Abnormal Wind Speed Data Recognition Based on Fast R-CNN

Kun Jia, Guoqing Wang, Wenming Li, Fang Tong, Heng Zhang, Yu Hu
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Abstract

With the wide application of wind power generation, the value of wind power generation data is gradually being valued by people. People can look for the key factors that affect the normal operation of wind turbines from massive data, and provide better services for users. In this paper, a method for identifying abnormal wind speed data of wind power generation is proposed. On image data, Faster R-CNN is trained with image data collected daily as samples. The experimental results show that Faster R- CNN can effectively identify abnormal wind speed images. This paper analyzes the influencing factors of the experimental process and results, which provides a reference for the identification of abnormal data in the power system.
基于Fast R-CNN的异常风速数据识别
随着风力发电的广泛应用,风力发电数据的价值逐渐被人们所重视。人们可以从海量数据中寻找影响风机正常运行的关键因素,为用户提供更好的服务。本文提出了一种识别风力发电异常风速数据的方法。在图像数据上,Faster R-CNN以每天采集的图像数据作为样本进行训练。实验结果表明,Faster R- CNN能有效识别异常风速图像。本文分析了实验过程和结果的影响因素,为电力系统异常数据的识别提供了参考。
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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