Stacking Ensemble Tree Models to Predict Energy Performance in Residential Buildings

In this research, a new machine-learning approach was proposed to evaluate the effects of eight input parameters (surface area, relative compactness, wall area, overall height, roof area, orientation, glazing area distribution, and glazing area) on two output parameters, namely, heating load (HL) an...

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Main Authors: Ahmed Salih Mohammed, Panagiotis G. Asteris, Mohammadreza Koopialipoor, Dimitrios E. Alexakis, Minas E. Lemonis, Danial Jahed Armaghani
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/13/15/8298
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spelling doaj-dc4a1e5482964fe49693e59b8362d4462021-08-06T15:32:31ZengMDPI AGSustainability2071-10502021-07-01138298829810.3390/su13158298Stacking Ensemble Tree Models to Predict Energy Performance in Residential BuildingsAhmed Salih Mohammed0Panagiotis G. Asteris1Mohammadreza Koopialipoor2Dimitrios E. Alexakis3Minas E. Lemonis4Danial Jahed Armaghani5Civil Engineering Department, College of Engineering, University of Sulaimani, Sulaymaniyah 46001, IraqComputational Mechanics Laboratory, School of Pedagogical and Technological Education, Heraklion, 14121 Athens, GreeceFaculty of Civil and Environmental Engineering, Amirkabir University of Technology, Tehran 15914, IranLaboratory of Geoenvironmental Science and Environmental Quality Assurance, Department of Civil Engineering, University of West Attica, 12241 Athens, GreeceComputational Mechanics Laboratory, School of Pedagogical and Technological Education, Heraklion, 14121 Athens, GreeceDepartment of Urban Planning, Engineering Networks and Systems, Institute of Architecture and Construction, South Ural State University, 454080 Chelyabinsk, RussiaIn this research, a new machine-learning approach was proposed to evaluate the effects of eight input parameters (surface area, relative compactness, wall area, overall height, roof area, orientation, glazing area distribution, and glazing area) on two output parameters, namely, heating load (HL) and cooling load (CL), of the residential buildings. The association strength of each input parameter with each output was systematically investigated using a variety of basic statistical analysis tools to identify the most effective and important input variables. Then, different combinations of data were designed using the intelligent systems, and the best combination was selected, which included the most optimal input data for the development of stacking models. After that, various machine learning models, i.e., XGBoost, random forest, classification and regression tree, and M5 tree model, were applied and developed to predict HL and CL values of the energy performance of buildings. The mentioned techniques were also used as base techniques in the forms of stacking models. As a result, the XGboost-based model achieved a higher accuracy level (HL: coefficient of determination, R<sup>2</sup> = 0.998; CL: R<sup>2</sup> = 0.971) with a lower system error (HL: root mean square error, RMSE = 0.461; CL: RMSE = 1.607) than the other developed models in predicting both HL and CL values. Using new stacking-based techniques, this research was able to provide alternative solutions for predicting HL and CL parameters with appropriate accuracy and runtime.https://www.mdpi.com/2071-1050/13/15/8298heating loadcooling loadresidential buildingmachine learningstacking ensemble tree model
collection DOAJ
language English
format Article
sources DOAJ
author Ahmed Salih Mohammed
Panagiotis G. Asteris
Mohammadreza Koopialipoor
Dimitrios E. Alexakis
Minas E. Lemonis
Danial Jahed Armaghani
spellingShingle Ahmed Salih Mohammed
Panagiotis G. Asteris
Mohammadreza Koopialipoor
Dimitrios E. Alexakis
Minas E. Lemonis
Danial Jahed Armaghani
Stacking Ensemble Tree Models to Predict Energy Performance in Residential Buildings
Sustainability
heating load
cooling load
residential building
machine learning
stacking ensemble tree model
author_facet Ahmed Salih Mohammed
Panagiotis G. Asteris
Mohammadreza Koopialipoor
Dimitrios E. Alexakis
Minas E. Lemonis
Danial Jahed Armaghani
author_sort Ahmed Salih Mohammed
title Stacking Ensemble Tree Models to Predict Energy Performance in Residential Buildings
title_short Stacking Ensemble Tree Models to Predict Energy Performance in Residential Buildings
title_full Stacking Ensemble Tree Models to Predict Energy Performance in Residential Buildings
title_fullStr Stacking Ensemble Tree Models to Predict Energy Performance in Residential Buildings
title_full_unstemmed Stacking Ensemble Tree Models to Predict Energy Performance in Residential Buildings
title_sort stacking ensemble tree models to predict energy performance in residential buildings
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2021-07-01
description In this research, a new machine-learning approach was proposed to evaluate the effects of eight input parameters (surface area, relative compactness, wall area, overall height, roof area, orientation, glazing area distribution, and glazing area) on two output parameters, namely, heating load (HL) and cooling load (CL), of the residential buildings. The association strength of each input parameter with each output was systematically investigated using a variety of basic statistical analysis tools to identify the most effective and important input variables. Then, different combinations of data were designed using the intelligent systems, and the best combination was selected, which included the most optimal input data for the development of stacking models. After that, various machine learning models, i.e., XGBoost, random forest, classification and regression tree, and M5 tree model, were applied and developed to predict HL and CL values of the energy performance of buildings. The mentioned techniques were also used as base techniques in the forms of stacking models. As a result, the XGboost-based model achieved a higher accuracy level (HL: coefficient of determination, R<sup>2</sup> = 0.998; CL: R<sup>2</sup> = 0.971) with a lower system error (HL: root mean square error, RMSE = 0.461; CL: RMSE = 1.607) than the other developed models in predicting both HL and CL values. Using new stacking-based techniques, this research was able to provide alternative solutions for predicting HL and CL parameters with appropriate accuracy and runtime.
topic heating load
cooling load
residential building
machine learning
stacking ensemble tree model
url https://www.mdpi.com/2071-1050/13/15/8298
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