Short-term load forecasting ensures the efficient operation of power systems besides affording continuous power supply for energy consumers. Smart meters that are capable of providing detailed information on buildings energy consumption, open several doors of opportunity to short-term load forecasting at the individual building level. In the current paper, four machine learning methods have been employed to forecast the daily peak and hourly energy consumption of domestic buildings. The utilized models depend merely on buildings historical energy consumption and are evaluated on the profiles that were not previously trained on. It is evident that developing data-driven models lacking external information such as weather and building data ar...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
The increasing levels of energy consumption worldwide is raising issues with respect to surpassing s...
Time series load forecasting is an important aspect when it comes to energy management. This is an ...
The focus of this thesis is the use of machine learning algorithms to perform next step short term l...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
Master's thesis in Computer ScienceThe focus of this thesis is the use of machine learning algorithm...
Smart meters provide much energy consumption information at the residential level, making it possibl...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
The increasing levels of energy consumption worldwide is raising issues with respect to surpassing s...
Time series load forecasting is an important aspect when it comes to energy management. This is an ...
The focus of this thesis is the use of machine learning algorithms to perform next step short term l...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
The present paper is focused on short-term prediction of air-conditioning (AC) load of residential b...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
Master's thesis in Computer ScienceThe focus of this thesis is the use of machine learning algorithm...
Smart meters provide much energy consumption information at the residential level, making it possibl...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...