The value of active demand in the electricity and ancillary service markets depends very much on the predictability of its aggregated control responses. In this work, the authors study electrically heated small houses that have electrical heating with heat storage tanks and remote control via a smart metering system. They integrate a simple physically based model to a machine learning forecasting method thus combining the strengths of the component methods. Now a stacked boosters network, a new deep learning method, is applied and briefly compared with a support vector regression, an earlier machine learning model. The simple physically based model component models the thermal dynamics of the heat storage tank and the outdoor dependent heat...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Heat demand forecasting is in one form or another an integrated part of most optimisation solutions ...
Context. Heat load forecasting is an important part of district heating optimization. In particular,...
Machine learning methods predict accurately in situations that are adequately included in the learni...
Combining the strengths of different modelling approaches and various information sources is studied...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
A hybrid model for short-term forecasting of aggregated thermal loads and their load control respons...
Current district heating networks are undergoing a sustainable transition towards the 4th and 5th ge...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
The increasing levels of energy consumption worldwide is raising issues with respect to surpassing s...
In an increasingly applied domain of pervasive computing, sensing devices are being deployed progres...
Load-forecasting problems have already been widely addressed with different approaches, granularitie...
<p>Recent research has seen several forecasting methods being applied for heat load forecasting of d...
Electricity load forecasting is an important part of power system dispatching. Accurately forecastin...
District heating systems are important utility systems. If these systems are properly managed, they ...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Heat demand forecasting is in one form or another an integrated part of most optimisation solutions ...
Context. Heat load forecasting is an important part of district heating optimization. In particular,...
Machine learning methods predict accurately in situations that are adequately included in the learni...
Combining the strengths of different modelling approaches and various information sources is studied...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
A hybrid model for short-term forecasting of aggregated thermal loads and their load control respons...
Current district heating networks are undergoing a sustainable transition towards the 4th and 5th ge...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
The increasing levels of energy consumption worldwide is raising issues with respect to surpassing s...
In an increasingly applied domain of pervasive computing, sensing devices are being deployed progres...
Load-forecasting problems have already been widely addressed with different approaches, granularitie...
<p>Recent research has seen several forecasting methods being applied for heat load forecasting of d...
Electricity load forecasting is an important part of power system dispatching. Accurately forecastin...
District heating systems are important utility systems. If these systems are properly managed, they ...
In this work, we develop machine learning methods to forecast the day-ahead heating energy demand of...
Heat demand forecasting is in one form or another an integrated part of most optimisation solutions ...
Context. Heat load forecasting is an important part of district heating optimization. In particular,...