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Artificial Intelligence and Digital Tools for Assisting Low-Carbon Architectural Design: Merging the Use of Machine Learning, Large Language Models, and Building Information Modeling for Life Cycle Assessment Tool Development

Author

Listed:
  • Mateusz Płoszaj-Mazurek

    (Faculty of Architecture, Warsaw University of Technology, 00-659 Warszawa, Poland)

  • Elżbieta Ryńska

    (Faculty of Architecture, Warsaw University of Technology, 00-659 Warszawa, Poland)

Abstract

The construction sector is a significant contributor to global carbon emissions and a major consumer of non-renewable resources. Architectural design decisions play a critical role in a building’s carbon footprint, making it essential to incorporate environmental analyses at various design stages. Integrating artificial intelligence (AI) and building information modeling (BIM) can support designers in achieving low-carbon architectural design. The proposed solution involves the development of a Life Cycle Assessment (LCA) tool. This study presents a novel approach to optimizing the environmental impact of architectural projects. It combines machine learning (ML), large language models (LLMs), and building information modeling (BIM) technologies. The first case studies present specific examples of tools developed for this purpose. The first case study details a machine learning-assisted tool used for estimating carbon footprints during the design phase and shows numerical carbon footprint optimization results. The second case study explores the use of LLMs, specifically ChatGPT, as virtual assistants to suggest optimizations in architectural design and shows tests on the suggestions made by the LLM. The third case study discusses integrating BIM in the form of an IFC file, carbon footprint analysis, and AI into a comprehensive 3D application, emphasizing the importance of AI in enhancing decision-making processes in architectural design.

Suggested Citation

  • Mateusz Płoszaj-Mazurek & Elżbieta Ryńska, 2024. "Artificial Intelligence and Digital Tools for Assisting Low-Carbon Architectural Design: Merging the Use of Machine Learning, Large Language Models, and Building Information Modeling for Life Cycle As," Energies, MDPI, vol. 17(12), pages 1-21, June.
  • Handle: RePEc:gam:jeners:v:17:y:2024:i:12:p:2997-:d:1417108
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    References listed on IDEAS

    as
    1. Daniil A. Boiko & Robert MacKnight & Ben Kline & Gabe Gomes, 2023. "Autonomous chemical research with large language models," Nature, Nature, vol. 624(7992), pages 570-578, December.
    2. Ruizhe Zhang & Hong Zhang & Shangang Hei & Hongyu Ye, 2023. "Research on Database Construction and Calculation of Building Carbon Emissions Based on BIM General Data Framework," Sustainability, MDPI, vol. 15(13), pages 1-27, June.
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