Artificial Intelligence Approach for Bio-Based Materials’ Characterization and Explanation
Abstract
:1. Introduction
2. Experimental and Numerical Methodology
- Benchmark design: We developed an experimental test bench that includes multiple measurements such as thermal diffusivity, thermal conductivity, and heat capacity. We test in this step two types of bio-sourced materials: concretes based on esparto and palm tree fibers.
- Data collection: experimental setting and test for data gathering.
- Data analysis and classification: this step consists of applying a clustering approach on data to separate it into homogeneous groups with common characteristics.
- Bio-materials’ characterization: during this stage, we compare the observed characteristics of different concrete types with a reference concrete to analyze their physical properties’ evolution.
2.1. Benchmark Design
2.1.1. Fibers
2.1.2. Fibers
2.2. Production of Test Samples
- Introduce the equivalent binder (cement + plant fibers) and mix with the aggregate for 6 min;
- Introduce the rest of the mixing water and some of the additives; then, mix for 90 s;
- Introduce the rest of the additive and mix for 2 min;
- Form a cube;
- Weigh the sample after demolding and after storage in a constant temperature bath for a few days;
- Grind the sample with a vertical press.
2.2.1. Thermal Characterization Devices
2.2.2. Influence Parameters
2.3. Data Analysis and Classification
2.3.1. The k-Means Approach
2.3.2. The k-Means Algorithm
- Step 1: Choose k initial cluster centers (centroid) C = {c1, …, ck};
- Step 2: For each i ∈ {1, …, k}, compute point to cluster centroid distances of all observations to each centroid ci;
- Step 3: Assign each observation to the cluster with the closest centroid;
- Step 4: Compute the average of the observations in each cluster to obtain k new centroid locations;
- Step 5: Repeat steps 2 through 4 until cluster C assignments do not change, or the maximum number m of iterations is reached.
2.4. Bio-Materials’ Characterization
3. Results and Discussion
4. Conclusions
- Thermal conductivity: the addition of palm fibers to concrete exhibits a decrease in thermal conductivity, indicating enhanced insulation capabilities.
- Fiber selection: it is recommended to prioritize the use of palm fibers over esparto fibers for improved material performance, balancing efficiency and sustainability objectives.
- Clustering analysis: the application of k-means clustering proves effective in categorizing concrete types based on their thermal characteristics, though challenges are noted with predicting certain compositions.
- Research novelty: this study sheds light on the thermal behavior of bio-based concrete, offering valuable insights for the development of sustainable building materials.
- Methodological innovation: the utilization of k-means clustering as a classification tool provides a novel approach to categorizing concrete compositions based on thermal properties.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Actual Final Composition (According to Absorption and Water Content) | % | Origin | Laboratory Weight (Kg) (15 × 15 × 15) cm3 |
---|---|---|---|
Sand MIX (S0/3rafi + S0/1mechria) | 43.0 | SECH | 9.64 |
Sand 0/1 | 0.0 | 0 | 0.00 |
Gravel 3/8 | 12.0 | SECH | 2.69 |
Gravel 8/15 | 35.0 | SECH | 7.86 |
Gravel 15/25 | 10.0 | SECH | 2.24 |
Cement | ZAHANA | 4.20 | |
Real Water | AEP | 2.07 | |
Adj 2 ”S,plasticizer” 9WG | Teknachem | 0.05 |
Concrete Type | k = 7 | k = 6 | k = 5 |
---|---|---|---|
2% esparto concrete (EC) | 0 | 50 | 0 |
2% palm concrete (PC) | 57.14 | 71.43 | 71.43 |
3% esparto concrete (EC) | 42.86 | 0.3571 | 0 |
3% palm concrete (PC) | 57.14 | 64.29 | 64.29 |
5% esparto concrete (EC) | 42.86 | 42.86 | 42.86 |
5% palm concrete (PC) | 42.86 | 42.86 | 42.86 |
Reference concrete (RC) | 71.43 | 71.43 | 71.43 |
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Alami, A.; Rajaoarisoa, L.; Dujardin, N.; Benouar, A.; Kaddouri, K.; Benouis, K.; Benzaama, M.-H. Artificial Intelligence Approach for Bio-Based Materials’ Characterization and Explanation. Buildings 2024, 14, 1602. https://doi.org/10.3390/buildings14061602
Alami A, Rajaoarisoa L, Dujardin N, Benouar A, Kaddouri K, Benouis K, Benzaama M-H. Artificial Intelligence Approach for Bio-Based Materials’ Characterization and Explanation. Buildings. 2024; 14(6):1602. https://doi.org/10.3390/buildings14061602
Chicago/Turabian StyleAlami, Ahmed, Lala Rajaoarisoa, Nicolas Dujardin, Ali Benouar, Khacem Kaddouri, Khedidja Benouis, and Mohammed-Hichem Benzaama. 2024. "Artificial Intelligence Approach for Bio-Based Materials’ Characterization and Explanation" Buildings 14, no. 6: 1602. https://doi.org/10.3390/buildings14061602
APA StyleAlami, A., Rajaoarisoa, L., Dujardin, N., Benouar, A., Kaddouri, K., Benouis, K., & Benzaama, M. -H. (2024). Artificial Intelligence Approach for Bio-Based Materials’ Characterization and Explanation. Buildings, 14(6), 1602. https://doi.org/10.3390/buildings14061602