Nodal Electricity Price Forecasting using Exponential Smoothing and Holt’s Exponential Smoothing

Md Irfan Ahmed, Ramesh Kumar
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引用次数: 1

Abstract

The prediction of nodal electricity price (NEP) is a primary step to be done before the bidding process starts in the actual market environment. NEP plays a significant role for the efficient working of the electrical system. NEP follows a common trend as during peak hours when the load is high the price will also be high similarly during off-peak-load times the price will be lower and common to all the node. Thus, accurate forecasting of the NEP can help electricity generation companies to be more proactive in the wholesale electricity market to maximize its overall benefits. In this paper, exponential smoothing (ES), and holt’s exponential smoothing (HES) have been utilized for forecasting the NEP. Furthermore, a comparative analysis between ES and HES has been done considering several alpha values and several trends. The model evaluation and the forecasting performance have been tested using different parameters of ES, and HES techniques such as Akaike Information Criterion (AIC), Akaike Information Criterion Corrected (AICc), Bayesian Information Criteria (BIC). The performance of the proposed technique has been authenticated efficaciously on average nodal real-time price data collected from ISO New England (BOSTON Zone).
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基于指数平滑和Holt指数平滑的节点电价预测
在实际的市场环境中,节点电价预测是投标过程开始前要做的首要步骤。新能源政策对电力系统的高效运行起着至关重要的作用。NEP遵循一个共同的趋势,即在高峰时段,当负荷高时,价格也会高,类似地,在非高峰负荷期间,价格会更低,并且对所有节点来说都是共同的。因此,对新经济政策进行准确的预测,可以帮助发电企业在电力批发市场中更加积极主动,实现整体效益最大化。本文将指数平滑法(ES)和霍尔特指数平滑法(HES)用于新经济政策的预测。此外,考虑了几个alpha值和几个趋势,对ES和HES进行了比较分析。采用不同的ES参数,以及赤池信息准则(AIC)、赤池信息准则修正(AICc)、贝叶斯信息准则(BIC)等HES技术,对模型的评价和预测效果进行了检验。该技术的性能已在ISO新英格兰(波士顿地区)收集的平均节点实时价格数据上得到有效验证。
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