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首页> 外文期刊>Materials and Manufacturing Processes >Designing Cu-Zr Glass Using Multiobjective Genetic Algorithm and Evolutionary Neural Network Metamodels-Based Classical Molecular Dynamics Simulation
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Designing Cu-Zr Glass Using Multiobjective Genetic Algorithm and Evolutionary Neural Network Metamodels-Based Classical Molecular Dynamics Simulation

机译:基于多目标遗传算法和进化神经网络元模型的经典分子动力学模拟设计Cu-Zr玻璃

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摘要

Shear deformation analysis and diffusion behavior of Copper-Zirconium Bulk Metallic Glasses (BMG) is studied for different combinations of processing parameters. Melt holding temperature, melt holding duration, cooling rate of melt and composition of BMG are varied to obtain BMGs of different structures. The as-quenched structures are characterized using Radial Distribution Function (RDF) and Self-Diffusion constant values (of each atom type). The objective of this study is to design a Cu-Zr BMG which can absorb maximum energy and still deform as little as possible while maximizing its diffusivity during shear deformation of the structure. For this, metamodels were constructed by feeding the Molecular Dynamics (MD) results to an Evolutionary Neural Network (EvoNN) so as to generate the desired objective functions which are then optimized through multiobjective genetic algorithm. This led to identification of some hitherto unknown structures, characterized by atomic coordinates, which have good resistance to shear deformation and at the same time possess high diffusivity.
机译:针对加工参数的不同组合,研究了铜锆大块玻璃的剪切变形分析和扩散行为。改变熔体保持温度,熔体保持时间,熔体的冷却速率和BMG的组成以获得不同结构的BMG。淬火后的结构使用径向分布函数(RDF)和自扩散常数值(每种原子类型)来表征。这项研究的目的是设计一种Cu-Zr BMG,它可以吸收最大能量并且在结构剪切变形过程中最大化其扩散率的同时仍尽可能少地变形。为此,通过将分子动力学(MD)结果输入进化神经网络(EvoNN)来构建元模型,以生成所需的目标函数,然后通过多目标遗传算法对其进行优化。这导致鉴定了一些迄今未知的结构,这些结构以原子坐标为特征,具有良好的抗剪切变形能力,同时具有很高的扩散性。

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