Indoor Air Quality in Cob Buildings: In Situ Studies and Artificial Neural Network Modeling

Author:

Touati Karim12ORCID,Benzaama Mohammed-Hichem23,El Mendili Yassine23ORCID,Le Guern Malo2ORCID,Streiff François4,Goodhew Steve5

Affiliation:

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

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

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

Knowledge of indoor air quality (IAQ) in cob buildings during the first few months following their delivery is of vital importance in preventing occupants’ health problems. The present research focuses on evaluating IAQ in cob buildings through a prototype built in Normandy, France. To achieve this, the prototype was equipped with a set of sensors to monitor various parameters that determine indoor and outdoor air quality. These parameters include relative humidity (RH), carbon dioxide (CO2), nitrogen dioxide (NO2), ozone (O3), particulate matter (PM1 and PM10), and volatile organic compounds (VOCs). The obtained experimental results indicate that, overall, there is good indoor air quality in the prototype building. However, there are some noteworthy findings, including high indoor RH and occasional spikes in CO2, PM1, PM10, and VOCs concentrations. The high RH is believed to be a result of the ongoing drying process of the cob walls, while the peaks in pollutants are likely to be attributed to human presence and the earthen floor deterioration. To ensure consistent good air quality, this study recommends the use of a properly sized Controlled Mechanical Ventilation system. Additionally, this study explored IAQ in the cob building from a numerical perspective. A Long Short-Term Memory (LSTM) model was developed and trained to predict pollutant concentrations inside the building. A validation test was conducted on the CO2 concentration data collected on-site, and the results indicated that the LSTM model has accurately predicted the evolution of CO2 concentration within the prototype building over an extended period.

Funder

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

Publisher

MDPI AG

Subject

Building and Construction,Civil and Structural Engineering,Architecture

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