A Review of Machine Learning Applications in Additive Manufacturing

Saadia A. Razvi, S. Feng, A. Narayanan, Y. T. Lee, P. Witherell
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引用次数: 71

Abstract

Variability in product quality continues to pose a major barrier to the widespread application of additive manufacturing (AM) processes in production environment. Towards addressing this barrier, monitoring AM processes and measuring AM materials and parts has become increasingly commonplace, and increasingly precise, making a new wave of AM-related data available. This newfound data provides a valuable resource for gaining new insight to AM processes and decision making. Machine Learning (ML) provides an avenue to gain this insight by 1) learning fundamental knowledge about AM processes and 2) identifying predictive and actionable recommendations to optimize part quality and process design. This report presents a literature review of ML applications in AM. The review identifies areas in the AM lifecycle, including design, process plan, build, post process, and test and validation, that have been researched using ML. Furthermore, this report discusses the benefits of ML for AM, as well as existing hurdles currently limiting applications.
机器学习在增材制造中的应用综述
产品质量的变化仍然是增材制造(AM)工艺在生产环境中广泛应用的主要障碍。为了解决这一障碍,监测增材制造过程和测量增材制造材料和零件已经变得越来越普遍,越来越精确,使新一波与增材制造相关的数据可用。这些新发现的数据为获得对增材制造流程和决策的新见解提供了宝贵的资源。机器学习(ML)提供了一种途径,通过1)学习有关增材制造工艺的基本知识,2)确定可预测和可操作的建议,以优化零件质量和工艺设计,从而获得这种见解。本文综述了机器学习在AM中的应用。该评论确定了使用ML研究的AM生命周期中的领域,包括设计、流程计划、构建、后期流程以及测试和验证。此外,本报告还讨论了ML对AM的好处,以及目前限制应用的现有障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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