Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach

For better energy assessment and management in the buildings industry, a spatial regression method is presented to quantitively measure the impacts of green certification programs on energy consumption and Greenhouse Gas (GHG) emissions in buildings. Spatial autocorrelation analysis is developed to...

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Main Authors: Zhang, Limao, Li, Rongyao
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/161973
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1619732022-09-28T01:07:13Z Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach Zhang, Limao Li, Rongyao School of Civil and Environmental Engineering Engineering::Civil engineering Green Certification Programs Energy Star Labels For better energy assessment and management in the buildings industry, a spatial regression method is presented to quantitively measure the impacts of green certification programs on energy consumption and Greenhouse Gas (GHG) emissions in buildings. Spatial autocorrelation analysis is developed to determine the spatial pattern of energy consumption and GHG emissions. A Gaussian kernel function method is employed to calculate the spatial weighting matrix, and an Akaike Information Criterion method is implemented to choose the function bandwidth in the spatial weighting matrix. Subsequently, a geographically weighted regression (GWR) model based on the spatial weighting matrix is constructed to estimate energy consumption and GHG emissions in buildings. Several error criteria are employed to verify the development of the GWR model compared with the ordinary least square (OLS) model. Regression coefficient, Pearson correlation coefficient, and Spearman correlation coefficient analyses are implemented to investigate the effects of green certification programs on building energy consumption and GHG emissions. A case study in Seattle city in 2015 is used to implement the GWR model and validate the improved goodness-of-fit of this regression model. The results imply that: (1) Energy stars programs as the driving force would save energy consumption by 13.2% on average and reduce GHG emissions by 3.24% on average; (2) The fitted GWR models can significantly improve the model's goodness-of-fit and accuracy with an adjusted R2 value of 0.572 in modeling energy consumption and that of 0.626 in modeling GHG emissions compared with the OLS models (with an R2 of 0.538 and 0.594, respectively); (3) Older buildings, taller buildings, and larger buildings with energy star labels have been demonstrated to have a big potential to significantly save more energy and reduce more GHG emissions. This spatial regression approach can be used as an assessment tool for professionals and authorities to detect the influence factors on energy consumption and GHG emissions in buildings and make environmentally sustainable plans for buildings in cities. Ministry of Education (MOE) National Research Foundation (NRF) The Ministry of Education Tier 1 Grants, Singapore (No. 04MNP000279C120, No. 04MNP002126C120) and the Start-Up Grant at Nanyang Technological University, Singapore (No. 04INS000423C120) are acknowledged for their financial support of this research. 2022-09-28T01:07:13Z 2022-09-28T01:07:13Z 2022 Journal Article Zhang, L. & Li, R. (2022). Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach. Energy and Buildings, 256, 111677-. https://dx.doi.org/10.1016/j.enbuild.2021.111677 0378-7788 https://hdl.handle.net/10356/161973 10.1016/j.enbuild.2021.111677 2-s2.0-85120442829 256 111677 en 04MNP000279C120 04MNP002126C120 04INS000423C120 Energy and Buildings © 2021 Elsevier B.V. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Civil engineering
Green Certification Programs
Energy Star Labels
spellingShingle Engineering::Civil engineering
Green Certification Programs
Energy Star Labels
Zhang, Limao
Li, Rongyao
Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach
description For better energy assessment and management in the buildings industry, a spatial regression method is presented to quantitively measure the impacts of green certification programs on energy consumption and Greenhouse Gas (GHG) emissions in buildings. Spatial autocorrelation analysis is developed to determine the spatial pattern of energy consumption and GHG emissions. A Gaussian kernel function method is employed to calculate the spatial weighting matrix, and an Akaike Information Criterion method is implemented to choose the function bandwidth in the spatial weighting matrix. Subsequently, a geographically weighted regression (GWR) model based on the spatial weighting matrix is constructed to estimate energy consumption and GHG emissions in buildings. Several error criteria are employed to verify the development of the GWR model compared with the ordinary least square (OLS) model. Regression coefficient, Pearson correlation coefficient, and Spearman correlation coefficient analyses are implemented to investigate the effects of green certification programs on building energy consumption and GHG emissions. A case study in Seattle city in 2015 is used to implement the GWR model and validate the improved goodness-of-fit of this regression model. The results imply that: (1) Energy stars programs as the driving force would save energy consumption by 13.2% on average and reduce GHG emissions by 3.24% on average; (2) The fitted GWR models can significantly improve the model's goodness-of-fit and accuracy with an adjusted R2 value of 0.572 in modeling energy consumption and that of 0.626 in modeling GHG emissions compared with the OLS models (with an R2 of 0.538 and 0.594, respectively); (3) Older buildings, taller buildings, and larger buildings with energy star labels have been demonstrated to have a big potential to significantly save more energy and reduce more GHG emissions. This spatial regression approach can be used as an assessment tool for professionals and authorities to detect the influence factors on energy consumption and GHG emissions in buildings and make environmentally sustainable plans for buildings in cities.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Zhang, Limao
Li, Rongyao
format Article
author Zhang, Limao
Li, Rongyao
author_sort Zhang, Limao
title Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach
title_short Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach
title_full Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach
title_fullStr Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach
title_full_unstemmed Impacts of green certification programs on energy consumption and GHG emissions in buildings: a spatial regression approach
title_sort impacts of green certification programs on energy consumption and ghg emissions in buildings: a spatial regression approach
publishDate 2022
url https://hdl.handle.net/10356/161973
_version_ 1745574640702455808