Use of Attention-Based Neural Networks to Short-Term Load Forecasting in the Republic of Panama

Vicente Alonso Navarro Valencia, J. Sánchez-Galán
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Abstract

One pillar of our society is the use of electricity as an engine of development, Short-Term Load Forecasting (STLF) contributes to the resilience and security of electrical supply, by predicting the amount of electricity that should be generated in the near future. Humanity is currently moving from an energy mix based on fossil fuels to a sustainable energy mix, a green one. One challenge of this shift is to forecast, as accurately as possible, the amount of energy load at any moment. This study compares STLF performed by state-of-the-art Neural Network and SARIMA model. First, demand is predicted with SARIMA model and then with a neural network with attention, in this occasion, the Temporal Fusion Transformer (TFT), next, both techniques are compared. The results show that SARIMA is suitable for STLF, with average performance metric values of MAPE and RMSE, of 0.064 and 101.4 MWh, respectively; when use TFT, prediction accuracy increases with a MAPE of 0.044, and RMSE of 69.2 MWh. This research is presented as a review of the state-of-the-technique and thus establishes a baseline that can be used to forecast National Energy Load in the Republic of Panama.
基于注意力的神经网络在巴拿马共和国短期负荷预测中的应用
电力是我们社会发展的支柱之一,短期负荷预测(STLF)通过预测近期的发电量,有助于电力供应的弹性和安全性。人类目前正在从以化石燃料为基础的能源结构转向可持续能源结构,一种绿色能源结构。这种转变的一个挑战是尽可能准确地预测任何时刻的能源负荷。本研究比较了最先进的神经网络和SARIMA模型的STLF。首先用SARIMA模型对需求进行预测,然后用带注意力的神经网络对需求进行预测,在这种情况下,使用时间融合变压器(TFT),然后对两种技术进行比较。结果表明,SARIMA适用于STLF, MAPE和RMSE的平均性能指标分别为0.064和101.4 MWh;使用TFT时,预测精度提高,MAPE为0.044,RMSE为69.2 MWh。这项研究是作为对最先进技术的审查提出的,从而建立了一个基线,可用于预测巴拿马共和国的国家能源负荷。
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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