Impact of the COVID-19 Lockdown on the Electricity System of Great Britain: A Study on Energy Demand, Generation, Pricing and Grid Stability
Abstract
:1. Introduction
- This analysis characterises the changes in aggregate demand magnitude and profile due to the lockdown with various quantitative markers such as load duration curve, statistical distribution analysis and others.
- The ripple effects on the generation portfolio, system frequency, forecasting accuracy and imbalance pricing are also evaluated.
- The effect of the lockdown on domestic consumers on a variable energy tariff is identified and over 70 occurrences of negative pricing were detected.
- The implications of the lockdown are discussed for different stakeholders including generators, industrial and commercial consumers, domestic consumers on both fixed and variable tariffs, aggregators and demand-side response providers.
- The possibility of the lockdown data being an outlook for the future electricity system in terms of flatter demand profile and increased contribution from the variable renewable generators is discussed.
- The electricity data extraction and pre-processing pipeline that can be used in a variety of similar studies is presented.
2. Methodology
2.1. Function of the Data Pipeline Code
- Import the data from the source webpage using the API user key.
- Identify the keywords and group the data.
- Create weekly data frames (according to the Monday-to-Sunday convention (i.e., ISO 8601)).
- Check for zeros, invalid or duplicate data.
- Label and discard the columns that are not of interest.
- Adjust the date and time format (e.g., change from half-hourly settlement period convention (where 01:00 is denoted by 2) to time).
- Save the adjusted data in CSV format with an automated title(_Week_starting_.csv).
- Calculate statistical and other quantitative descriptors such as mean, peak-to-mean ratio, etc.
- Produce comparative visualisations of the data.
2.2. Other Uses of the Data Pipeline
3. Results
3.1. Demand Profile
3.2. Generation Portfolio
3.2.1. Renewable Energy Contribution
3.2.2. Impact on the Conventional Generation Portfolio
3.3. Forecasting and Grid Stability
3.3.1. Deviations in System Frequency
3.3.2. Load Forecast Error
3.3.3. Imbalance Volume
- Demand prediction errors by suppliers.
- Generation prediction errors by generators (i.e., not able to tightly control the operation of intermittent units).
- Problems in transmission lines.
- Balance must exist at every instant, but market trades in half-hour. settlement periods.
3.3.4. Loss of Load Probability
3.4. The Effects on Market Price
3.4.1. Day-Ahead Wholesale Market Price
3.4.2. System Imbalance Price
3.4.3. Variable Pricing for Domestic Consumers
4. Discussion
4.1. Implications for Stakeholders
4.1.1. Implications for Future Systems
4.2. Outlook and Future Work
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Profile | Peak Load (MW) | % | Mean Load (MW) | % | Base Load (MW) | % |
---|---|---|---|---|---|---|
Pre | 46,425 | 33,868 | 22,982 | |||
Post | 38,585 | −20.31% | 27,294 | −24.08% | 20,795 | −9.5% |
Data | Mean | Min | Max |
---|---|---|---|
Pre (Hz) | 49.998804 | 49.736000 | 50.207000 |
Post (Hz) | 49.998657 | 49.775000 | 50.267000 |
Data | Mean | Min | Max | Dates Corresponding to Max Values |
---|---|---|---|---|
Pre (p/kWh) | −1.62 | −0.07 | −4.85 | 9 December 2019 |
Post (p/kWh) | −1.36 | −0.02 | −3.99 | 20 April 2020 |
Overall (p/kWh) | −1.44 | −0.02 | −4.85 | 9 December 2019 |
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Kirli, D.; Parzen, M.; Kiprakis, A. Impact of the COVID-19 Lockdown on the Electricity System of Great Britain: A Study on Energy Demand, Generation, Pricing and Grid Stability. Energies 2021, 14, 635. https://doi.org/10.3390/en14030635
Kirli D, Parzen M, Kiprakis A. Impact of the COVID-19 Lockdown on the Electricity System of Great Britain: A Study on Energy Demand, Generation, Pricing and Grid Stability. Energies. 2021; 14(3):635. https://doi.org/10.3390/en14030635
Chicago/Turabian StyleKirli, Desen, Maximilian Parzen, and Aristides Kiprakis. 2021. "Impact of the COVID-19 Lockdown on the Electricity System of Great Britain: A Study on Energy Demand, Generation, Pricing and Grid Stability" Energies 14, no. 3: 635. https://doi.org/10.3390/en14030635
APA StyleKirli, D., Parzen, M., & Kiprakis, A. (2021). Impact of the COVID-19 Lockdown on the Electricity System of Great Britain: A Study on Energy Demand, Generation, Pricing and Grid Stability. Energies, 14(3), 635. https://doi.org/10.3390/en14030635