Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/33547
Title: Cross-dwelling validation of indoor environmental monitoring for operational risk screening in social housing portfolios
Authors: Thi Nguyen, T-H
Jin, R
Chen, W
Gan, L
Keywords: indoor environmental quality (IEQ);social housing;asset management;internet of things (IOT);housing risk classification;portfolio management
Issue Date: 25-May-2026
Publisher: Hanoi University of Civil Engineering (HUCE)
Citation: Thi Nguyen, T.-H., Jin, R., Chen, W. and Gan, L. (2026). “Cross-dwelling validation of indoor environmental monitoring for operational risk screening in social housing portfolios”, Journal of Science and Technology in Civil Engineering (JSTCE). Vol. 20(2S), pp. 44-54. doi: 10.31814/stce.huce2026-20(2S)-04.
Abstract: Social housing providers use indoor environmental monitoring within asset management systems. The extent to which these data can differentiate operational risk domains across independent dwellings has not been fully evaluated in operational deployment. Current predictive modelling frequently relies on random data parti tioning, failing to reflect situations in which models are applied to previously unseen properties. This study examines the cross-dwelling explanatory capacity of environmental exposure indicators within a London-based housing portfolio. Five years of monitoring data from 93 UK social housing dwellings were linked with oper ational risk records, yielding 5,748 monthly dwelling-level observations. Indicators derived from temperature, relative humidity, and carbon dioxide were analysed using Ridge regression and Random Forest models under five-fold property-grouped cross-validation. Under grouped validation, indoor air quality and excess heat do mains show positive explanatory power across dwellings. In contrast, envelope-related domains, including heat loss, draught, and cold home risks, produce near-zero or negative R2 values, indicating limited cross-dwelling information in bulk indoor environmental measurements. Random Forest models do not consistently improve over regularised linear models. These findings identify the risk domains that can be informed by environ mental screening at portfolio level and those which require further or direct structural assessment within asset management practice.
URI: http://bura.brunel.ac.uk/handle/2438/33547
DOI: https://doi.org/10.31814/stce.huce2026-20(2S)-04
ISSN: 1859-2996
Appears in Collections:Department of Civil and Environmental Engineering Research Papers

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