本构Kolmogorov-Arnold网络(CKANs):结合数据驱动材料建模的准确性和可解释性

IF 6 2区 工程技术 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Kian P. Abdolazizi , Roland C. Aydin , Christian J. Cyron , Kevin Linka
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引用次数: 0

摘要

混合本构建模集成了两种互补的方法来描述和预测材料的力学行为:纯数据驱动的黑盒方法和物理约束的基于理论的模型。虽然黑盒方法提供了很高的准确性,但它们往往缺乏可解释性和可推断性。相反,基于物理的模型提供了理论洞察力和概括性,但可能无法以相同的精度捕获复杂的行为。传统上,混合建模需要在这些方面之间进行权衡。在本文中,我们展示了符号机器学习的最新进展-特别是Kolmogorov-Arnold网络(KANs) -如何帮助克服这一限制。本构Kolmogorov-Arnold网络(CKANs)是一类新的混合本构模型。通过整合后处理符号化步骤,CKANs将数据驱动模型的预测准确性与符号表达式的可解释性和外推能力相结合,弥合了机器学习和物理建模之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Constitutive Kolmogorov–Arnold Networks (CKANs): Combining accuracy and interpretability in data-driven material modeling

Constitutive Kolmogorov–Arnold Networks (CKANs): Combining accuracy and interpretability in data-driven material modeling
Hybrid constitutive modeling integrates two complementary approaches for describing and predicting a material’s mechanical behavior: purely data-driven black-box methods and physically constrained, theory-based models. While black-box methods offer high accuracy, they often lack interpretability and extrapolability. Conversely, physics-based models provide theoretical insight and generalizability but may not capture complex behaviors with the same accuracy. Traditionally, hybrid modeling has required a trade-off between these aspects. In this paper, we show how recent advances in symbolic machine learning — specifically Kolmogorov–Arnold Networks (KANs) — help to overcome this limitation. We introduce Constitutive Kolmogorov–Arnold Networks (CKANs) as a new class of hybrid constitutive models. By incorporating a post-processing symbolification step, CKANs combine the predictive accuracy of data-driven models with the interpretability and extrapolation capabilities of symbolic expressions, bridging the gap between machine learning and physical modeling.
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来源期刊
Journal of The Mechanics and Physics of Solids
Journal of The Mechanics and Physics of Solids 物理-材料科学:综合
CiteScore
9.80
自引率
9.40%
发文量
276
审稿时长
52 days
期刊介绍: The aim of Journal of The Mechanics and Physics of Solids is to publish research of the highest quality and of lasting significance on the mechanics of solids. The scope is broad, from fundamental concepts in mechanics to the analysis of novel phenomena and applications. Solids are interpreted broadly to include both hard and soft materials as well as natural and synthetic structures. The approach can be theoretical, experimental or computational.This research activity sits within engineering science and the allied areas of applied mathematics, materials science, bio-mechanics, applied physics, and geophysics. The Journal was founded in 1952 by Rodney Hill, who was its Editor-in-Chief until 1968. The topics of interest to the Journal evolve with developments in the subject but its basic ethos remains the same: to publish research of the highest quality relating to the mechanics of solids. Thus, emphasis is placed on the development of fundamental concepts of mechanics and novel applications of these concepts based on theoretical, experimental or computational approaches, drawing upon the various branches of engineering science and the allied areas within applied mathematics, materials science, structural engineering, applied physics, and geophysics. The main purpose of the Journal is to foster scientific understanding of the processes of deformation and mechanical failure of all solid materials, both technological and natural, and the connections between these processes and their underlying physical mechanisms. In this sense, the content of the Journal should reflect the current state of the discipline in analysis, experimental observation, and numerical simulation. In the interest of achieving this goal, authors are encouraged to consider the significance of their contributions for the field of mechanics and the implications of their results, in addition to describing the details of their work.
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