机器学习辅助增材制造元结构设计的研究进展

IF 7.1 2区 材料科学 Q1 MATERIALS SCIENCE, COMPOSITES
Shuailong Gao, Yingjian Sun, Li Xi, Tian Zhao, Yixing Huang, Rujie He, Xiao Kang, Ying Li
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引用次数: 0

摘要

增材制造减轻了元结构的制造挑战,但实现最佳性能和确定相应的结构参数仍然是一个重大挑战。本文重点介绍了机器学习模型在增材制造元结构设计方面的最新进展。它概述了基于机器学习的设计框架和各种计算系统,以揭示结构参数与其相关属性之间的关系。结果表明,机器学习可以显著帮助设计由各种增材制造材料(包括聚合物、金属和树脂)制造的元结构。特别是生成式对抗网络和人工神经网络被提出并显示出巨大的潜力。然而,机器学习模型的可预测性受到可用数据的数量和质量的限制。将机器学习与物理知识相结合可以提供有价值的见解并提高设计的可靠性。最后,本文总结和分析了机器学习模型应用的挑战和前景。总之,本文为加速元结构的设计、探索创新结构、建立结构参数与性能之间的联系提供了新的视角和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Recent advances in machine learning-assisted design of additive manufacturing metastructures: a review

Recent advances in machine learning-assisted design of additive manufacturing metastructures: a review
Additive manufacturing has mitigated the fabrication challenges of metastructures, but achieving optimal performance and determining the corresponding structural parameters continue to pose a significant challenge. This review highlighted recent advancements in the design of additive manufacturing metastructures by machine learning models. It outlined machine learning-based design frameworks and various computational systems to reveal the relationships between structural parameters and their associated properties. The results showed that machine learning can significantly assist the design of metastructures fabricated from diverse additive manufacturing materials, including polymers, metals, and resins. In particular, generative adversarial networks and artificial neural networks were proposed and showed great potential. However, the predictability of machine learning model was constrained by the quantity and quality of available data. Integrating machine learning with physical knowledge was shown to provide valuable insights and improve design reliability. Finally, this review summarized and analyzed challenges and perspectives on the application of machine learning models. Overall, this review offers new perspectives and methodologies to accelerate the design of metastructures, explore innovative structural, and establish connections between structural parameters and performance.
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来源期刊
Composite Structures
Composite Structures 工程技术-材料科学:复合
CiteScore
12.00
自引率
12.70%
发文量
1246
审稿时长
78 days
期刊介绍: The past few decades have seen outstanding advances in the use of composite materials in structural applications. There can be little doubt that, within engineering circles, composites have revolutionised traditional design concepts and made possible an unparalleled range of new and exciting possibilities as viable materials for construction. Composite Structures, an International Journal, disseminates knowledge between users, manufacturers, designers and researchers involved in structures or structural components manufactured using composite materials. The journal publishes papers which contribute to knowledge in the use of composite materials in engineering structures. Papers deal with design, research and development studies, experimental investigations, theoretical analysis and fabrication techniques relevant to the application of composites in load-bearing components for assemblies, ranging from individual components such as plates and shells to complete composite structures.
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