Application research of massive power data prediction based on combinatorial model

Pengcheng Li, Haitao Zhang, Haohan Hu, Wanlong Liu, Li Zhang
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Abstract

Based on the massive data of Shanghai Pudong Electric Power Co., Ltd., this paper studies the load data prediction. Based on the theoretical support of KNN, linear regression and ARIMA algorithm, the local optimal decomposition prediction model was established. In this paper, the million-magnitude load control data are used for model training and experiments. The traditional prediction method is a single day dimension model, while the research method in this paper is time-divided optimal model prediction. For different periods of each day, according to the data characteristics, match and train the best local optimal prediction model for each period. The experimental results show that the accuracy of the local optimal decomposition model is higher than that of the single model, which can fully meet the business needs of the current energy data prediction, and also provide support for the subsequent prediction of other energy data.
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基于组合模型的海量电力数据预测应用研究
本文以上海浦东电力有限公司的海量数据为基础,对负荷数据预测进行了研究。在KNN、线性回归和ARIMA算法的理论支持下,建立了局部最优分解预测模型。本文将百万级负荷控制数据用于模型训练和实验。传统的预测方法是单日维模型,而本文的研究方法是分时最优模型预测。针对每天的不同时段,根据数据特点,匹配并训练每个时段的最优局部最优预测模型。实验结果表明,局部最优分解模型的精度高于单一模型,能够充分满足当前能源数据预测的业务需求,同时也为后续其他能源数据的预测提供支持。
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