Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison Study

We present our data-driven supervised machine-learning (ML) model to predict heat load for buildings in a district heating system (DHS). Even though ML has been used as an approach to heat load prediction in literature, it is hard to select an approach that will qualify as a solution for our case as...

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Main Authors: Fisnik Dalipi, Sule Yildirim Yayilgan, Alemayehu Gebremedhin
Format: Article
Language:English
Published: Hindawi Limited 2016-01-01
Series:Applied Computational Intelligence and Soft Computing
Online Access:http://dx.doi.org/10.1155/2016/3403150
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spelling doaj-a3d32b3f05c84a4699eced0ccb9892412020-11-24T22:20:03ZengHindawi LimitedApplied Computational Intelligence and Soft Computing1687-97241687-97322016-01-01201610.1155/2016/34031503403150Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison StudyFisnik Dalipi0Sule Yildirim Yayilgan1Alemayehu Gebremedhin2Faculty of Computer Science and Media Technology, Norwegian University of Science and Technology, 2815 Gjøvik, NorwayFaculty of Computer Science and Media Technology, Norwegian University of Science and Technology, 2815 Gjøvik, NorwayFaculty of Technology and Management, Norwegian University of Science and Technology, 2815 Gjøvik, NorwayWe present our data-driven supervised machine-learning (ML) model to predict heat load for buildings in a district heating system (DHS). Even though ML has been used as an approach to heat load prediction in literature, it is hard to select an approach that will qualify as a solution for our case as existing solutions are quite problem specific. For that reason, we compared and evaluated three ML algorithms within a framework on operational data from a DH system in order to generate the required prediction model. The algorithms examined are Support Vector Regression (SVR), Partial Least Square (PLS), and random forest (RF). We use the data collected from buildings at several locations for a period of 29 weeks. Concerning the accuracy of predicting the heat load, we evaluate the performance of the proposed algorithms using mean absolute error (MAE), mean absolute percentage error (MAPE), and correlation coefficient. In order to determine which algorithm had the best accuracy, we conducted performance comparison among these ML algorithms. The comparison of the algorithms indicates that, for DH heat load prediction, SVR method presented in this paper is the most efficient one out of the three also compared to other methods found in the literature.http://dx.doi.org/10.1155/2016/3403150
collection DOAJ
language English
format Article
sources DOAJ
author Fisnik Dalipi
Sule Yildirim Yayilgan
Alemayehu Gebremedhin
spellingShingle Fisnik Dalipi
Sule Yildirim Yayilgan
Alemayehu Gebremedhin
Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison Study
Applied Computational Intelligence and Soft Computing
author_facet Fisnik Dalipi
Sule Yildirim Yayilgan
Alemayehu Gebremedhin
author_sort Fisnik Dalipi
title Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison Study
title_short Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison Study
title_full Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison Study
title_fullStr Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison Study
title_full_unstemmed Data-Driven Machine-Learning Model in District Heating System for Heat Load Prediction: A Comparison Study
title_sort data-driven machine-learning model in district heating system for heat load prediction: a comparison study
publisher Hindawi Limited
series Applied Computational Intelligence and Soft Computing
issn 1687-9724
1687-9732
publishDate 2016-01-01
description We present our data-driven supervised machine-learning (ML) model to predict heat load for buildings in a district heating system (DHS). Even though ML has been used as an approach to heat load prediction in literature, it is hard to select an approach that will qualify as a solution for our case as existing solutions are quite problem specific. For that reason, we compared and evaluated three ML algorithms within a framework on operational data from a DH system in order to generate the required prediction model. The algorithms examined are Support Vector Regression (SVR), Partial Least Square (PLS), and random forest (RF). We use the data collected from buildings at several locations for a period of 29 weeks. Concerning the accuracy of predicting the heat load, we evaluate the performance of the proposed algorithms using mean absolute error (MAE), mean absolute percentage error (MAPE), and correlation coefficient. In order to determine which algorithm had the best accuracy, we conducted performance comparison among these ML algorithms. The comparison of the algorithms indicates that, for DH heat load prediction, SVR method presented in this paper is the most efficient one out of the three also compared to other methods found in the literature.
url http://dx.doi.org/10.1155/2016/3403150
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AT alemayehugebremedhin datadrivenmachinelearningmodelindistrictheatingsystemforheatloadpredictionacomparisonstudy
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