TY - JOUR
T1 - Modelling Electricity Consumption During the COVID19 Pandemic
T2 - Datasets, Models, Results and a Research Agenda
AU - Khan, Zulfiqar Ahmad
AU - Hussain, Tanveer
AU - Ullah, Amin
AU - Ullah, Waseem
AU - Del Ser, Javier
AU - Muhammad, Khan
AU - Sajjad, Muhammad
AU - Baik, Sung Wook
N1 - Publisher Copyright:
© 2023 Elsevier B.V.
PY - 2023/9/1
Y1 - 2023/9/1
N2 - The COVID19 pandemic has impacted the global economy, social activities, and Electricity Consumption (EC), affecting the performance of historical data-based Electricity Load Forecasting (ELF) algorithms. This study thoroughly analyses the pandemic's impact on these models and develop a hybrid model with better prediction accuracy using COVID19 data. Existing datasets are reviewed, and their limited generalization potential for the COVID19 period is highlighted. A dataset of 96 residential customers, comprising 36 and six months before and after the pandemic, is collected, posing significant challenges for current models. The proposed model employs convolutional layers for feature extraction, gated recurrent nets for temporal feature learning, and a self-attention module for feature selection, leading to better generalization for predicting EC patterns. Our proposed model outperforms existing models, as demonstrated by a detailed ablation study using our dataset. For instance, it achieves an average reduction of 0.56% & 3.46% in MSE, 1.5% & 5.07% in RMSE, and 11.81% & 13.19% in MAPE over the pre- and post-pandemic data, respectively. However, further research is required to address the varied nature of the data. These findings have significant implications for improving ELF algorithms during pandemics and other significant events that disrupt historical data patterns.
AB - The COVID19 pandemic has impacted the global economy, social activities, and Electricity Consumption (EC), affecting the performance of historical data-based Electricity Load Forecasting (ELF) algorithms. This study thoroughly analyses the pandemic's impact on these models and develop a hybrid model with better prediction accuracy using COVID19 data. Existing datasets are reviewed, and their limited generalization potential for the COVID19 period is highlighted. A dataset of 96 residential customers, comprising 36 and six months before and after the pandemic, is collected, posing significant challenges for current models. The proposed model employs convolutional layers for feature extraction, gated recurrent nets for temporal feature learning, and a self-attention module for feature selection, leading to better generalization for predicting EC patterns. Our proposed model outperforms existing models, as demonstrated by a detailed ablation study using our dataset. For instance, it achieves an average reduction of 0.56% & 3.46% in MSE, 1.5% & 5.07% in RMSE, and 11.81% & 13.19% in MAPE over the pre- and post-pandemic data, respectively. However, further research is required to address the varied nature of the data. These findings have significant implications for improving ELF algorithms during pandemics and other significant events that disrupt historical data patterns.
KW - Analysis
KW - Attention GRU
KW - COVID19
KW - Deep learning
KW - Electricity consumption
KW - Machine learning
KW - Post-pandemic consumption
KW - Pre-pandemic consumption
UR - http://www.scopus.com/inward/record.url?scp=85162212286&partnerID=8YFLogxK
U2 - 10.1016/j.enbuild.2023.113204
DO - 10.1016/j.enbuild.2023.113204
M3 - Article
AN - SCOPUS:85162212286
SN - 0378-7788
VL - 294
JO - Energy and Buildings
JF - Energy and Buildings
M1 - 113204
ER -