Author
Listed:
- Walaa S. E. Ismaeel
(Architectural Engineering Department, Faculty of Engineering, The British University in Egypt, El Sherouk City 11837, Egypt
Sustainable Engineering Design and Construction Programme, Faculty of Engineering, The British University in Egypt, El Sherouk City 11837, Egypt)
- Joyce Sherif
(Architectural Engineering Department, Faculty of Engineering, The British University in Egypt, El Sherouk City 11837, Egypt
Sustainable Engineering Design and Construction Programme, Faculty of Engineering, The British University in Egypt, El Sherouk City 11837, Egypt)
- Reem Adel
(Sustainable Engineering Design and Construction Programme, Faculty of Engineering, The British University in Egypt, El Sherouk City 11837, Egypt)
- Aya Said
(Architectural Engineering Department, Faculty of Engineering, The British University in Egypt, El Sherouk City 11837, Egypt
Sustainable Engineering Design and Construction Programme, Faculty of Engineering, The British University in Egypt, El Sherouk City 11837, Egypt)
Abstract
This research has successfully addressed the challenges attributed with SMS, including the fragmented data, heavy reliance on experience, and lack of life cycle integration. This study presents the development and validation of a novel sustainable material selection (SMS) model using Artificial Intelligence (AI). The proposed model structures the process around four core life cycle phases—design, construction, operation and maintenance, and end of life—and incorporates a dual-interface system. This includes a main credits interface for high-level tracking of 100 total credits to trace the dynamics of SMS in relation to energy efficiency, indoor air quality, site selection, and efficient use of water. Further, it includes a detailed credit interface for granular assessment of specific material properties. A key innovation is the formalization of closed-loop feedback mechanisms between phases, ensuring that practical insights from construction and operation inform earlier design choices. The model’s functionality is demonstrated through a proof of concept for SMS considering thermal properties, showcasing its ability to contextualize benchmarks by climate, map properties to building components via a weighted networking system, and rank materials using a comprehensive database sourced from the academic literature. Automated scoring aligns with green building certification tiers, with an integrated alert system flagging suboptimal performance. The proposed model was validated through a structured practitioner survey, and the collected responses were analysed using descriptive and inferential statistical analysis. The result presents a scalable quantitative AI-assisted decision-making support model for optimizing material selection across different project phases. This work paves the way for further research with additional assessment criteria and better integration of AI and Machine Learning for SMS.
Suggested Citation
Walaa S. E. Ismaeel & Joyce Sherif & Reem Adel & Aya Said, 2026.
"A Life Cycle AI-Assisted Model for Optimizing Sustainable Material Selection,"
Sustainability, MDPI, vol. 18(2), pages 1-20, January.
Handle:
RePEc:gam:jsusta:v:18:y:2026:i:2:p:566-:d:1834141
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