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Analyzing wind turbine directional behavior: SCADA data mining techniques for efficiency and power assessment

机译:分析风力发电机的定向行为:用于效率和功率评估的SCADA数据挖掘技术

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摘要

SCADA control systems are the keystone for reliable performance optimization of wind farms. Processing into knowledge the amount of information they spread is a challenging task, involving engineering, physics, statistics and computer science skills. This work deals with SCADA data analysis methods for assessing the importance of how wind turbines align in patterns to the wind direction. In particular it deals with the most common collective phenomenon causing clusters of turbines behaving as a whole, rather than as a collection of individuality: wake effects. The approach is based on the discretization of nacelle position measurements and subsequent post-processing through simple statistical methods. A cluster, severely affected by wakes, from an onshore wind farm, is selected as test case. The dominant alignment patterns of the cluster are identified and analyzed by the point of view of power output and efficiency. It is shown that non-trivial alignments with respect to the wind direction arise and important performance deviations occur among the most frequent configurations. (C) 2015 Elsevier Ltd. All rights reserved.
机译:SCADA控制系统是风电场可靠性能优化的基石。将它们传播的大量信息处理成知识是一项艰巨的任务,涉及工程,物理,统计学和计算机科学技能。这项工作涉及SCADA数据分析方法,用于评估风力涡轮机如何与风向对齐的重要性。特别是,它处理最常见的集体现象,该现象导致涡轮机簇整体上而不是个性的集合:尾流效应。该方法基于机舱位置测量值的离散化以及随后通过简单统计方法进行的后处理。选择了陆上风电场受尾流严重影响的集群作为测试用例。通过功率输出和效率的观点来识别和分析集群的主要对准模式。结果表明,在风向方面出现了不平凡的对齐,并且在最常见的配置中出现了重要的性能偏差。 (C)2015 Elsevier Ltd.保留所有权利。

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