花生状孔洞穿孔增殖性超材料的高效可逆智能设计

IF 2.7 3区 材料科学 Q2 ENGINEERING, MECHANICAL
Hongyuan Liu, Feng Hou, Ang Li, Yongpeng Lei, Hui Wang
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引用次数: 0

摘要

在各种增氧超材料中,具有花生状孔隙的多孔材料具有制作简单、承载能力高、应力集中程度低、力学性能可灵活调节等诸多优点,近年来备受关注。然而,其中一个挑战是如何高效可逆地设计这种超材料,以满足不同的增减需求,而不需要通过传统的物理或基于规则的方法进行耗时且逐个案例的建模。本文提出了一种基于反向传播神经网络(BPNN)和遗传算法(GA)的数据驱动对策。首先,准备包含微观结构-属性对的数据集,训练bp神经网络,确定微观结构参数到泊松比的隐含逻辑映射关系;然后,利用遗传算法对映射关系进行优化,找到满足目标泊松比的微观结构参数对应的最优解。通过拉伸试验和有限元仿真验证了具体优化设计的有效性和准确性。随后,在约束/无约束条件下,得到了更多对应于正、零或负泊松比的最优解,从而通过这一将缺失特性与人工智能相互关联的跨学科工具加速了缺失超材料的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

High-efficient and reversible intelligent design for perforated auxetic metamaterials with peanut-shaped pores

High-efficient and reversible intelligent design for perforated auxetic metamaterials with peanut-shaped pores

Among various types of auxetic metamaterials, the perforated materials with peanut-shaped pores exhibit numerous advantages such as simple fabrication, high load-bearing capability, low stress-concentration level and flexibly tunable mechanical properties, and thus they have received much attention recently. However, one challenging is to make a high-efficient and reversible design of such metamaterials to meet diverse auxetic requirements, without the need to model them through conventional physics- or rule-based methods in time-consuming and case-by-case manner. In this study, a data-driven countermeasure is introduced by coupling back-propagation neural network (BPNN) and genetic algorithm (GA). Firstly, a dataset including microstructure-property pairs is prepared to train BPNN to determine the hidden logic mapping relationship from microstructural parameters to Poisson ratio. Then, GA is employed to optimize the mapping relationship to find the corresponding optimal solutions of microstructural parameters meeting the target Poisson’s ratio. The efficiency and accuracy of specific optimal designs is verified by the tensile experiment and finite element simulation. Subsequently, more optimal solutions corresponding to positive, zero or negative Poisson’s ratios are achieved under constrained/unconstrained conditions to accelerate the design of auxetic metamaterials by this interdisciplinary tool in which the auxetic characteristics and artificial intelligence are interconnected mutually.

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来源期刊
International Journal of Mechanics and Materials in Design
International Journal of Mechanics and Materials in Design ENGINEERING, MECHANICAL-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
6.00
自引率
5.40%
发文量
41
审稿时长
>12 weeks
期刊介绍: It is the objective of this journal to provide an effective medium for the dissemination of recent advances and original works in mechanics and materials'' engineering and their impact on the design process in an integrated, highly focused and coherent format. The goal is to enable mechanical, aeronautical, civil, automotive, biomedical, chemical and nuclear engineers, researchers and scientists to keep abreast of recent developments and exchange ideas on a number of topics relating to the use of mechanics and materials in design. Analytical synopsis of contents: The following non-exhaustive list is considered to be within the scope of the International Journal of Mechanics and Materials in Design: Intelligent Design: Nano-engineering and Nano-science in Design; Smart Materials and Adaptive Structures in Design; Mechanism(s) Design; Design against Failure; Design for Manufacturing; Design of Ultralight Structures; Design for a Clean Environment; Impact and Crashworthiness; Microelectronic Packaging Systems. Advanced Materials in Design: Newly Engineered Materials; Smart Materials and Adaptive Structures; Micromechanical Modelling of Composites; Damage Characterisation of Advanced/Traditional Materials; Alternative Use of Traditional Materials in Design; Functionally Graded Materials; Failure Analysis: Fatigue and Fracture; Multiscale Modelling Concepts and Methodology; Interfaces, interfacial properties and characterisation. Design Analysis and Optimisation: Shape and Topology Optimisation; Structural Optimisation; Optimisation Algorithms in Design; Nonlinear Mechanics in Design; Novel Numerical Tools in Design; Geometric Modelling and CAD Tools in Design; FEM, BEM and Hybrid Methods; Integrated Computer Aided Design; Computational Failure Analysis; Coupled Thermo-Electro-Mechanical Designs.
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