Forecasting Model of Electricity Sales Market Indicators With Distributed New Energy Access

IF 0.8 Q4 Computer Science
Tao Yao, Xiaolong Yang, Chenjun Sun, Peng Wu, Shuqian Xue
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引用次数: 0

Abstract

It is difficult for the existing electricity sales market to adapt to the vast amount of distributed new energy access. This article proposes an electricity sales market index prediction model for high proportion distributed new energy access under the cloud-side cooperation architecture. First, an index prediction system is designed based on the cloud edge collaboration architecture. The edge computing center processes regional data nearby to improve prediction efficiency. Second, on the edge side, a K-means clustering algorithm is used to classify the data. Third, the power data, distributed power output data, load data, weather data, holiday information, and electricity price data are obtained. Finally, the ConvLSTM-Adaboost prediction model is built in the cloud center. The ConvLSTM is used as the base learner, and the Adaboost-integrated algorithm is used for serial training. At the same time, the prediction results of each base learner are weighted and integrated to obtain the final power and load prediction results of the electricity sales market. Experiments show that the prediction results of MAE, PMSE, and MAPE of the proposed model for daily electricity are 52.539MW, 56.859MW, and 2.063%, respectively. Not only is this superior to other models, but it provides a better analysis of influencing factors.
分布式新能源接入下的电力销售市场指标预测模型
现有的电力销售市场很难适应大量的分布式新能源接入。本文提出了云侧合作架构下高比例分布式新能源接入的售电市场指数预测模型。首先,设计了一个基于云边缘协作架构的指标预测系统。边缘计算中心处理附近的区域数据,以提高预测效率。其次,在边缘侧,使用K-means聚类算法对数据进行分类。第三,获得电力数据、分布式电力输出数据、负荷数据、天气数据、假日信息和电价数据。最后,在云中心建立了ConvLSTM Adaboost预测模型。ConvLSTM作为基础学习器,Adaboost集成算法用于串行训练。同时,对每个基础学习器的预测结果进行加权和积分,以获得电力销售市场的最终电力和负荷预测结果。实验表明,该模型对日电量的MAE、PMSE和MAPE预测结果分别为52.539MW、56.859MW和2.063%。这不仅优于其他模型,而且可以更好地分析影响因素。
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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来源期刊
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12.50%
发文量
29
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