A forecasting system of electric price using the refined Back propagation Neural Network

Ming-Tang Tsai, C. Chen
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引用次数: 4

Abstract

This paper proposed a forecasting system of electric price for participants to quickly and accurately predict the electric price for avoiding the risk due to the electricity price volatility. Based on the Back-propagation Neural Network(BPN) and Orthogonal Experimental Design(OED), a Refined BPN (RBPN) is constructed in the searching process. The data cluster, including Locational Marginal Price(LMP), system load, temperature, line-flow, are first collected and embedded in the Excel Database. In order to get a better solution, the OED is used to automatically regulate the parameters during the RBPN training process. Linking the RBPN and Excel database, the RBPN retrieved the input data from Excel Database to perform and analyze the efficiency and accuracy of the predicting system until the forecasting system is convergent. Simulation results will provide the participants to obtain the maximal profits and raise its ability of market's competition in a price volatility environment.
基于改进的反向传播神经网络的电价预测系统
本文提出了一种电价预测系统,使参与者能够快速准确地预测电价,避免因电价波动带来的风险。基于反向传播神经网络(BPN)和正交实验设计(OED),在搜索过程中构造了一个改进的BPN (RBPN)。首先收集数据集群,包括位置边际价格(LMP)、系统负载、温度、线流,并嵌入到Excel数据库中。为了得到更好的解决方案,在RBPN训练过程中,使用OED对参数进行自动调节。RBPN将RBPN与Excel数据库连接起来,从Excel数据库中检索输入数据,对预测系统的效率和准确性进行执行和分析,直到预测系统收敛。仿真结果将为参与者在价格波动环境下获得最大的利润和提高市场竞争能力提供依据。
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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