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Recognition and Reconstruction of Photovoltaic Output Abnormal Data Based on Geographic Correlation

机译:基于地理相关的光伏输出异常数据识别与重构

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The accurate output prediction curve is based on accurate basic data. Aiming at the problems of abnormal and missing historical data of collected photovoltaic power generation data, this paper takes the light intensity curve and the power curve of adjacent photovoltaic power plants as input references, and proposes a neural network for identifying and reconstructing abnormal photovoltaic power generation data based on geographical location Network model. After analyzing the correlation of each reference quantity, pre-process and normalize the selected light intensity data and neighboring power station data respectively. For missing data, use nnz function to identify. For singular data, a curve similarity function is constructed, and the function values are clustered to be identified by contour coefficients. The sample data point set of [0.5,1] is used as the training set. [-1, -0.5] is the singular point abnormal photovoltaic output curve, plus missing samples, the two constitute the sample data set to be repaired. Finally, the identified abnormal data is repaired by BP neural network. Experimental results show that the method is simple and effective, and the effect is relatively good.
机译:精确的输出预测曲线基于精确的基本数据。旨在瞄准收集光伏发电数据的异常和缺失历史数据的问题,本文采用了相邻光伏发电厂作为输入参考的光强度曲线和电力曲线,并提出了一种识别和重建异常光伏发电的神经网络基于地理位置网络模型的数据。在分析每个参考量,预处理和归一化所选择的光强度数据和相邻电站数据的相关性之后。对于缺少数据,请使用nnz函数识别。对于奇异数据,构造曲线相似度函数,并且群体值被聚集为通过轮廓系数识别。 [0.5,1]的示例数据点集用作训练集。 [-1,-0.5]是奇点异常光伏输出曲线,加上缺少样本,两个构成样品数据集被修复。最后,通过BP神经网络修复了所识别的异常数据。实验结果表明,该方法简单有效,效果相对较好。

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