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Data mining techniques for performance analysis of onshore wind farms

机译:用于陆上风电场性能分析的数据挖掘技术

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Wind turbines are an energy conversion system having a low density on the territory, and therefore needing accurate condition monitoring in the operative phase. Supervisory Control And Data Acquisition (SCADA) control systems have become ubiquitous in wind energy technology and they pose the challenge of extracting from them simple and explanatory information on goodness of operation and performance. In the present work, post processing methods are applied on the SCADA measurements of two onshore wind farms sited in southern Italy. Innovative and meaningful indicators of goodness of performance are formulated. The philosophy is a climax in the granularity of the analysis: first, Malfunctioning Indexes are proposed, which quantify goodness of merely operational behavior of the machine, irrespective of the quality of output. Subsequently the focus is shifted to the analysis of the farms in the productive phase: dependency of farm efficiency on wind direction is investigated through the polar plot, which is revisited in a novel way in order to make it consistent for onshore wind farms. Finally, the inability of the nacelle to optimally follow meandering wind due to wakes is analysed through a Stationarity Index and a Misalignment Index, which are shown to capture the relation between mechanical behavior of the turbine and degradation of the power output. (C) 2015 Elsevier Ltd. All rights reserved.
机译:风力涡轮机是能量转换系统,其在区域内具有低密度,因此需要在操作阶段进行精确的状态监控。监督控制和数据采集(SCADA)控制系统已在风能技术中变得无处不在,并且提出了从中提取有关运行和性能优良性的简单说明性信息的挑战。在当前的工作中,后处理方法应用于位于意大利南部的两个陆上风电场的SCADA测量中。制定了绩效善意的创新和有意义的指标。该原理在分析的粒度上达到了高潮:首先,提出了故障指标,该指标量化了仅机器操作行为的优良性,而与输出质量无关。随后,重点转移到生产阶段的农场分析:通过极坐标图研究了农场效率对风向的依赖性,极坐标图以新颖的方式重新审视,以使其与陆上风电场保持一致。最后,通过平稳性指数和失准指数分析了机舱无法最佳地跟随由于尾流而产生的曲折风,它们被显示为捕获了涡轮机机械性能与功率输出降低之间的关系。 (C)2015 Elsevier Ltd.保留所有权利。

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