基于深度学习的可再生能源电厂不良数据识别与校正方法

Weiwen Qi, Jun Zhang, Wei-kang Ru, Qiang Fan, Fengming Zhang, Zhen Liu, Haoming Liu
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引用次数: 0

摘要

针对可再生能源电厂实时数据采集误差问题,以及可再生能源电厂数据具有海量和相互耦合的特点,提出了一种基于深度学习的可再生能源电厂不良数据识别与校正方法。首先,构建深度神经网络识别模型对实时不良数据进行识别,得到实时识别的不良数据;其次,构建BP神经网络修正模型,对辨识中的不良数据进行修正,得到可再生能源电站运行的可靠数据;最后,通过对某典型风电场真实历史数据的分析,验证了所提方法的准确性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification and Correction Method of Bad Data of Renewable Energy Plants with Deep Learning
Given the problem of real-time data acquisition errors in renewable energy plants, the data of the renewable energy plants have the characteristics of mass and mutually coupled characteristics, a deep learning-based method for identifying and correcting bad data from renewable energy plants is proposed. Firstly, a deep neural network identification model is constructed to identify the real-time bad data, and the bad data of the real-time identification was obtained. Secondly, the BP neural network correction model was constructed to correct the bad data of the identification, and the reliable data of the operation of the renewable energy station is obtained. Finally, the accuracy and effectiveness of the proposed method are verified through the analysis of the real historical data of a typical wind farm.
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