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Analysis of load-bearing capacity factors of textile-reinforced mortar using multilayer perceptron and explainable artificial intelligence

•MLP and SHAP model was conducted to predicted flexural strength of RC beam strengthened with TRM.•Textile geometry, anchorage, number of layers are analyzed external factor.•The MLP model showed a high performance to reflected complex given factors.•Additional factor was identified as a significant...

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Bibliographic Details
Published in:Construction & building materials 2023-01, Vol.363, p.129560, Article 129560
Main Authors: Song, Youngjae, Kim, Kwangsu, Park, Seunghee, Park, Sun-Kyu, Park, Jongho
Format: Article
Language:English
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Summary:•MLP and SHAP model was conducted to predicted flexural strength of RC beam strengthened with TRM.•Textile geometry, anchorage, number of layers are analyzed external factor.•The MLP model showed a high performance to reflected complex given factors.•Additional factor was identified as a significant performance impact by SHAP model. With the aging of reinforced concrete structures, textiles, which are fiber composite materials, have been gaining attention for structural strengthening and replacement of steel reinforcements. The application of textile-reinforced mortar (TRM) is one method of strengthening structures using textiles. Various factors affect the performance when structures are strengthened with TRM; it is affected by the physical properties of the material, such as tensile strength and elongation, and external factors, which vary depending on the design condition, such as textile geometry and strengthening method. Therefore, it is necessary to develop an accurate method that considers the influence of various external factors for evaluating the load-bearing capacity in flexural of TRM-strengthened RC beam. A total of 100 experimental data were learned using a multilayer perceptron (MLP) deep learning model with 24 features, which were analyzed using explainable artificial intelligence, shapley additive explanations (SHAP). The MLP model exhibited a high performance, with a coefficient of determination of 0.9677, indicating the complex correlation between the given features. Regarding the influence of external factors on yield strength, the weft fiber spacing had a negative impact with high influence, and the warp fiber spacing was found to have a very low effect. The anchorage and the number of layers seemed to have a positive impact; however, the effect was small.
ISSN:0950-0618
1879-0526
DOI:10.1016/j.conbuildmat.2022.129560