Active trailing edge flap system fault detection via machine learning

Andrea Gamberini, Imad Abdallah
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Abstract

Abstract. Active trailing edge flap (AFlap) systems have shown promising results in reducing wind turbine (WT) loads. The design of WTs relying on AFlap load reduction requires implementing systems to detect, monitor, and quantify any potential fault or performance degradation of the flap system to avoid jeopardizing the wind turbine's safety and performance. Currently, flap fault detection or monitoring systems are yet to be developed. This paper presents two approaches based on machine learning to diagnose the health state of an AFlap system. Both approaches rely only on the sensors commonly available on commercial WTs, avoiding the need and the cost of additional measurement systems. The first approach combines manual feature engineering with a random forest classifier. The second approach relies on random convolutional kernels to create the feature vectors. The study shows that the first method is reliable in classifying all the investigated combinations of AFlap health states in the case of asymmetrical flap faults not only when the WT operates in normal power production but also before startup. Instead, the second method can identify some of the AFlap health states for both asymmetrical and symmetrical faults when the WT is in normal power production. These results contribute to developing the systems for detecting and monitoring active flap faults, which are paramount for the safe and reliable integration of active flap technology in future wind turbine design.
通过机器学习检测主动后缘襟翼系统故障
摘要。主动后缘襟翼(AFlap)系统在降低风力涡轮机(WT)负载方面取得了可喜的成果。依靠后缘襟翼系统降低负荷的风力涡轮机的设计需要实施系统来检测、监控和量化襟翼系统的任何潜在故障或性能下降,以避免危及风力涡轮机的安全和性能。目前,襟翼故障检测或监控系统尚待开发。本文介绍了两种基于机器学习的襟翼系统健康状态诊断方法。这两种方法都只依赖于商用风力发电机上常见的传感器,避免了额外测量系统的需求和成本。第一种方法将人工特征工程与随机森林分类器相结合。第二种方法依靠随机卷积核来创建特征向量。研究表明,在非对称襟翼故障的情况下,第一种方法不仅在风电机组正常发电运行时,而且在启动前,都能可靠地对所有已调查的襟翼健康状态组合进行分类。相反,当风电机组处于正常发电状态时,第二种方法可以识别非对称和对称故障的部分襟翼健康状态。这些结果有助于开发主动襟翼故障检测和监控系统,这对于在未来的风力涡轮机设计中安全可靠地集成主动襟翼技术至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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