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APPLICATION OF AI AND MACHINE LEARNING TO THE THEORY OF COMPOSITE MATERIALS

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dc.contributor.author Mityushev, V.V.
dc.contributor.author Nurtazina, K.B.
dc.contributor.author Nauryzbayev, N.Zh.
dc.date.accessioned 2026-03-10T09:36:13Z
dc.date.available 2026-03-10T09:36:13Z
dc.date.issued 2025
dc.identifier.issn 2299-128X
dc.identifier.other doi.org/10.62753/ctp.2025.06.1.1
dc.identifier.uri http://repository.enu.kz/handle/enu/30005
dc.description.abstract The homogenization for classifying composites and determining their effective properties is an important optimal design problem of material sciences studied by mathematical modeling. The application of artificial intelligence (AI) and machine learning (ML) in the theory of composite materials is discussed. One of the main problems is the choice of characteristic ML features to describe multi-scale dispersed random composites and to predict their macroscopic properties. The complexity drastically increases when confronted with tasks such as estimating the effective properties of random composites, exploring optimal design scenarios with variable properties of components, or determining the optimal location and shape of inclusions since the myriad use of numerical computations proves challenging due to constraints in time and memory. In such instances, analytical, exact, or approximate formulas with the optimized parameters in symbolic form are preferred because powerful calculus methods can be applied to select the optimal parameters. The present paper is devoted to adequately choosing the parameters called structural sums, and corresponding analytical formulas. Such a formula is often asymptotic, and its correctly determined asymptotic precision shows its application area. We consider the question of the RVE size equivalent to the number of inclusions 𝑵𝑵 per periodicity cell. It can be investigated numerically by solving a periodicity problem with 𝑵𝑵 increasing up to stable effective constants not depending on 𝑵𝑵 . Though one can find works in literature following these lines, they concern special distributions of inclusions with the numerical results performed for small 𝑵𝑵 and for a small number of statistically investigated samples. A comprehensive study of 2D two-phase composites with equal circular inclusions is developed. It is demonstrated that using the concentration of inclusions and a contrast parameter is insufficient to properly study dispersed composites. The method of structural sums in combination with ML to improve model accuracy is applied. Based on the study, a new approach is suggested for selecting optimal parameters to analyze and classify two-dimensional dispersed composite structures. The included content fits 2020 Mathematics Subject Classification: 74Q15, 74-10. ru
dc.language.iso en ru
dc.publisher Composites Theory and Practice ru
dc.relation.ispartofseries 25: 1;11-20
dc.subject artificial intelligence ru
dc.subject machine learning ru
dc.subject composite material ru
dc.subject multi-scale problem ru
dc.subject microstructure ru
dc.subject homogenization ru
dc.subject structural sum ru
dc.title APPLICATION OF AI AND MACHINE LEARNING TO THE THEORY OF COMPOSITE MATERIALS ru
dc.type Article ru


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