融合多个选定的退化特征,并将选定的多个退化特征融合成一条能够反映轴承退化过程的曲线。最后,对健康指标曲线进行定量分析,以科学评估轴承的健康状态。轴承是风力发电机组的关键部件之一。基于本文构建的健康指标曲线,选择合适的预测模型来预测轴承的健康指标趋势。及时有效地掌握风力发电机组轴承的健康趋势,对于制定风电场科学合理的维护措施具有重要的现实意义。本文的工作将分为以下四个部分:(1)提取风力发电机组高速轴轴承振动信号的时域、频域和时频域退化特征;(2)利用单调性、相关性和鲁棒性进行综合评估,构建函数筛选退化特征;(3)使用自组织特征映射网络,将选定的退化特征进行融合,构建健康指标曲线;(4)基于构建的健康指标曲线,通过贝叶斯优化双向长短期记忆网络(BiLSTM)的超参数,建立BO - BiLSTM网络模型,实现对健康指标趋势更准确、科学的预测。