We propose a method for detecting and forecasting events of high energy demand, which are managed at the national level in demand side response programmes, such as the UK Triads. The methodology consists of two stages: load forecasting with long short-term memory neural network and dynamic filtering of the potential highest electricity demand peaks by using the exponential moving average. The methodology is validated on real data of a UK building management system case study. We demonstrate successful forecasts of Triad events with RRMSE ≈ 2.2% and MAPE ≈ 1.6% and general applicability of the methodology for demand side response programme management, with reduction of energy consumption and indirect carbon emissions
This study presents a model for district-level electricity demand forecasting using a set of Artific...
Short-term forecasts have recently gained an increasing attention because of the rise of competitive...
Artificial Neural Network model for short-term demand forecast of hourly peak load is proposed in th...
Master's thesis in Computer scienceAccurate peak load forecasting plays a key role in operation and ...
The power output capacity of a local electrical utility is dictated by its customers’ cumulative pea...
Forecasting energy demand of residential buildings plays an important role in the operation of smart...
This paper reports on the application of Artificial Neural Networks (ANN) to long-term load forecast...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
This paper examines the application of artificial neural networks (ANNs) to the modelling and foreca...
Energy demand forecasting is practiced in several time frames; different explanatory variables are u...
Providing a stable, low-price, and safe supply of energy to end-users is a challenging task. The ene...
This study presents a model for district-level electricity demand forecasting using a set of Artific...
The higher share of renewable energy sources in the electrical grid and the electrification of signi...
With the steep rise in the development of smart grids and the current advancement in developing meas...
Electricity load forecasting provides the critical information required for power institutions and a...
This study presents a model for district-level electricity demand forecasting using a set of Artific...
Short-term forecasts have recently gained an increasing attention because of the rise of competitive...
Artificial Neural Network model for short-term demand forecast of hourly peak load is proposed in th...
Master's thesis in Computer scienceAccurate peak load forecasting plays a key role in operation and ...
The power output capacity of a local electrical utility is dictated by its customers’ cumulative pea...
Forecasting energy demand of residential buildings plays an important role in the operation of smart...
This paper reports on the application of Artificial Neural Networks (ANN) to long-term load forecast...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
This paper examines the application of artificial neural networks (ANNs) to the modelling and foreca...
Energy demand forecasting is practiced in several time frames; different explanatory variables are u...
Providing a stable, low-price, and safe supply of energy to end-users is a challenging task. The ene...
This study presents a model for district-level electricity demand forecasting using a set of Artific...
The higher share of renewable energy sources in the electrical grid and the electrification of signi...
With the steep rise in the development of smart grids and the current advancement in developing meas...
Electricity load forecasting provides the critical information required for power institutions and a...
This study presents a model for district-level electricity demand forecasting using a set of Artific...
Short-term forecasts have recently gained an increasing attention because of the rise of competitive...
Artificial Neural Network model for short-term demand forecast of hourly peak load is proposed in th...