Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method
Building energy consumption and GHG emission have significant influence on urban sustainable development. However, research works that investigate the temporal information in energy prediction are limited. This study bridged these gaps and assessed the energy use intensity (EUI) and GHG intensity (G...
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sg-ntu-dr.10356-1724962023-12-12T01:47:07Z Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method Zhang, Yan Teoh, Bak Koon Zhang, Limao School of Civil and Environmental Engineering Engineering::Civil engineering Building Energy Spatio-Temporal Dynamics Building energy consumption and GHG emission have significant influence on urban sustainable development. However, research works that investigate the temporal information in energy prediction are limited. This study bridged these gaps and assessed the energy use intensity (EUI) and GHG intensity (GHGI) based on three aspects by considering spatio-temporal dimensions. A GTWR model capturing both spatial and temporal information was employed to assess ten driving forces towards buildings EUI and GHGI. A case study in Seattle was used to demonstrate the effectiveness and validate the proposed approach. Results indicate that (1) The temporal heterogeneity has significant influence on EUI and GHGI, where the value of R2 in EUI experienced a remarkable improvement of 21.82% in the GTWR model compared to the GWR model, and that of for GHGI has been increased 13.92% from GWR model to GTWR model; (2) Buildings with large GFA was found to positively impact the EUI and GHGI, while the population under poverty and the number of floors have a negative impact. The novelty of this study lies in establishing a comprehensive framework for predicting energy usage with spatio-temporal information and quantifying the impacts of the ten driving forces at a regional level. Nanyang Technological University This work is supported in part by the National Natural Science Foundation of China (No. 72271101), the Outstanding Youth Fund of Hubei Province (No. 2022CFA062), and the Start-Up Grant at Huazhong University of Science and Technology (No. 3004242122). The 1st author is grateful to Nanyang Technological University, Singapore for his Ph.D. research scholarship. 2023-12-12T01:47:07Z 2023-12-12T01:47:07Z 2023 Journal Article Zhang, Y., Teoh, B. K. & Zhang, L. (2023). Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method. Energy, 269, 126747-. https://dx.doi.org/10.1016/j.energy.2023.126747 0360-5442 https://hdl.handle.net/10356/172496 10.1016/j.energy.2023.126747 2-s2.0-85147263485 269 126747 en Energy © 2023 Elsevier Ltd. All rights reserved. |
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Engineering::Civil engineering Building Energy Spatio-Temporal Dynamics Zhang, Yan Teoh, Bak Koon Zhang, Limao Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method |
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Building energy consumption and GHG emission have significant influence on urban sustainable development. However, research works that investigate the temporal information in energy prediction are limited. This study bridged these gaps and assessed the energy use intensity (EUI) and GHG intensity (GHGI) based on three aspects by considering spatio-temporal dimensions. A GTWR model capturing both spatial and temporal information was employed to assess ten driving forces towards buildings EUI and GHGI. A case study in Seattle was used to demonstrate the effectiveness and validate the proposed approach. Results indicate that (1) The temporal heterogeneity has significant influence on EUI and GHGI, where the value of R2 in EUI experienced a remarkable improvement of 21.82% in the GTWR model compared to the GWR model, and that of for GHGI has been increased 13.92% from GWR model to GTWR model; (2) Buildings with large GFA was found to positively impact the EUI and GHGI, while the population under poverty and the number of floors have a negative impact. The novelty of this study lies in establishing a comprehensive framework for predicting energy usage with spatio-temporal information and quantifying the impacts of the ten driving forces at a regional level. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Zhang, Yan Teoh, Bak Koon Zhang, Limao |
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Article |
author |
Zhang, Yan Teoh, Bak Koon Zhang, Limao |
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Zhang, Yan |
title |
Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method |
title_short |
Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method |
title_full |
Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method |
title_fullStr |
Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method |
title_full_unstemmed |
Exploring driving force factors of building energy use and GHG emission using a spatio-temporal regression method |
title_sort |
exploring driving force factors of building energy use and ghg emission using a spatio-temporal regression method |
publishDate |
2023 |
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https://hdl.handle.net/10356/172496 |
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1787136485736054784 |