对正常发电区域的风力发电机组进行异常性能检测

M. Carmona, M. A. Sanz-Bobi
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引用次数: 5

摘要

本文提出了一种基于实际观测到的风速和发电功率对来检测风力机异常性能的方法。通常功率曲线可以满足这一目标,但将其用于实时检测异常性能并不容易,因为观察到的对并不遵循单线,而是围绕理想定义的点云。这就是为什么本文将功率曲线的概念扩展到一段时间内的正常发电区域,作为以后比较的参考。这一领域必须包括在作为业绩参考的期间内观察到的大部分数据。一旦确定了正常的发电区域,就可以用它来检测未来观测中可能出现的偏差。本文给出了在4台风力发电机组上的应用实例,检测出了一些异常的性能偏差。此外,还包括对其他测量变量的分析,这些变量可以为所进行的研究中观察到的结果提供补充观点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Normal power generation area of wind turbines for the detection of abnormal performance
This paper presents a method for the possible detection of abnormal performance of a wind turbine based on real observed pairs of wind speed and generated power. Usually the power curve satisfies this objective but its use in real-time for the detection of abnormal performance is not easy because the pairs observed do not follow a single line, but rather cloud of points around an ideal definition of it. This is the reason why the concept of the power curve has been extended in this paper to a normal power generation area for a period of time taken as reference for later comparisons. This area has to cover the most part of the data observed in the period considered as reference of performance. Once a normal power generation area is defined, it can be used to detect possible deviations in future observations. The paper includes some examples of application to four wind turbines where some abnormal deviations of performance were detected. Also, an analysis is included of other measured variables that could feed a complementary view about the results observed in the study carried out.
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