This paper analyses the factors affecting the heating consumption of a heating substation. The input parameters of neural network prediction model are analysed and selected. The average absolute error, average absolute percentage error, and mean square error are used to evaluate the effect of the prediction model. The results show that when the model input parameters are the maximum outdoor temperature, the average outdoor temperature, the average temperature difference between the primary supply and return of domestic hot water, the heating load in the previous three days, the heating load in the previous two days, the heating load in the previous day and when the model input parameters are the maximum outdoor temperature, the minimum outd...
Summarization: The present work focuses on the long term prediction of temperature data employing ne...
For load forecasting, numerous machine learning (ML) approaches have been published. Besides fully c...
For district heating systems, prediction of the heat load is a very important topic for energy stora...
This paper analyses the factors affecting the heating consumption of a heating substation. The input...
This paper studies the influencing parameters of the heating consumption prediction in heating subst...
Abstract:- This paper presents the development and exploitation of two mathematical models based on ...
<p>Recent research has seen several forecasting methods being applied for heat load forecasting of d...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
Abstract:- This paper deals with design of a model for short-term heat demand forecasting. Forecast ...
To run a district heating system as efficiently as possible correct unit-commitmentdecisions has to ...
Heating system load forecasting is very important in heating system planning and formulating heating...
Successful operation of a district heating system requires optimal scheduling of heating resources t...
Short-term load prediction is very important for advanced decision making in district heating system...
Characterizing and predicting the heat demand in buildings is vital for effective district heating o...
To develop an advanced control of thermal energy supply for domestic heating, a number of new challe...
Summarization: The present work focuses on the long term prediction of temperature data employing ne...
For load forecasting, numerous machine learning (ML) approaches have been published. Besides fully c...
For district heating systems, prediction of the heat load is a very important topic for energy stora...
This paper analyses the factors affecting the heating consumption of a heating substation. The input...
This paper studies the influencing parameters of the heating consumption prediction in heating subst...
Abstract:- This paper presents the development and exploitation of two mathematical models based on ...
<p>Recent research has seen several forecasting methods being applied for heat load forecasting of d...
The rapid increase in energy demand requires effective measures to plan and optimize resources for e...
Abstract:- This paper deals with design of a model for short-term heat demand forecasting. Forecast ...
To run a district heating system as efficiently as possible correct unit-commitmentdecisions has to ...
Heating system load forecasting is very important in heating system planning and formulating heating...
Successful operation of a district heating system requires optimal scheduling of heating resources t...
Short-term load prediction is very important for advanced decision making in district heating system...
Characterizing and predicting the heat demand in buildings is vital for effective district heating o...
To develop an advanced control of thermal energy supply for domestic heating, a number of new challe...
Summarization: The present work focuses on the long term prediction of temperature data employing ne...
For load forecasting, numerous machine learning (ML) approaches have been published. Besides fully c...
For district heating systems, prediction of the heat load is a very important topic for energy stora...