Litcius/Paper detail

Modeling and forecasting electricity consumption amid the COVID-19 pandemic: Machine learning vs. nonlinear econometric time series models

Lanouar Charfeddine, Esmat Zaidan, Ahmad Qadeib Alban, Hamdi Ben‐Nasr, Ammar Abulibdeh

2023Sustainable Cities and Society43 citationsDOIOpen Access PDF

Abstract

Accurately modelling and forecasting electricity consumption remains a challenging task due to the large number of the statistical properties that characterize this time series such as seasonality, trend, sudden changes, slow decay of autocrrelation function, among many others. This study contributes to this literature by using and comparing four advanced time series econometrics models, and four machine learning and deep learning models1 to analyze and forecast electricity consumption during COVID-19 pre-lockdown, lockdown, releasing-lockdown, and post-lockdown phases. Monthly data on Qatar’s total electricity consumption has been used from January 2010 to December 2021. The empirical findings demonstrate that both econometric and machine learning models are able to capture most of the important statistical features characterizing electricity consumption. In particular, it is found that climate change based factors, e.g temperature, rainfall, mean sea-level pressure and wind speed, are key determinants of electricity consumption. In terms of forecasting, the results indicate that the autoregressive fractionally integrated moving average and the three state autoregressive markov switching models with exogenous variables outperform all other models. Policy implications and energy-environmental recommendations are proposed and discussed.

Topics & Concepts

EconometricsTime seriesAutoregressive modelElectricityEconometric modelAutoregressive integrated moving averageConsumption (sociology)Computer scienceArtificial intelligenceEconomicsMachine learningEngineeringElectrical engineeringSocial scienceSociologyEnergy Load and Power ForecastingCOVID-19 impact on air qualityMarket Dynamics and Volatility