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A Hybrid Forecasting Model Based on Bivariate Division and a Backpropagation Artificial Neural Network Optimized by Chaos Particle Swarm Optimization for Day-Ahead Electricity Price

机译:基于二元划分的混合预测模型及对消费者粒子群优化的基于Bifariate划分的反向化人工神经网络,对现代电价进行了优化

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摘要

In the electricity market, the electricity price plays an inevitable role. Nevertheless, accurate price forecasting, a vital factor affecting both government regulatory agencies and public power companies, remains a huge challenge and a critical problem. Determining how to address the accurate forecasting problem becomes an even more significant task in an era in which electricity is increasingly important. Based on the chaos particle swarm optimization (CPSO), the backpropagation artificial neural network (BPANN), and the idea of bivariate division, this paper proposes a bivariate division BPANN (BD-BPANN) method and the CPSO-BD-BPANN method for forecasting electricity price. The former method creatively transforms the electricity demand and price to be a new variable, named DV, which is calculated using the division principle, to forecast the day-ahead electricity by multiplying the forecasted values of the DVs and forecasted values of the demand. Next, to improve the accuracy of BD-BPANN, chaos particle swarm optimization and BD-BPANN are synthesized to form a novel model, CPSO-BD-BPANN. In this study, CPSO is utilized to optimize the initial parameters of BD-BPANN to make its output more stable than the original model. Finally, two forecasting strategies are proposed regarding different situations.
机译:在电力市场中,电价起到不可避免的作用。尽管如此,准确的价格预测是影响政府监管机构和公共电力公司的重要因素仍然是一个巨大的挑战和一个关键问题。确定如何应对准确的预测问题在电力越来越重要的时代变得更加重要的任务。基于混沌粒子群优化(CPSO),背部化人工神经网络(BPANN)和二元划分的想法,本文提出了一款双变派师BPANN(BD-BPANN)方法和预测的CPSO-BD-BPANN方法电价。前一种方法创造性地将电力需求和价格转换为一个新的变量,名为DV,它通过分割原理计算,通过乘以DVS的预测值和需求的预测值来预测前方电力。接下来,为了提高BD-BPANN的准确性,合成了混沌粒子群优化和BD-BPANN以形成新型模型CPSO-BD-BPANN。在本研究中,CPSO用于优化BD-BPANN的初始参数,以使其输出比原始模型更稳定。最后,提出了两个关于不同情况的预测策略。

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