使用机器学习的可扩展风力发电机轴承故障预测:一个案例研究

Lindy Williams, Caleb Phillips, S. Sheng, A. Dobos, Xiupeng Wei
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引用次数: 4

摘要

风力涡轮机的运行和维护成本对其竞争力和资产所有者构成了风险。随着机器学习技术和数字化技术的迅速成熟,风电行业正在积极研究这些新技术,以优化运维实践并降低成本。本文回顾了机器学习方法在发电机轴承故障预测方面的最新工作,并通过国家可再生能源实验室和Envision数字公司之间的合作提出了一个相关的现实案例研究。在案例研究中,我们评估了用于预测风力发电机轴承故障的代表性机器学习算法的性能。使用来自一个风力发电厂的运行监控和数据采集数据来训练和测试机器学习模型。所调查的数据通道的选择是基于它们是否物理地反映了故障发电机轴承条件和组件的历史使用情况,包括环境和运行条件。确定了不同方法的优点和缺点。
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Scalable Wind Turbine Generator Bearing Fault Prediction Using Machine Learning: A Case Study
Operation and maintenance (O&M) costs for wind turbines pose a risk to competitiveness and asset owners. With machine-learning technologies and digitalization rapidly maturing, the wind industry is actively investigating these new technologies to optimize O&M practices and reduce costs. This paper reviews recent work on machine-learning approaches to generator bearing failure prediction and presents a relevant real-world case study through a collaboration between the National Renewable Energy Laboratory and Envision Digital Corporation. In the case study, we evaluate the performance of representative machine-learning algorithms for predicting wind turbine generator bearing failures. Operational supervisory control and data acquisition data from one wind power plant was used to train and test the machine-learning models. The investigated data channels are chosen based on whether physically they reflect the failed generator bearing conditions and the component historical usage, including both environmental and operational conditions. Benefits and drawbacks of different methods are identified.
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