Early-stage design support combining machine learning and building information modelling

Research output: Contribution to journalArticleResearchpeer review

Authors

  • Manav Mahan Singh
  • Chirag Deb
  • Philipp Geyer

External Research Organisations

  • KU Leuven
  • Indian Institute of Technology Bombay (IITB)
  • ETH Zurich
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Details

Original languageEnglish
Article number104147
JournalAutomation in construction
Volume136
Early online date1 Feb 2022
Publication statusPublished - Apr 2022

Abstract

Global energy concerns necessitate designing energy-efficient buildings. Many important decisions affecting energy performance are made at early stages with little information. Dynamic simulations support informed decision-making; however, uncertainty, high computational time, and expensive modelling efforts impair their use at early stages. This article develops an approach using building information modelling and machine learning that provides quick energy performance information. This approach has been implemented into a web tool, p-energyanalysis.de. It allows design space exploration, assesses the energy performance of design options, compares multiple options, performs sensitivity analysis, and tracks changes. Twenty-one participants (researchers and architects) used it as a support tool for designing an energy-efficient building. Their feedbacks are discussed as part of the tool development. The study found that the tool supports early-stage design decisions by quickly providing relevant information. The limitations, such as the bias in the results towards training data population and implementation issues, are also discussed.

Keywords

    BIM, Building performance simulation, Design space exploration, Early design stage, Energy efficiency, ML energy predictions, Sensitivity analysis

ASJC Scopus subject areas

Sustainable Development Goals

Cite this

Early-stage design support combining machine learning and building information modelling. / Singh, Manav Mahan; Deb, Chirag; Geyer, Philipp.
In: Automation in construction, Vol. 136, 104147, 04.2022.

Research output: Contribution to journalArticleResearchpeer review

Singh MM, Deb C, Geyer P. Early-stage design support combining machine learning and building information modelling. Automation in construction. 2022 Apr;136:104147. Epub 2022 Feb 1. doi: 10.1016/j.autcon.2022.104147
Singh, Manav Mahan ; Deb, Chirag ; Geyer, Philipp. / Early-stage design support combining machine learning and building information modelling. In: Automation in construction. 2022 ; Vol. 136.
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abstract = "Global energy concerns necessitate designing energy-efficient buildings. Many important decisions affecting energy performance are made at early stages with little information. Dynamic simulations support informed decision-making; however, uncertainty, high computational time, and expensive modelling efforts impair their use at early stages. This article develops an approach using building information modelling and machine learning that provides quick energy performance information. This approach has been implemented into a web tool, p-energyanalysis.de. It allows design space exploration, assesses the energy performance of design options, compares multiple options, performs sensitivity analysis, and tracks changes. Twenty-one participants (researchers and architects) used it as a support tool for designing an energy-efficient building. Their feedbacks are discussed as part of the tool development. The study found that the tool supports early-stage design decisions by quickly providing relevant information. The limitations, such as the bias in the results towards training data population and implementation issues, are also discussed.",
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