在机器学习辅助下实现3d打印CrCoNi中熵合金的卓越强度-延展性协同作用

IF 6.2 2区 材料科学 Q1 MATERIALS SCIENCE, CHARACTERIZATION & TESTING Materials Characterization Pub Date : 2025-05-01 Epub Date: 2025-03-28 DOI:10.1016/j.matchar.2025.114990
Yan Zhu , Yusen Li , Zhongwei Yan , Changhui Song , Jindong Tian , Shaohua Yan
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引用次数: 0

摘要

在金属合金增材制造中,工艺参数的优化具有重要意义。传统的试错法既费时又费钱,而且优化后的参数有时不是最优的,导致强度和延性不理想。在这项工作中,我们使用高斯过程回归机器学习(ML)快速找到相对密度高于99%的CrCoNi MEA增材制造的优化参数。经优化后的材料抗拉强度为743 MPa,塑性为59.5%。强度和延展性的组合为44.21GPa%,超过了其他没有ML辅助的AM制备的CrCoNi MEA。这种特殊的强度-延性协同作用归因于原始微观组织的细晶粒,高位错密度,孪晶变形的微观组织缺陷,纳米级的层错网络,位错以及这些缺陷之间的相互作用。该方法为优化增材制造工艺参数,生产具有强延性协同效应的金属合金提供了新的思路。
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Achieving exceptional strength-ductility synergy in a 3D-printed CrCoNi medium-entropy alloy with machine-learning assistance
Optimization of processing parameters is of great importance in additive manufacturing (AM) of metal alloys. Conventional trial-and-error approach is time- and cost-consumable, and the optimized parameters are sometimes sub-optimal, leading to the strength and ductility is not desirable. In this work, we employed Gaussian Process Regression machine learning (ML) to quickly find the optimized parameters for AM of CrCoNi MEA with relative density higher than 99 %. Using the optimized parameters, the additively manufactured CrCoNi MEA exhibited a tensile strength of 743 MPa and ductility of 59.5 %. The combination of the strength and ductility is 44.21GPa%, exceeding that of other CrCoNi MEA fabricated by AM without ML assistance. Such exceptional strength-ductility synergy was attributed to the original microstructures featuring fine grains, high dislocation density, and the deformed microstructural defects of twins, nanoscale network of stacking faults, dislocations, and the interactions between these defects. The method in this work sheds new sights into optimization of AM processing parameters and producing metal alloys with great strength-ductility synergy.
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来源期刊
Materials Characterization
Materials Characterization 工程技术-材料科学:表征与测试
CiteScore
7.60
自引率
8.50%
发文量
746
审稿时长
36 days
期刊介绍: Materials Characterization features original articles and state-of-the-art reviews on theoretical and practical aspects of the structure and behaviour of materials. The Journal focuses on all characterization techniques, including all forms of microscopy (light, electron, acoustic, etc.,) and analysis (especially microanalysis and surface analytical techniques). Developments in both this wide range of techniques and their application to the quantification of the microstructure of materials are essential facets of the Journal. The Journal provides the Materials Scientist/Engineer with up-to-date information on many types of materials with an underlying theme of explaining the behavior of materials using novel approaches. Materials covered by the journal include: Metals & Alloys Ceramics Nanomaterials Biomedical materials Optical materials Composites Natural Materials.
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