Li Wei, Zhou Haozhou, Lu Zhenyuan, Kamarthi Sagar
Department of Mechanical and Industrial Engineering, Northeastern University, Boston, MA 02115, USA.
Sensors (Basel). 2024 Feb 12;24(4):1202. doi: 10.3390/s24041202.
Digital twin technology has become increasingly popular and has revolutionized data integration and system modeling across various industries, such as manufacturing, energy, and healthcare. This study aims to explore the evolving research landscape of digital twins using Keyword Co-occurrence Network (KCN) analysis. We analyze metadata from 9639 peer-reviewed articles published between 2000 and 2023. The results unfold in two parts. The first part examines trends and keyword interconnection over time, and the second part maps sensing technology keywords to six application areas. This study reveals that research on digital twins is rapidly diversifying, with focused themes such as predictive and decision-making functions. Additionally, there is an emphasis on real-time data and point cloud technologies. The advent of federated learning and edge computing also highlights a shift toward distributed computation, prioritizing data privacy. This study confirms that digital twins have evolved into complex systems that can conduct predictive operations through advanced sensing technologies. The discussion also identifies challenges in sensor selection and empirical knowledge integration.
数字孪生技术越来越受欢迎,并彻底改变了制造业、能源和医疗保健等各个行业的数据集成和系统建模。本研究旨在使用关键词共现网络(KCN)分析来探索数字孪生不断演变的研究格局。我们分析了2000年至2023年发表的9639篇同行评审文章的元数据。结果分为两部分。第一部分研究了随时间变化的趋势和关键词互连,第二部分将传感技术关键词映射到六个应用领域。本研究表明,数字孪生的研究正在迅速多样化,重点主题包括预测和决策功能。此外,还强调实时数据和点云技术。联邦学习和边缘计算的出现也凸显了向分布式计算的转变,优先考虑数据隐私。本研究证实,数字孪生已演变成复杂系统,可通过先进的传感技术进行预测操作。讨论还指出了传感器选择和经验知识整合方面的挑战。