A Comparative Study of Statistical and Deep Learning Models for Energy Load Prediction

E. Gjika, L. Basha
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引用次数: 1

Abstract

The objective of this study is to analyze and compare classical time series and deep learning models for energy load prediction. Energy predictions are important for management and sustainable systems. After analyzing the climacteric factors impact on energy load (a case study in Albania) we considered classical and deep learning models to perform forecasts. We have used hourly and daily time series for a period of three years. In total respectively 26,280 hours and 1095 days. Average temperature is considered as external variable in both statistical and deep learning models. The dynamic evolution of hourly (daily) load is correlated with hourly (daily) average temperature. The performance of the proposed models is analyzed and evaluated based on accuracy measurements (MSE, RMSE, MAPE, AIC, BIC etc.) and graphics results of statistical tests. In-sample and out-of-sample accuracy is evaluated. The models show competitive performance to some recent works in the field of short-and medium-term energy load forecasts. This work may be used by stakeholders to optimize their activities and obtain accurate forecasts of energy system behavior.
统计模型与深度学习模型在能源负荷预测中的比较研究
本研究的目的是分析和比较经典时间序列模型和深度学习模型在能源负荷预测中的应用。能源预测对管理和可持续系统非常重要。在分析了更年期因素对能量负荷的影响(以阿尔巴尼亚为例)后,我们考虑了经典和深度学习模型来进行预测。我们已经使用了三年的小时和日时间序列。总共分别为26,280小时和1095天。在统计模型和深度学习模型中,平均温度都被认为是外部变量。逐时(日)负荷的动态演变与逐时(日)平均气温有关。基于精度测量(MSE、RMSE、MAPE、AIC、BIC等)和统计测试的图形结果,对所提出模型的性能进行了分析和评价。评估样本内和样本外精度。该模型在近期的中短期能源负荷预测中具有一定的竞争力。这项工作可以被利益相关者用来优化他们的活动,并获得对能源系统行为的准确预测。
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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