Predicting energy performances of buildings' envelope wall materials via the random forest algorithm

Aseel Hussien, Wasiq Khan, Abir Hussain, Panos Liatsis, Ahmed Al-Shamma'a, Dhiya Al-Jumeily

Research output: Contribution to journalArticlepeer-review

17 Scopus citations

Abstract

Purpose: Numerous simulation software has been used to evaluate energy performance with 12% of the research focusing on long-term energy consumption prediction. This paper aims to utilize machine learning to predict the energy performance of building envelope wall materials over extended periods. Methodology: In our work, machine learning model learns from a large set of building envelopes simulated using the Integrated Environmental Solutions Virtual Environment as follows: Findings: Machine Learning models can also be used to predict the impact of building design and construction characteristics on energy consumption, showing that factors such as wall thickness, orientation, and thermal mass indicated lower relative standard error (<0.001); however, not all of them were statistically significant (p > 0.05). While the overall model indicates statistical significance (p = 2e-16), the multivariate linear regression model produces R2 value of 0.42, indicating a weak relationship between predictor variables and target attributes. Originality: The utilisation of Random forest algorithm for the wall envelop energy consumption Research implecation: different to other techniques, our proposed approach addressed the issue related to building envelop for new constructions to assist professional from construction industry.

Original languageBritish English
Article number106263
JournalJournal of Building Engineering
Volume69
DOIs
StatePublished - 15 Jun 2023

Keywords

  • Building envelop
  • Energy
  • Indoor environment quality
  • Machine learning
  • Multivariate linear regression
  • Random forest

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