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Wind farm monitoring using Mahalanobis distance and fuzzy clustering

机译:使用马氏距离和模糊聚类的风电场监控

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This paper proposes an approach for warnings and failures detection based on fuzzy clustering and the Mahalanobis distance. Both techniques are developed in a real wind farm for critical devices typically found in a wind turbine. A power curve is modelled using fuzzy clustering and parametric fitting techniques in a first step. Then, warnings and alarms recorded by a Supervisory Control and Data Acquisition system are analysed from their locations and distances to the curve. The Mahalanobis technique is selected for this purpose and its accuracy is validated with other methods considered. The research reveals the existence of zones with complex detectability for some winds speed and powers ranges. However, in contrast to a standard pattern, there will be differences in terms of distances. The usefulness of the findings lies in the inclusion of a real-time monitoring system applying easily available resources. The paper is understood as a complement to other specific and costly monitoring systems to ensure the implementation of actions before the occurrence of a failure. A large number of publications using the power curve can be found focusing on forecasting or market researches, but this trend is not usually extended to the wind turbine maintenance management. (C) 2018 Elsevier Ltd. All rights reserved.
机译:提出了一种基于模糊聚类和马氏距离的预警和故障检测方法。两种技术都是在实际的风电场中针对通常在风力涡轮机中使用的关键设备开发的。第一步,使用模糊聚类和参数拟合技术对功率曲线进行建模。然后,从监控和数据采集系统记录的警告和警报从它们的位置和到曲线的距离进行分析。为此选择了Mahalanobis技术,并使用了其他方法验证了其准确性。研究表明,对于某些风速和功率范围,存在可检测性较复杂的区域。但是,与标准图案相比,距离会有所不同。研究结果的有用之处在于包含了一个实时监控系统,该系统使用易于获得的资源。本文被认为是对其他特定且昂贵的监视系统的补充,以确保在故障发生之前采取措施。可以找到大量使用功率曲线的出版物,这些出版物着重于预测或市场研究,但是这种趋势通常不会扩展到风机维护管理中。 (C)2018 Elsevier Ltd.保留所有权利。

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