Machine Learning-Based Indoor Relative Humidity and CO2 Identification Using a Piecewise Autoregressive Exogenous Model: A Cob Prototype Study

Author:

Benzaama Mohammed-Hichem12,Touati Karim13ORCID,El Mendili Yassine12ORCID,Le Guern Malo1ORCID,Streiff François4,Goodhew Steve5

Affiliation:

1. Builders Ecole d’Ingénieurs, ComUE Normandie Université, 1 Rue Pierre et Marie Curie, 14610 Epron, France

2. Institut de Recherche de l’ESTP, Ecole Spéciale des Travaux Publics, 28 Avenue du Président Wilson, 94234 Cachan, France

3. EPF Ecole d’Ingénieurs, 21 Boulevard Berthelot, 34000 Montpellier, France

4. Parc Naturel Régional des Marais du Cotentin et du Bessin, 50500 Carentan-les-Marais, France

5. School of Art, Design and Architecture, University of Plymouth, Plymouth PL4 8AA, UK

Abstract

The population of developed nations spends a significant amount of time indoors, and the implications of poor indoor air quality (IAQ) on human health are substantial. Many premature deaths attributed to exposure to indoor air pollutants result from diseases exacerbated by poor indoor air. CO2, one of these pollutants, is the most prevalent and often serves as an indicator of IAQ. Indoor CO2 concentrations can be significantly higher than outdoor levels due to human respiration and activity. The primary objective of this research was to numerically investigate the indoor relative humidity and CO2 in cob buildings through the CobBauge prototype, particularly during the first months following the building delivery. Both in situ experimental studies and numerical predictions using an artificial neural network were conducted for this purpose. The study presented the use of a piecewise autoregressive exogenous model (PWARX) for indoor relative humidity (RH) and CO2 content in a building constructed with a double walling system consisting of cob and light earth. The model was validated using experimental data collected over a 27-day period, during which indoor RH and CO2 levels were measured alongside external conditions. The results indicate that the PWARX model accurately predicted RH levels and categorized them into distinct states based on moisture content within materials and external conditions. However, while the model accurately predicted indoor CO2 levels, it faced challenges in finely classifying them due to the complex interplay of factors influencing CO2 levels in indoor environments.

Funder

European cross-border cooperation program INTERREG V France (Manche/Channel) England

Publisher

MDPI AG

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