A data-driven strategy using long short term memory models and reinforcement learning to predict building electricity consumption. (15th January 2022)
- Record Type:
- Journal Article
- Title:
- A data-driven strategy using long short term memory models and reinforcement learning to predict building electricity consumption. (15th January 2022)
- Main Title:
- A data-driven strategy using long short term memory models and reinforcement learning to predict building electricity consumption
- Authors:
- Zhou, Xinlei
Lin, Wenye
Kumar, Ritunesh
Cui, Ping
Ma, Zhenjun - Abstract:
- Highlights: A data-driven strategy with self-optimization capability was developed. Long short-term memory was used to develop the forecasting models. Reinforcement learning was used to optimize the model parameters. It showed superior performance for buildings with large energy consumption variations. Abstract: Data-driven modeling emerges as a promising approach to predicting building electricity consumption and facilitating building energy management. However, the majority of the existing models suffer from performance degradation during the prediction process. This paper presents a new strategy that integrates Long Short Term Memory (LSTM) models and Reinforcement Learning (RL) agents to forecast building next-day electricity consumption and peak electricity demand. In this strategy, LSTM models were first developed and trained using the historical data as the base models for prediction. RL agents were further constructed and introduced to learn a policy that can dynamically tune the parameters of the LSTM models according to the prediction error. This strategy was tested using the electricity consumption data collected from a group of university buildings and student accommodations. The results showed that for the student accommodations which showed relatively large monthly variations in daily electricity consumption, the proposed strategy can increase the prediction accuracy by up to 23.5% as compared with the strategy using the LSTM models only. However, when it wasHighlights: A data-driven strategy with self-optimization capability was developed. Long short-term memory was used to develop the forecasting models. Reinforcement learning was used to optimize the model parameters. It showed superior performance for buildings with large energy consumption variations. Abstract: Data-driven modeling emerges as a promising approach to predicting building electricity consumption and facilitating building energy management. However, the majority of the existing models suffer from performance degradation during the prediction process. This paper presents a new strategy that integrates Long Short Term Memory (LSTM) models and Reinforcement Learning (RL) agents to forecast building next-day electricity consumption and peak electricity demand. In this strategy, LSTM models were first developed and trained using the historical data as the base models for prediction. RL agents were further constructed and introduced to learn a policy that can dynamically tune the parameters of the LSTM models according to the prediction error. This strategy was tested using the electricity consumption data collected from a group of university buildings and student accommodations. The results showed that for the student accommodations which showed relatively large monthly variations in daily electricity consumption, the proposed strategy can increase the prediction accuracy by up to 23.5% as compared with the strategy using the LSTM models only. However, when it was applied to the buildings with insignificant monthly variations in the daily electricity consumption, the prediction accuracy did not show an obvious improvement when compared with the use of the LSTM models alone. This study demonstrated how to use LSTM models and reinforcement learning with self-optimization capability to likely provide more reliable prediction in daily electricity consumption and thus to facilitate building optimal operation and demand side management. … (more)
- Is Part Of:
- Applied energy. Volume 306:Part B(2022)
- Journal:
- Applied energy
- Issue:
- Volume 306:Part B(2022)
- Issue Display:
- Volume 306, Issue 2 (2022)
- Year:
- 2022
- Volume:
- 306
- Issue:
- 2
- Issue Sort Value:
- 2022-0306-0002-0000
- Page Start:
- Page End:
- Publication Date:
- 2022-01-15
- Subjects:
- Long short term memory -- Data-driven method -- Reinforcement learning -- Electricity consumption prediction
Power (Mechanics) -- Periodicals
Energy conservation -- Periodicals
Energy conversion -- Periodicals
621.042 - Journal URLs:
- http://www.sciencedirect.com/science/journal/03062619 ↗
http://www.elsevier.com/journals ↗ - DOI:
- 10.1016/j.apenergy.2021.118078 ↗
- Languages:
- English
- ISSNs:
- 0306-2619
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 1572.300000
British Library DSC - BLDSS-3PM
British Library HMNTS - ELD Digital store - Ingest File:
- 20161.xml