Predicting energy consumption for residential buildings using ANN through parametric modeling

Controlling buildings energy consumption is a great practical significance. During early design stage, accurate and rapid prediction of energy consumption could provide a quantitative basis for energy-saving designs. Currently, the key problem that are still facing designers is the interoperability...

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Main Authors: Emad Elbeltagi, Hossam Wefki
Format: Article
Language:English
Published: Elsevier 2021-11-01
Series:Energy Reports
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352484721002705
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spelling doaj-a1991aefda7b4deaad7f5b8c73858ce52021-05-06T04:24:52ZengElsevierEnergy Reports2352-48472021-11-01725342545Predicting energy consumption for residential buildings using ANN through parametric modelingEmad Elbeltagi0Hossam Wefki1Structural Eng. Department, Mansoura University, Mansoura 35516, EgyptCivil Eng. Department, British University in Egypt, Shrouk 11837, Egypt; Correspondence to: Atrium Quality Contractors – Talaat Mostafa Group, Al Rehab City, 11840, Egypt.Controlling buildings energy consumption is a great practical significance. During early design stage, accurate and rapid prediction of energy consumption could provide a quantitative basis for energy-saving designs. Currently, the key problem that are still facing designers is the interoperability between building modeling and energy simulation tools. In addition, design challenges gained recognition due to the complexity of the prevalence of large numbers of independent interrelated variables. Artificial Neural Networks (ANNs) are the most broadly applied artificial intelligence method in buildings’ performance field due to its competence to handle nonlinear variables’ relationships accurately and promptly. This paper presents a methodology based on the ANNs to improve the prediction of energy usage for residential buildings in early design stages. The model is created using a dataset resulted from the calculation of energy consumption by simulating multiple design options with randomly input variables. The proposed methodology can mitigate technical barriers while integrating and automating available commercial tools into a workflow from a parametric model to the simulation of building energy. The developed ANN model is evaluated and validated and used to predict the energy consumption with acceptable accuracy. Finally, a user-friendly interface is designed to facilitate energy consumption prediction without any experience in modeling and simulation tools acting as a decision support tool, which is simple, reliable and easy to use.http://www.sciencedirect.com/science/article/pii/S2352484721002705Energy simulationParametric analysisArtificial Neural NetworkResidential buildingsConceptual design phase
collection DOAJ
language English
format Article
sources DOAJ
author Emad Elbeltagi
Hossam Wefki
spellingShingle Emad Elbeltagi
Hossam Wefki
Predicting energy consumption for residential buildings using ANN through parametric modeling
Energy Reports
Energy simulation
Parametric analysis
Artificial Neural Network
Residential buildings
Conceptual design phase
author_facet Emad Elbeltagi
Hossam Wefki
author_sort Emad Elbeltagi
title Predicting energy consumption for residential buildings using ANN through parametric modeling
title_short Predicting energy consumption for residential buildings using ANN through parametric modeling
title_full Predicting energy consumption for residential buildings using ANN through parametric modeling
title_fullStr Predicting energy consumption for residential buildings using ANN through parametric modeling
title_full_unstemmed Predicting energy consumption for residential buildings using ANN through parametric modeling
title_sort predicting energy consumption for residential buildings using ann through parametric modeling
publisher Elsevier
series Energy Reports
issn 2352-4847
publishDate 2021-11-01
description Controlling buildings energy consumption is a great practical significance. During early design stage, accurate and rapid prediction of energy consumption could provide a quantitative basis for energy-saving designs. Currently, the key problem that are still facing designers is the interoperability between building modeling and energy simulation tools. In addition, design challenges gained recognition due to the complexity of the prevalence of large numbers of independent interrelated variables. Artificial Neural Networks (ANNs) are the most broadly applied artificial intelligence method in buildings’ performance field due to its competence to handle nonlinear variables’ relationships accurately and promptly. This paper presents a methodology based on the ANNs to improve the prediction of energy usage for residential buildings in early design stages. The model is created using a dataset resulted from the calculation of energy consumption by simulating multiple design options with randomly input variables. The proposed methodology can mitigate technical barriers while integrating and automating available commercial tools into a workflow from a parametric model to the simulation of building energy. The developed ANN model is evaluated and validated and used to predict the energy consumption with acceptable accuracy. Finally, a user-friendly interface is designed to facilitate energy consumption prediction without any experience in modeling and simulation tools acting as a decision support tool, which is simple, reliable and easy to use.
topic Energy simulation
Parametric analysis
Artificial Neural Network
Residential buildings
Conceptual design phase
url http://www.sciencedirect.com/science/article/pii/S2352484721002705
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AT hossamwefki predictingenergyconsumptionforresidentialbuildingsusingannthroughparametricmodeling
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