The heat load in district heating systems is affected by the weather and by human behavior, and special consumption patterns are observed around holidays. This study employs a top-down approach to heat load forecasting using meteorological data and new untraditional data types such as school holidays. Three different machine learning models are benchmarked for forecasting the aggregated heat load of the large district heating system of Aarhus, Denmark. The models are trained on six years of measured hourly heat load data and a blind year of test data is withheld until the final testing of the forecasting capabilities of the models. In this final test, weather forecasts from the Danish Meteorological Institute are used to measure the perform...
Successful operation of a district heating system requires optimal scheduling of heating resources t...
The increasing growth in the energy demand calls for robust actions to design and optimize energy-re...
This paper proposes an Artificial Intelligence (AI) based data-driven approach to forecast heat dema...
District Heating (DH) networks are promising technologies for heat distribution in residential and c...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Precise forecasting of thermal loads is a critical factor for economic and efficient operation of di...
Characterizing and predicting the heat demand in buildings is vital for effective district heating o...
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...
Context. Heat load forecasting is an important part of district heating optimization. In particular,...
Recent research has seen several forecasting methods being applied for heat load forecasting of dist...
In the face of green energy initiatives and progressively increasing shares of more energy-efficient...
Short term heat load forecasts are vital for optimal production planning and commitment of generatio...
Predicting cooling load is essential for many applications such as diagnosing the health of existing...
Successful operation of a district heating system requires optimal scheduling of heating resources t...
The increasing growth in the energy demand calls for robust actions to design and optimize energy-re...
This paper proposes an Artificial Intelligence (AI) based data-driven approach to forecast heat dema...
District Heating (DH) networks are promising technologies for heat distribution in residential and c...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Precise forecasting of thermal loads is a critical factor for economic and efficient operation of di...
Characterizing and predicting the heat demand in buildings is vital for effective district heating o...
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...
Context. Heat load forecasting is an important part of district heating optimization. In particular,...
Recent research has seen several forecasting methods being applied for heat load forecasting of dist...
In the face of green energy initiatives and progressively increasing shares of more energy-efficient...
Short term heat load forecasts are vital for optimal production planning and commitment of generatio...
Predicting cooling load is essential for many applications such as diagnosing the health of existing...
Successful operation of a district heating system requires optimal scheduling of heating resources t...
The increasing growth in the energy demand calls for robust actions to design and optimize energy-re...
This paper proposes an Artificial Intelligence (AI) based data-driven approach to forecast heat dema...