Artificial Intelligence Approach for Bio-Based Materials’ Characterization and Explanation

Author:

Alami Ahmed1ORCID,Rajaoarisoa Lala2ORCID,Dujardin Nicolas3ORCID,Benouar Ali4,Kaddouri Khacem5,Benouis Khedidja1ORCID,Benzaama Mohammed-Hichem6

Affiliation:

1. Laboratory of Process Engineering, Materials and Environment, Faculty of Technology, University of Djillali Liabes, P.O. Box 89, Sidi Bel Abbes 22000, Algeria

2. CERI Systèmes Numériques, IMT Nord Europe, Université de Lille, F-59500 Douai, France

3. Univ Paris Est Creteil, CERTES, F-94010 Créteil, France

4. Laboratory of Complex Systems (LCS), Higher School of Electrical and Energy Engineering (ESGEE), Oran 31000, Algeria

5. Laboratory of Mechanics Physics of Materials (LMPM Laboratory), University of Djillali Liabes, Sidi Bel Abbes 22000, Algeria

6. Institut de Recherche, ESTP, 28 Avenue du Président Wilson, F-94230 Cachan, France

Abstract

This paper introduces a numerical methodology for classifying and identifying types of bio-based materials through experimental thermal characterization. In contrast to prevailing approaches that primarily focus on thermal conductivity, our characterization methodology encompasses several thermal parameters. In this paper, the physical characteristics of seven types of bio-based concrete were analyzed, focusing on the thermal properties of palm- and esparto-fiber-reinforced concrete. The proposed method uses artificial intelligence techniques, specifically the k-means clustering approach, to segregate data into homogeneous groups with shared thermal characteristics. This enables the elucidation of insights and recommendations regarding the utilization of bio-based insulation in building applications. The results show that the k-means algorithm is able to efficiently classify the reference concrete (RC) with a performance of up to 71%. Additionally, the technique is more accurate when retaining only six centroids, which, among other things, allows all the characteristics associated with each type of concrete to be grouped and identified. Indeed, whether for k clusters k = 7 or k = 5, the technique was not able to predict the typical characteristics of 2% or 3% esparto concrete (EC).

Publisher

MDPI AG

Reference29 articles.

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3. Investigation on the Energy Efficiency of a Geo-sol Adsorption Heat Transformer in the Algerian Context;Alami;Int. J. Heat Technol.,2019

4. Impact of rural housing energy performance improvement on the energy balance in the North-West of Algeria;Missoum;Energy Build.,2014

5. Environmental impacts of adobe as a building material: The north Cyprus traditional building case;Kurt;Constr. Mater.,2016

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