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 err...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...
To encourage building owners to purchase electricity at the wholesale market and reduce building pea...
Short-term building energy predictions serve as one of the fundamental tasks in building operation m...
Various algorithms predominantly use data-driven methods for forecasting building electricity consum...
Electricity load forecasting is an important part of power system dispatching. Accurately forecastin...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
Energy consumption prediction application is one of the most important fieldsthat is artificially co...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
With increasing of distributed energy resources deployment behind-the-meter and of the power system ...
As with many other sectors, to improve the energy performance and energy neutrality requirements of ...
Energy, as an essential aspect of socioeconomic growth, has remained an intriguing issue for many re...
Time series load forecasting is an important aspect when it comes to energy management. This is an ...
In the last few years, the expanding energy utilization has imposed the formation of solutions for s...
Building energy predictions are in critical need in many fields. The conventional physic model-based...
Demand side management at district scale plays a crucial role in the energy transition process, bein...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...
To encourage building owners to purchase electricity at the wholesale market and reduce building pea...
Short-term building energy predictions serve as one of the fundamental tasks in building operation m...
Various algorithms predominantly use data-driven methods for forecasting building electricity consum...
Electricity load forecasting is an important part of power system dispatching. Accurately forecastin...
Advances in metering technologies and emerging energy forecast strategies provide opportunities and ...
Energy consumption prediction application is one of the most important fieldsthat is artificially co...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
With increasing of distributed energy resources deployment behind-the-meter and of the power system ...
As with many other sectors, to improve the energy performance and energy neutrality requirements of ...
Energy, as an essential aspect of socioeconomic growth, has remained an intriguing issue for many re...
Time series load forecasting is an important aspect when it comes to energy management. This is an ...
In the last few years, the expanding energy utilization has imposed the formation of solutions for s...
Building energy predictions are in critical need in many fields. The conventional physic model-based...
Demand side management at district scale plays a crucial role in the energy transition process, bein...
In a future Smart Grid context, increasing challenges in managing the stochastic local energy supply...
To encourage building owners to purchase electricity at the wholesale market and reduce building pea...
Short-term building energy predictions serve as one of the fundamental tasks in building operation m...