Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zones

Abstract Accurate measurement and verification (M&V) of energy efficiency measures (EEM) in commercial buildings is a key requirement to improve energy performance and meet sustainability goals. Research suggests a new method to M&V EEM using generalized additive models (GAM) to provide a wa...

Full description

Saved in:
Bibliographic Details
Main Authors: Jian Yang, Mu He, Xingzhu Zhang, Qimeng Ning, Yu Chen, Maryam Alsadat Ziaei Mazinan
Format: Article
Language:English
Published: Nature Portfolio 2025-06-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-04844-1
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849686156353994752
author Jian Yang
Mu He
Xingzhu Zhang
Qimeng Ning
Yu Chen
Maryam Alsadat Ziaei Mazinan
author_facet Jian Yang
Mu He
Xingzhu Zhang
Qimeng Ning
Yu Chen
Maryam Alsadat Ziaei Mazinan
author_sort Jian Yang
collection DOAJ
description Abstract Accurate measurement and verification (M&V) of energy efficiency measures (EEM) in commercial buildings is a key requirement to improve energy performance and meet sustainability goals. Research suggests a new method to M&V EEM using generalized additive models (GAM) to provide a way to measure how EEMs perform across different commercial buildings (i.e., offices, mixed-use developments, and healthcare). Comparisons suggest GAM is a preferred method of predicting energy savings from previous years and provides good estimates on a new dataset (comparable to previous years). The CV(RMSE) value is acceptably low. Lighting upgrades and HVAC improvements are areas of best practice for energy savings, and all sectors studied achieved significant energy savings with reasonable return times on investment compared to all other studies conducted to date (examples include offices and healthcare). We also focus on and show climate-related factors affecting energy consumption and had some success differentiating results based primarily on temperature/RH relative humidity-triggered variables and indicated the primary “thresholds” that appeared to alter energy demand behavior. Particular high humidity and temperatures carry serious energy penalties, and future climate change calls for climate-responsive energy policies. Furthermore, Monte Carlo simulations were used to measure uncertainty and backlog of data readings, not all prompted by climate factors alone, to confirm our results were sound.
format Article
id doaj-art-09494ff809ea43c59930840d6e8ffd56
institution DOAJ
issn 2045-2322
language English
publishDate 2025-06-01
publisher Nature Portfolio
record_format Article
series Scientific Reports
spelling doaj-art-09494ff809ea43c59930840d6e8ffd562025-08-20T03:22:49ZengNature PortfolioScientific Reports2045-23222025-06-0115111810.1038/s41598-025-04844-1Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zonesJian Yang0Mu He1Xingzhu Zhang2Qimeng Ning3Yu Chen4Maryam Alsadat Ziaei Mazinan5College of Architecture and Urban Planning, Hunan City UniversityCollege of Architecture and Urban Planning, Hunan City UniversityCollege of Architecture and Urban Planning, Hunan City UniversityCollege of Architecture and Urban Planning, Hunan City UniversityCollege of Architecture and Urban Planning, Hunan City UniversityDepartment of Architecture, Hakim Sabzevari UniversityAbstract Accurate measurement and verification (M&V) of energy efficiency measures (EEM) in commercial buildings is a key requirement to improve energy performance and meet sustainability goals. Research suggests a new method to M&V EEM using generalized additive models (GAM) to provide a way to measure how EEMs perform across different commercial buildings (i.e., offices, mixed-use developments, and healthcare). Comparisons suggest GAM is a preferred method of predicting energy savings from previous years and provides good estimates on a new dataset (comparable to previous years). The CV(RMSE) value is acceptably low. Lighting upgrades and HVAC improvements are areas of best practice for energy savings, and all sectors studied achieved significant energy savings with reasonable return times on investment compared to all other studies conducted to date (examples include offices and healthcare). We also focus on and show climate-related factors affecting energy consumption and had some success differentiating results based primarily on temperature/RH relative humidity-triggered variables and indicated the primary “thresholds” that appeared to alter energy demand behavior. Particular high humidity and temperatures carry serious energy penalties, and future climate change calls for climate-responsive energy policies. Furthermore, Monte Carlo simulations were used to measure uncertainty and backlog of data readings, not all prompted by climate factors alone, to confirm our results were sound.https://doi.org/10.1038/s41598-025-04844-1Generalized additive modelsMeasurement and verificationEnergy efficiency measuresBuilding energy performanceMonte Carlo simulation
spellingShingle Jian Yang
Mu He
Xingzhu Zhang
Qimeng Ning
Yu Chen
Maryam Alsadat Ziaei Mazinan
Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zones
Scientific Reports
Generalized additive models
Measurement and verification
Energy efficiency measures
Building energy performance
Monte Carlo simulation
title Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zones
title_full Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zones
title_fullStr Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zones
title_full_unstemmed Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zones
title_short Climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across Chinese climate zones
title_sort climate adaptive energy efficiency modeling using a generalized additive approach to optimize building performance across chinese climate zones
topic Generalized additive models
Measurement and verification
Energy efficiency measures
Building energy performance
Monte Carlo simulation
url https://doi.org/10.1038/s41598-025-04844-1
work_keys_str_mv AT jianyang climateadaptiveenergyefficiencymodelingusingageneralizedadditiveapproachtooptimizebuildingperformanceacrosschineseclimatezones
AT muhe climateadaptiveenergyefficiencymodelingusingageneralizedadditiveapproachtooptimizebuildingperformanceacrosschineseclimatezones
AT xingzhuzhang climateadaptiveenergyefficiencymodelingusingageneralizedadditiveapproachtooptimizebuildingperformanceacrosschineseclimatezones
AT qimengning climateadaptiveenergyefficiencymodelingusingageneralizedadditiveapproachtooptimizebuildingperformanceacrosschineseclimatezones
AT yuchen climateadaptiveenergyefficiencymodelingusingageneralizedadditiveapproachtooptimizebuildingperformanceacrosschineseclimatezones
AT maryamalsadatziaeimazinan climateadaptiveenergyefficiencymodelingusingageneralizedadditiveapproachtooptimizebuildingperformanceacrosschineseclimatezones