Energy cost forecasting for event venues

Andrea Žagar, Katarina Grolinger, Miriam A. M. Capretz, Luke Seewald
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引用次数: 5

Abstract

Electricity price, consumption, and demand forecasting has been a topic of research interest for a long time. The proliferation of smart meters has created new opportunities in energy prediction. This paper investigates energy cost forecasting in the context of entertainment event-organizing venues, which poses significant difficulty due to fluctuations in energy demand and wholesale electricity prices. The objective is to predict the overall cost of energy consumed during an entertainment event. Predictions are carried out separately for each event category and feature selection is used to select the most effective combination of event attributes for each category. Three machine learning approaches are considered: k-nearest neighbor (KNN) regression, support vector regression (SVR) and neural networks (NN). These approaches are evaluated on a case study involving a large event venue in Southern Ontario. In terms of prediction accuracy, KNN regression achieved the lowest average error. Error rates varied greatly among different event categories.
活动场地能源成本预测
长期以来,电力价格、消费和需求预测一直是人们关注的研究课题。智能电表的普及为能源预测创造了新的机会。本文研究了娱乐活动组织场所的能源成本预测,由于能源需求和批发电价的波动,这给娱乐活动组织场所带来了很大的困难。目标是预测在娱乐活动期间消耗的能源的总成本。对每个事件类别分别进行预测,并使用特征选择来为每个类别选择最有效的事件属性组合。本文考虑了三种机器学习方法:k最近邻(KNN)回归、支持向量回归(SVR)和神经网络(NN)。这些方法在一个涉及安大略省南部一个大型活动场地的案例研究中进行了评估。在预测精度方面,KNN回归的平均误差最低。不同事件类别的错误率差异很大。
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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