Quoc-Phu Ma, Hoang-Sy Nguyen, Jiri Hajnys, Jakub Mesicek, Marek Pagac, Jana Petru
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引用次数: 0
Abstract
This paper delves into the cutting-edge applications of Machine Learning (ML) within modern Additive Manufacturing (AM), employing bibliometric analysis as its methodology. Formulated around three pivotal research questions, the study navigates through the current landscape of the research field. Utilizing data sourced from Web of Science, the paper conducts a comprehensive statistical and visual analysis to unveil underlying patterns within the existing literature. Each category of ML techniques is elucidated alongside its specific applications, providing researchers with a holistic overview of the research terrain and serving as a practical checklist for those seeking to address particular challenges. Culminating in a vision for the Smart Additive Manufacturing Factory (SAMF), the paper envisions seamless integration of reviewed ML techniques. Furthermore, it offers critical insights from a practical standpoint, thereby facilitating shaping future research directions in the field.
本文采用文献计量分析方法,深入探讨了机器学习(ML)在现代增材制造(AM)中的前沿应用。本研究围绕三个关键性研究问题,对该研究领域的现状进行了分析。本文利用从 Web of Science 获取的数据,进行了全面的统计和可视化分析,以揭示现有文献中的潜在模式。每一类 ML 技术的具体应用都得到了阐释,为研究人员提供了研究领域的整体概况,并为那些寻求解决特定挑战的人提供了实用的清单。本文最终提出了智能增材制造工厂(SAMF)的愿景,设想将已审查的 ML 技术进行无缝集成。此外,它还从实用的角度提出了重要见解,从而有助于确定该领域未来的研究方向。
期刊介绍:
Journal Name: Applied Materials Today
Focus:
Multi-disciplinary, rapid-publication journal
Focused on cutting-edge applications of novel materials
Overview:
New materials discoveries have led to exciting fundamental breakthroughs.
Materials research is now moving towards the translation of these scientific properties and principles.