Context. Heat load forecasting is an important part of district heating optimization. In particular, energy companies aim at minimizing peak boiler usage, optimizing combined heat and power generation and planning base production. To achieve resource efficiency, the energy companies need to estimate how much energy is required to satisfy the market demand. Objectives. We suggest an online machine learning algorithm for heat load forecasting. Online algorithms are increasingly used due to their computational efficiency and their ability to handle changes of the predictive target variable over time. We extend the implementation of online bagging to make it compatible to regression problems and we use the Fast Incremental Model Trees with Drif...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Recent research has seen several forecasting methods being applied for heat load forecasting of dist...
District heating systems are important utility systems. If these systems are properly managed, they ...
Heat demand forecasting is in one form or another an integrated part of most optimisation solutions ...
Precise forecasting of thermal loads is a critical factor for economic and efficient operation of di...
We present our data-driven supervised machine-learning (ML) model to predict heat load for buildings...
In an increasingly applied domain of pervasive computing, sensing devices are being deployed progres...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
Forecasting an hourly heat demand during different periods of district heating network operation is ...
The growing population in cities increases the energy demand and affects the environment by increasi...
A large proportion of the energy consumed by private households is used for space heating and domest...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Novel control strategies to reduce the heating and cooling energy consumption of buildings and distr...
Current district heating networks are undergoing a sustainable transition towards the 4th and 5th ge...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Recent research has seen several forecasting methods being applied for heat load forecasting of dist...
District heating systems are important utility systems. If these systems are properly managed, they ...
Heat demand forecasting is in one form or another an integrated part of most optimisation solutions ...
Precise forecasting of thermal loads is a critical factor for economic and efficient operation of di...
We present our data-driven supervised machine-learning (ML) model to predict heat load for buildings...
In an increasingly applied domain of pervasive computing, sensing devices are being deployed progres...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
Forecasting an hourly heat demand during different periods of district heating network operation is ...
The growing population in cities increases the energy demand and affects the environment by increasi...
A large proportion of the energy consumed by private households is used for space heating and domest...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Novel control strategies to reduce the heating and cooling energy consumption of buildings and distr...
Current district heating networks are undergoing a sustainable transition towards the 4th and 5th ge...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Recent research has seen several forecasting methods being applied for heat load forecasting of dist...
District heating systems are important utility systems. If these systems are properly managed, they ...