基于深度学习潜在分子动力学的硅酸钙水合物力学性能和失效机理透视

IF 10.9 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Weihuan Li , Chenchen Xiong , Yang Zhou , Wentao Chen , Yangzezhi Zheng , Wei Lin , Jiarui Xing
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引用次数: 0

摘要

硅酸钙水合物的分子尺度力学性能对胶凝材料的宏观性能至关重要,但如何在计算模拟中实现精度与效率的兼顾仍是一项挑战。本研究利用基于人工神经网络专门为硅酸钙水合物开发的深度学习势能,实现了分子动力学模拟,其精度可与第一原理方法相媲美。利用该势垒探索了硅酸钙水合物的弹性特性和单轴力学行为,其中分析了钙比例的各向异性和影响机制。研究结果进一步证明,深度学习势比普通力场具有更高的精度。弹性模量的各向异性主要归因于不同方向上的原子相互作用,而强度的各向异性则受到破坏形式的影响。这项研究可推进分子尺度的精确模拟,加深对水泥基材料强度来源和内聚机理的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Insights on the mechanical properties and failure mechanisms of calcium silicate hydrates based on deep-learning potential molecular dynamics
The molecular-scale mechanical properties of calcium silicate hydrates are crucial to the macro performance of cementitious materials, while achieving coincidence between accuracy and efficiency in computational simulations still remains a challenge. This study utilizes a deep-learning potential, specifically developed for calcium silicate hydrates based on artificial neural network, to achieve molecular dynamics simulations with accuracy comparable to first-principle methods. With this potential, the elastic properties and uniaxial mechanical behaviors are explored, wherein the anisotropy and impact mechanism of calcium ratios are analyzed. The results add to evidence that the deep-learning potential possess a higher accuracy than common force fields. The anisotropy of elastic modulus is mainly attributed to different atomic interactions in various directions, while the anisotropy of strength is additionally affected by the form of failure. This study may advance the accurate molecular-scale simulation and deepen the understanding of the strength source and cohesion mechanism of cement-based materials.
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来源期刊
Cement and Concrete Research
Cement and Concrete Research 工程技术-材料科学:综合
CiteScore
20.90
自引率
12.30%
发文量
318
审稿时长
53 days
期刊介绍: Cement and Concrete Research is dedicated to publishing top-notch research on the materials science and engineering of cement, cement composites, mortars, concrete, and related materials incorporating cement or other mineral binders. The journal prioritizes reporting significant findings in research on the properties and performance of cementitious materials. It also covers novel experimental techniques, the latest analytical and modeling methods, examination and diagnosis of actual cement and concrete structures, and the exploration of potential improvements in materials.
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