Energies (Feb 2023)

Application of Machine Learning to Assist a Moisture Durability Tool

  • Mikael Salonvaara,
  • Andre Desjarlais,
  • Antonio J. Aldykiewicz,
  • Emishaw Iffa,
  • Philip Boudreaux,
  • Jin Dong,
  • Boming Liu,
  • Gina Accawi,
  • Diana Hun,
  • Eric Werling,
  • Sven Mumme

DOI
https://doi.org/10.3390/en16042033
Journal volume & issue
Vol. 16, no. 4
p. 2033

Abstract

Read online

The design of moisture-durable building enclosures is complicated by the number of materials, exposure conditions, and performance requirements. Hygrothermal simulations are used to assess moisture durability, but these require in-depth knowledge to be properly implemented. Machine learning (ML) offers the opportunity to simplify the design process by eliminating the need to carry out hygrothermal simulations. ML was used to assess the moisture durability of a building enclosure design and simplify the design process. This work used ML to predict the mold index and maximum moisture content of layers in typical residential wall constructions. Results show that ML, within the constraints of the construction, including exposure conditions, does an excellent job in predicting performance compared to hygrothermal simulations with a coefficient of determination, R2, over 0.90. Furthermore, the results indicate that the material properties of the vapor barrier and continuous insulation layer are strongly correlated to performance.

Keywords