The growing population in cities increases the energy demand and affects the environment by increasing carbon emissions. Information and communications technology solutions which enable energy optimization are needed to address this growing energy demand in cities and to reduce carbon emissions. District heating systems optimize the energy production by reusing waste energy with combined heat and power plants. Forecasting the heat load demand in residential buildings assists in optimizing energy production and consumption in a district heating system. However, the presence of a large number of factors such as weather forecast, district heating operational parameters and user behavioural parameters, make heat load forecasting a challenging t...
Precise forecasting of thermal loads is a critical factor for economic and efficient operation of di...
This work presents a data-intensive solution to predict heating and hot water consumption. The abili...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
The growing population in cities increases the energy demand and affects the environment by increasi...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
Characterizing and predicting the heat demand in buildings is vital for effective district heating o...
Context. Heat load forecasting is an important part of district heating optimization. In particular,...
Cooling load prediction is indispensable to many building energy saving strategies. In this paper, w...
In an increasingly applied domain of pervasive computing, sensing devices are being deployed progres...
Heat demand of a district heating network needs to be accurately predicted and managed to reduce con...
A large proportion of the energy consumed by private households is used for space heating and domest...
Short term heat load forecasts are vital for optimal production planning and commitment of generatio...
This paper presents a novel framework for the analysis of heat consumption data of buildings connect...
District Heating (DH) networks are promising technologies for heat distribution in residential and c...
Forecasting an hourly heat demand during different periods of district heating network operation is ...
Precise forecasting of thermal loads is a critical factor for economic and efficient operation of di...
This work presents a data-intensive solution to predict heating and hot water consumption. The abili...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
The growing population in cities increases the energy demand and affects the environment by increasi...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
Characterizing and predicting the heat demand in buildings is vital for effective district heating o...
Context. Heat load forecasting is an important part of district heating optimization. In particular,...
Cooling load prediction is indispensable to many building energy saving strategies. In this paper, w...
In an increasingly applied domain of pervasive computing, sensing devices are being deployed progres...
Heat demand of a district heating network needs to be accurately predicted and managed to reduce con...
A large proportion of the energy consumed by private households is used for space heating and domest...
Short term heat load forecasts are vital for optimal production planning and commitment of generatio...
This paper presents a novel framework for the analysis of heat consumption data of buildings connect...
District Heating (DH) networks are promising technologies for heat distribution in residential and c...
Forecasting an hourly heat demand during different periods of district heating network operation is ...
Precise forecasting of thermal loads is a critical factor for economic and efficient operation of di...
This work presents a data-intensive solution to predict heating and hot water consumption. The abili...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...