Optimal management of demand-side flexibility in buildings is important for properly integrating large amounts of intermittent generation from windmills and photovoltaics. This paper proposes a novel Energy Management Agent (EMA) concept that can optimize building’s energy costs with respect to external prices while at the same time allow building’s flexibility to be used via explicit demand response. The EMA combines Artificial Neural Networks (ANN) and model predictive control for modelling and optimization of building’s flexibility. It continuously manages building’s flexibility with respect to external prices and provides forecasts of the load and available flexibility for a defined time window. A proof-of-concept (PoC) of the EMA is im...
The present article describes the integration of a data-driven predictive demand response control fo...
Buildings have long been large energy consumers, and inadequate control of heating, ventilation, and...
Accurate prediction from electricity demand models is helpful in controlling and optimizing building...
Optimal management of demand-side flexibility in buildings is important for properly integrating lar...
Future building energy management systems will have to be capable of adapting to variation in the ra...
District cooling systems (DCSs) belonging to multi-energy systems can be managed by model predictive...
This paper introduces a novel, adaptive, heating set point scheduler that aims to minimise the heati...
Prefabricated Movable Buildings (PMBs) are gaining great attention in several applications, such as ...
AbstractThe use of artificial neural networks (ANNs) in various applications has grown significantly...
The use of artificial neural networks (ANNs) in various applications has grown significantly over th...
Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers to the necessar...
Summarization: Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers ...
A reliable preliminary forecast of heating energy demand of a building by using a detailed dynamic s...
At present, the domotization of homes and public buildings is becoming increasingly popular. Domoti...
This article presents a new energy management system (EMS) for a variety of energy flexibility conve...
The present article describes the integration of a data-driven predictive demand response control fo...
Buildings have long been large energy consumers, and inadequate control of heating, ventilation, and...
Accurate prediction from electricity demand models is helpful in controlling and optimizing building...
Optimal management of demand-side flexibility in buildings is important for properly integrating lar...
Future building energy management systems will have to be capable of adapting to variation in the ra...
District cooling systems (DCSs) belonging to multi-energy systems can be managed by model predictive...
This paper introduces a novel, adaptive, heating set point scheduler that aims to minimise the heati...
Prefabricated Movable Buildings (PMBs) are gaining great attention in several applications, such as ...
AbstractThe use of artificial neural networks (ANNs) in various applications has grown significantly...
The use of artificial neural networks (ANNs) in various applications has grown significantly over th...
Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers to the necessar...
Summarization: Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers ...
A reliable preliminary forecast of heating energy demand of a building by using a detailed dynamic s...
At present, the domotization of homes and public buildings is becoming increasingly popular. Domoti...
This article presents a new energy management system (EMS) for a variety of energy flexibility conve...
The present article describes the integration of a data-driven predictive demand response control fo...
Buildings have long been large energy consumers, and inadequate control of heating, ventilation, and...
Accurate prediction from electricity demand models is helpful in controlling and optimizing building...