In Search of Deep Learning Architectures for Load Forecasting: A Comparative Analysis and the Impact of the Covid-19 Pandemic on Model Performance

Sotiris Pelekis, Evangelos Karakolis, Francisco Silva, Vasileios Schoinas, S. Mouzakitis, Georgios Kormpakis, N. Amaro, J. Psarras
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引用次数: 5

Abstract

In power grids, short-term load forecasting (STLF) is crucial as it contributes to the optimization of their reliability, emissions, and costs, while it enables the participation of energy companies in the energy market. STLF is a challenging task, due to the complex demand of active and reactive power from multiple types of electrical loads and their dependence on numerous exogenous variables. Amongst them, special circumstances-such as the COVID-19 pandemic-can often be the reason behind distribution shifts of load series. This work conducts a comparative study of Deep Learning (DL) architectures-namely Neural Basis Expansion Analysis Time Series Forecasting (N-BEATS), Long Short-Term Memory (LSTM), and Temporal Convolutional Networks (TCN)-with respect to forecasting accuracy and training sustainability, meanwhile examining their out-of-distribution generalization capabilities during the COVID-19 pandemic era. A Pattern Sequence Forecasting (PSF) model is used as baseline. The case study focuses on day-ahead forecasts for the Portuguese nationa115-minute resolution net load time series. The results can be leveraged by energy companies and network operators (i) to reinforce their forecasting toolkit with state-of-the-art DL models; (ii) to become aware of the serious consequences of crisis events on model performance; (iii) as a high-level model evaluation, deployment, and sustainability guide within a smart grid context.
寻找用于负荷预测的深度学习架构:Covid-19大流行对模型性能的比较分析和影响
在电网中,短期负荷预测(STLF)至关重要,因为它有助于优化电网的可靠性、排放和成本,同时使能源公司能够参与能源市场。由于多种类型的电力负载对有功和无功功率的复杂需求及其对众多外源变量的依赖,STLF是一项具有挑战性的任务。其中,特殊情况(如2019冠状病毒病大流行)往往会成为负荷序列分布变化的原因。本研究对深度学习(DL)架构——即神经基础扩展分析时间序列预测(N-BEATS)、长短期记忆(LSTM)和时间卷积网络(TCN)——在预测准确性和训练可持续性方面进行了比较研究,同时考察了它们在COVID-19大流行时期的非分布泛化能力。使用模式序列预测(PSF)模型作为基准。该案例研究的重点是葡萄牙国家115分钟分辨率净负荷时间序列的前一天预测。结果可以被能源公司和网络运营商利用:(1)用最先进的深度学习模型加强他们的预测工具包;(ii)意识到危机事件对模型性能的严重影响;(iii)作为智能电网环境下的高级模型评估、部署和可持续性指南。
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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