Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters

In recent years, increasing climate change has triggered the development of various techniques and strategies for predicting building energy consumption and thermal comfort. However, many features could affect prediction efficiency, and the coupling of appropriate learning algorithms with different...

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Main Authors: Ruijun Chen, Yaw-Shyan Tsay
Format: Article
Language:English
Published: Elsevier 2022-11-01
Series:Energy Reports
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352484722011520
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author Ruijun Chen
Yaw-Shyan Tsay
author_facet Ruijun Chen
Yaw-Shyan Tsay
author_sort Ruijun Chen
collection DOAJ
description In recent years, increasing climate change has triggered the development of various techniques and strategies for predicting building energy consumption and thermal comfort. However, many features could affect prediction efficiency, and the coupling of appropriate learning algorithms with different sampling methods and input parameters requires further research. In this study, we evaluated 25 features of an office building model. Then, the comprehensive effects of five different sampling methods and cumulative contribution rates (CCR) of input parameters on the prediction performance of building carbon emission (BCE) and indoor discomfort hour (IDH) were explored in 10 machine learning algorithms. The results indicated that the Sobol sampling method could achieve the best prediction effect in the combinations of different contribution rates of features and machine learning algorithms. Meanwhile, an artificial neural network (ANN) was the best learning algorithm when the CCR was 100%. However, the optimal machine learning method corresponding to each CCR stage differed. When the CCR was reduced to 50%, only three influence factors were considered most important, and K-nearest neighbors (KNN) was the best prediction algorithm in this scenario, indicating that the input parameters were reduced by 88%, and the R2 value was only reduced by 6.1%. Therefore, we proposed a new strategy idea for the research of building performance prediction by determining the most important building impact factors and suitable machine learning algorithms, which could simplify the prediction process and improve prediction efficiency while reducing building parameters.
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spelling doaj.art-f11a1541cfd24ad097b102ab7b5de0a62023-02-21T05:11:57ZengElsevierEnergy Reports2352-48472022-11-01880938107Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parametersRuijun Chen0Yaw-Shyan Tsay1Department of Architecture, National Cheng Kung University, Tainan, TaiwanCorresponding author.; Department of Architecture, National Cheng Kung University, Tainan, TaiwanIn recent years, increasing climate change has triggered the development of various techniques and strategies for predicting building energy consumption and thermal comfort. However, many features could affect prediction efficiency, and the coupling of appropriate learning algorithms with different sampling methods and input parameters requires further research. In this study, we evaluated 25 features of an office building model. Then, the comprehensive effects of five different sampling methods and cumulative contribution rates (CCR) of input parameters on the prediction performance of building carbon emission (BCE) and indoor discomfort hour (IDH) were explored in 10 machine learning algorithms. The results indicated that the Sobol sampling method could achieve the best prediction effect in the combinations of different contribution rates of features and machine learning algorithms. Meanwhile, an artificial neural network (ANN) was the best learning algorithm when the CCR was 100%. However, the optimal machine learning method corresponding to each CCR stage differed. When the CCR was reduced to 50%, only three influence factors were considered most important, and K-nearest neighbors (KNN) was the best prediction algorithm in this scenario, indicating that the input parameters were reduced by 88%, and the R2 value was only reduced by 6.1%. Therefore, we proposed a new strategy idea for the research of building performance prediction by determining the most important building impact factors and suitable machine learning algorithms, which could simplify the prediction process and improve prediction efficiency while reducing building parameters.http://www.sciencedirect.com/science/article/pii/S2352484722011520Carbon emissionThermal comfortPredictionMachine learningSensitivity analysis
spellingShingle Ruijun Chen
Yaw-Shyan Tsay
Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters
Energy Reports
Carbon emission
Thermal comfort
Prediction
Machine learning
Sensitivity analysis
title Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters
title_full Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters
title_fullStr Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters
title_full_unstemmed Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters
title_short Carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters
title_sort carbon emission and thermal comfort prediction model for an office building considering the contribution rate of design parameters
topic Carbon emission
Thermal comfort
Prediction
Machine learning
Sensitivity analysis
url http://www.sciencedirect.com/science/article/pii/S2352484722011520
work_keys_str_mv AT ruijunchen carbonemissionandthermalcomfortpredictionmodelforanofficebuildingconsideringthecontributionrateofdesignparameters
AT yawshyantsay carbonemissionandthermalcomfortpredictionmodelforanofficebuildingconsideringthecontributionrateofdesignparameters