Understanding Energy Behavioral Changes Due to COVID-19 in the Residents of Dubai Using Electricity Consumption Data and Their Impacts
Abstract
:1. Introduction
2. Background
2.1. COVID-19 in the United Arab Emirates (UAE)
- Strengthening economic and business continuations;
- The National Disinfection Program and social distancing rules
- 25 February 2020: Authorities at Dubai International Airport (DBX) suspended many flights to/from Iran.
- 23 March 2020: The government suspended all inbound and outbound passenger flights and the transit of airline passengers in the UAE.
- 25 March 2020: Closing orders were issued for commercial centers, malls, and open markets.
- 30 March 2020: Stay-at-home orders were designed to curb the COVID-19 spread implemented through a curfew between 20:00 and 06:00.
- 4 April 2020: Authorities locked down Dubai as of 4 April due to the COVID-19 outbreak; a 24-h curfew was in effect.
- 26 April 2020: The full lockdown ended while maintaining a night curfew. Cafes and dine-ins resumed activity (limited to 30% capacity).
- 27 May 2020: Other business activities resumed and free movement was allowed in Dubai.
- 3 June 2020: All shopping malls and private sector businesses in Dubai were permitted to resume operations at full capacity, provided social distancing measures and other controls were met.
- 24 June 2020: Authorities in the UAE lifted the nightly curfew while permitting free movement day and night. However, social distancing measures were to be observed. Many businesses and restaurants have since reopened nationwide.
- 7 July 2020: The Dubai government announced that foreign visitors would be permitted to enter.
- 2 February 2021: Dubai reimposed one month of operations in public spaces at 70% capacity due to new COVID-19 outbreaks
2.2. Understanding Load Profiles during the COVID-19 Lockdown
2.3. Profile Data of Residential User Surveys
2.4. Regional Mobility Data for Dubai during COVID-19 Lockdown
3. Methodology
3.1. About Data
- Pre-lockdown: March 2020;
- Full-lockdown: April 2020;
- Post-lockdown: May 2020.
3.2. Behavioral Data Analysis
3.3. Data Modeling
3.3.1. Machine Learning Methods
Support Vector Regression
Random Forest
Deep Learning
3.3.2. Feature Selection vs. Importance of Features in the Model
Feature Selection
Importance of Features in the Model
3.3.3. Evaluation Metrics
Root Mean Square Error
Mean Absolute Error
Mean Absolute Percentage Error
4. Observations and Results
4.1. Behavioral Analysis
4.1.1. The Need for High-Resolution Data
4.1.2. The Effect of Mobility Restriction
4.1.3. The Temperature Effect
4.1.4. The Behavioral Traits during and after the Lockdown Period in 2020
4.1.5. Comparison of the Consumption Profile across Analogous Periods
Comparison between Weekdays
Comparison between Weekends
Consumption vs. Occupancy in Bedrooms
4.1.6. Discussion and Summary of the Analysis
- Residential energy consumption during and after 2020 has increased, especially during the day, compared to previous years (i.e., 2018 and 2019).
- There has been an up-shift in consumption by 12% since the COVID-19 era.
- Seasonality effects of temperature were observed in consumption data for AC-included consumers.
- The mean electricity consumption increased with the temperature increase as more cooling is required to maintain thermal comfort.
- The mean electricity consumption among Dubai residents/households increased despite the temperature effects and considering the full occupancy during the full lockdown period compared to the pre-lockdown period.
- The mean consumption profiles of consumers during Weekdays and Weekends were similar throughout the full lockdown period.
- The mean consumption profiles of consumers across all working days had similar profiles in the full lockdown period.
4.2. Electricity Demand Modeling
4.2.1. Feature Selection and Modeling
4.2.2. Feature Analysis
4.2.3. Results and Discussion
4.2.4. Comparison of Machine Learning vs. Deep Learning Results
4.2.5. Limitations
5. Conclusions and Future Works
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Models | Random Forest | SVR |
---|---|---|
RMSE (kWh) | 0.17 | 0.15 |
MAE | 0.18 | 0.16 |
R-Squared | 0.95 | 0.95 |
Model | RF | SVR | ||||
---|---|---|---|---|---|---|
Time Period | RMSE (kWh) | MAE | MAPE | RMSE (kWh) | MAE | MAPE |
2019 | 0.17 | 0.11 | 5.06 | 0.15 | 0.12 | 5.77 |
2020 | 0.24 | 0.17 | 6.92 | 0.36 | 0.23 | 9.00 |
2021 | 0.23 | 0.17 | 6.54 | 0.29 | 0.20 | 8.24 |
April 2019 | 0.21 | 0.15 | 7.43 | 0.14 | 0.12 | 6.10 |
April 2020 | 0.27 | 0.20 | 8.69 | 0.28 | 0.21 | 8.91 |
April 2021 | 0.26 | 0.20 | 8.61 | 0.27 | 0.21 | 9.05 |
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Manandhar, P.; Rafiq, H.; Rodriguez-Ubinas, E.; Barbosa, J.D.; Qureshi, O.A.; Tarek, M.; Sgouridis, S. Understanding Energy Behavioral Changes Due to COVID-19 in the Residents of Dubai Using Electricity Consumption Data and Their Impacts. Energies 2023, 16, 285. https://doi.org/10.3390/en16010285
Manandhar P, Rafiq H, Rodriguez-Ubinas E, Barbosa JD, Qureshi OA, Tarek M, Sgouridis S. Understanding Energy Behavioral Changes Due to COVID-19 in the Residents of Dubai Using Electricity Consumption Data and Their Impacts. Energies. 2023; 16(1):285. https://doi.org/10.3390/en16010285
Chicago/Turabian StyleManandhar, Prajowal, Hasan Rafiq, Edwin Rodriguez-Ubinas, Juan David Barbosa, Omer Ahmed Qureshi, Mahmoud Tarek, and Sgouris Sgouridis. 2023. "Understanding Energy Behavioral Changes Due to COVID-19 in the Residents of Dubai Using Electricity Consumption Data and Their Impacts" Energies 16, no. 1: 285. https://doi.org/10.3390/en16010285
APA StyleManandhar, P., Rafiq, H., Rodriguez-Ubinas, E., Barbosa, J. D., Qureshi, O. A., Tarek, M., & Sgouridis, S. (2023). Understanding Energy Behavioral Changes Due to COVID-19 in the Residents of Dubai Using Electricity Consumption Data and Their Impacts. Energies, 16(1), 285. https://doi.org/10.3390/en16010285