低数据极限下的材料参数识别:梯度增强连续体的应用

IF 2.6 3区 材料科学 Q2 ENGINEERING, MANUFACTURING
Duc-Vinh Nguyen, Mohamed Jebahi, Victor Champaney, Francisco Chinesta
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引用次数: 0

摘要

由于微型化趋势日益明显,小型制造工艺已广泛应用于各个工程领域,以制造微型产品。这些工艺通常表现出复杂的尺寸效应,使材料的行为高度依赖于其几何尺寸。因此,准确理解和模拟这些效应对于优化制造结果和实现高性能最终产品至关重要。为此,先进的梯度增强塑性理论应运而生,成为捕捉这些复杂现象的有力工具,其精确度远远高于经典塑性方法。然而,这些先进的理论往往需要确定大量的材料参数,由于小尺度的实验数据有限和计算成本高昂,这构成了一个巨大的挑战。本文旨在评估和比较各种优化技术(包括进化算法、响应面方法和贝叶斯优化)在确定作者最新开发的柔性梯度增强塑性模型的材料参数方面的有效性。本文的研究结果为高效、可靠的材料参数识别程序提供了见解,是弥合先进材料行为理论与实际工业应用之间差距的一次尝试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identification of material parameters in low-data limit: application to gradient-enhanced continua

Identification of material parameters in low-data limit: application to gradient-enhanced continua

Identification of material parameters in low-data limit: application to gradient-enhanced continua

Due to the growing trend towards miniaturization, small-scale manufacturing processes have become widely used in various engineering fields to manufacture miniaturized products. These processes generally exhibit complex size effects, making the behavior of materials highly dependent on their geometric dimensions. As a result, accurate understanding and modeling of such effects are crucial for optimizing manufacturing outcomes and achieving high-performance final products. To this end, advanced gradient-enhanced plasticity theories have emerged as powerful tools for capturing these complex phenomena, offering a level of accuracy significantly greater than that provided by classical plasticity approaches. However, these advanced theories often require the identification of a large number of material parameters, which poses a significant challenge due to limited experimental data at small scales and high computation costs. The present paper aims at evaluating and comparing the effectiveness of various optimization techniques, including evolutionary algorithm, response surface methodology and Bayesian optimization, in identifying the material parameter of a recent flexible gradient-enhanced plasticity model developed by the authors. The paper findings represent an attempt to bridge the gap between advanced material behavior theories and their practical industrial applications, by offering insights into efficient and reliable material parameter identification procedures.

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来源期刊
International Journal of Material Forming
International Journal of Material Forming ENGINEERING, MANUFACTURING-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
5.10
自引率
4.20%
发文量
76
审稿时长
>12 weeks
期刊介绍: The Journal publishes and disseminates original research in the field of material forming. The research should constitute major achievements in the understanding, modeling or simulation of material forming processes. In this respect ‘forming’ implies a deliberate deformation of material. The journal establishes a platform of communication between engineers and scientists, covering all forming processes, including sheet forming, bulk forming, powder forming, forming in near-melt conditions (injection moulding, thixoforming, film blowing etc.), micro-forming, hydro-forming, thermo-forming, incremental forming etc. Other manufacturing technologies like machining and cutting can be included if the focus of the work is on plastic deformations. All materials (metals, ceramics, polymers, composites, glass, wood, fibre reinforced materials, materials in food processing, biomaterials, nano-materials, shape memory alloys etc.) and approaches (micro-macro modelling, thermo-mechanical modelling, numerical simulation including new and advanced numerical strategies, experimental analysis, inverse analysis, model identification, optimization, design and control of forming tools and machines, wear and friction, mechanical behavior and formability of materials etc.) are concerned.
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