The state‐of‐art review of ultra‐precision machining using text mining: Identification of main themes and recommendations for the future direction

Wai Sze YIP, Hengzhou Edward Yan, Baolong Zhang, Suet To
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Abstract

Abstract Ultra‐precision machining (UPM), one of the most advanced machining techniques that can produce exact components, significantly impacts the technological community. The significance of UPM attracts the attention of academic and industrial partners. As a result of the rapid development of UPM caused by technological advancement, it is necessary to revisit the current stages and evolution of UPM to sustain and advance this technology. The state of the art in UPM is first investigated systematically in this study by identifying the current four major UPM themes. The UPM thematic network is then built, along with a structural analysis of the network, to determine the interactions between each theme and the primary roles of theme members responsible for the interactions. Furthermore, the “bridge” role is assigned to the specific UPM theme content. On the other hand, Sentiment analysis is conducted to determine how the academic community at UPM feels about the themes for UPM research to focus on those themes with a need for more confidence. Considering the above findings, the future perspective of UPM and suggestions for its advancement are discussed and provided. This study provides a comprehensive understanding and the current state‐of‐the‐art review of UPM technology by a text mining technique to critically analyze its research content, as well as suggestions to enhance UPM development by focusing on its current challenges, thereby assisting academia and institutions in leveraging this technology to benefit society. This article is categorized under: Algorithmic Development > Text Mining Application Areas > Science and Technology Application Areas > Industry Specific Applications

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使用文本挖掘的超精密加工的最新回顾:确定主题和对未来方向的建议
超精密加工(UPM)是一种可以生产精确零件的最先进的加工技术,对科技界产生了重大影响。芬欧汇川的重要性吸引了学术界和工业界合作伙伴的关注。由于技术进步导致UPM的快速发展,有必要重新审视UPM的当前阶段和演变,以维持和推进这项技术。在本研究中,通过确定当前的四个主要UPM主题,首先系统地调查了UPM的最新进展。然后建立UPM主题网络,并对网络进行结构分析,以确定每个主题之间的相互作用以及负责相互作用的主题成员的主要角色。此外,“桥梁”角色被分配给特定的UPM主题内容。另一方面,进行情绪分析以确定UPM学术界对UPM研究的主题的感受,以便将重点放在需要更多信心的主题上。在此基础上,对UPM的发展前景和发展建议进行了探讨。本研究通过文本挖掘技术对芬欧汇川技术进行了全面的理解和最新的回顾,批判性地分析了其研究内容,并提出了通过关注当前挑战来加强芬欧汇川发展的建议,从而帮助学术界和机构利用这项技术造福社会。本文分类如下:算法开发>文本挖掘应用领域科技应用领域特定行业应用
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