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Regression models for predicting the global warming potential of thermal insulation materials

Regression models for predicting the global warming potential of thermal insulation materials
Regression models for predicting the global warming potential of thermal insulation materials
The impacts and benefits of thermal insulations on saving operational energy have been widely investigated and well-documented. Recently, many studies have shifted their focus to comparing the environmental impacts and CO2 emission-related policies of these materials, which are mostly the Embodied Energy (EE) and Global Warming Potential (GWP). In this paper, machine learning techniques were used to analyse the untapped aspect of these environmental impacts. A collection of over 120 datasets from reliable open-source databases including Okobaudat and Ecoinvent, as well as from the scientific literature containing data from the Environmental Product Declarations (EPD), was compiled and analysed. Comparisons of Multiple Linear Regression (MLR), Support Vector Regression (SVR), Least Absolute Shrinkage and Selection Operator (LASSO) regression, and Extreme Gradient Boosting (XGBoost) regression methods were completed for the prediction task. The experimental results revealed that MLR, SVR, and LASSO methods outperformed the XGBoost method according to both the K-Fold and Monte-Carlo cross-validation techniques. MLR, SVR, and LASSO achieved 0.85/0.73, 0.82/0.72, and 0.85/0.71 scores according to the R2 measure for the Monte-Carlo/K-Fold cross-validations, respectively, and the XGBoost overfitted the training set, showing it to be less reliable for this task. Overall, the results of this task will contribute to the selection of effective yet low-energy-intensive thermal insulation, thus mitigating environmental impacts.
2075-5309
Tajuddeen, Ibrahim
f2b426f1-371b-45e2-8d77-c1ab86b4bb3f
Sajjadian, Seyed Masoud
f08f9a9d-5aee-4844-b4f9-b8f8fb454b5d
Jafari, Mina
e7463570-31ac-4bee-b30e-5831783298aa
Tajuddeen, Ibrahim
f2b426f1-371b-45e2-8d77-c1ab86b4bb3f
Sajjadian, Seyed Masoud
f08f9a9d-5aee-4844-b4f9-b8f8fb454b5d
Jafari, Mina
e7463570-31ac-4bee-b30e-5831783298aa

Tajuddeen, Ibrahim, Sajjadian, Seyed Masoud and Jafari, Mina (2023) Regression models for predicting the global warming potential of thermal insulation materials. Buildings, 13 (1), [171]. (doi:10.3390/buildings13010171).

Record type: Article

Abstract

The impacts and benefits of thermal insulations on saving operational energy have been widely investigated and well-documented. Recently, many studies have shifted their focus to comparing the environmental impacts and CO2 emission-related policies of these materials, which are mostly the Embodied Energy (EE) and Global Warming Potential (GWP). In this paper, machine learning techniques were used to analyse the untapped aspect of these environmental impacts. A collection of over 120 datasets from reliable open-source databases including Okobaudat and Ecoinvent, as well as from the scientific literature containing data from the Environmental Product Declarations (EPD), was compiled and analysed. Comparisons of Multiple Linear Regression (MLR), Support Vector Regression (SVR), Least Absolute Shrinkage and Selection Operator (LASSO) regression, and Extreme Gradient Boosting (XGBoost) regression methods were completed for the prediction task. The experimental results revealed that MLR, SVR, and LASSO methods outperformed the XGBoost method according to both the K-Fold and Monte-Carlo cross-validation techniques. MLR, SVR, and LASSO achieved 0.85/0.73, 0.82/0.72, and 0.85/0.71 scores according to the R2 measure for the Monte-Carlo/K-Fold cross-validations, respectively, and the XGBoost overfitted the training set, showing it to be less reliable for this task. Overall, the results of this task will contribute to the selection of effective yet low-energy-intensive thermal insulation, thus mitigating environmental impacts.

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Published date: 8 January 2023

Identifiers

Local EPrints ID: 511032
URI: http://eprints.soton.ac.uk/id/eprint/511032
ISSN: 2075-5309
PURE UUID: 36dc9e52-b7a5-4531-aba0-9507c3f208b6
ORCID for Seyed Masoud Sajjadian: ORCID iD orcid.org/0000-0001-5610-0498

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Date deposited: 28 Apr 2026 17:07
Last modified: 29 Apr 2026 02:18

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Contributors

Author: Ibrahim Tajuddeen
Author: Seyed Masoud Sajjadian ORCID iD
Author: Mina Jafari

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