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Modeling and forecasting hourly electric load by multiple linear regression with interactions

机译:通过交互作用的多重线性回归对小时电力负荷进行建模和预测

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Short-term electric load modeling and forecasting has been intensively studied during the past 50 years. With the emerging development of smart grid technologies, demand side management (DSM) starts to attract the attention of electric utilities again. To perform a decent DSM, beyond when and how much the demand will be, the utilities are facing another question: why is the electricity being consumed? In other words, what are the factors driving the fluctuation of the electric load at a particular time period? Understanding this issue can also be beneficial for the electric load forecasting with the purpose of energy purchase. This paper proposes a modern treatment of a classic technique, multiple linear regression, to model the hourly demand and investigate the causality of the consumption of electric energy. Various interactions are discovered, discussed, tested, and interpreted in this paper. The proposed approach has been used to generate the 3-year hourly energy demand forecast for a US utility.
机译:在过去的50年中,已经对短期电力负荷建模和预测进行了深入研究。随着智能电网技术的新兴发展,需求方管理(DSM)开始再次引起电力公司的关注。为了执行一个体面的DSM,公用事业面临着另一个问题:为什么要消耗电力?换句话说,在特定时间段内导致电力负载波动的因素是什么?理解此问题对于以购买能源为目的的电力负荷预测也将是有益的。本文提出了一种经典技术的现代处理方法,即多元线性回归,以对小时需求进行建模并研究电能消耗的因果关系。在本文中发现,讨论,测试和解释了各种相互作用。拟议的方法已用于生成美国公用事业公司3年小时的能源需求预测。

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