WANG Yu,QIN Xin,LI Fang,et al.Research on the capability evaluation system and maturity model of optical transport network[J].Telecommunications Science,2025,41(09):28-42.
WANG Yu,QIN Xin,LI Fang,et al.Research on the capability evaluation system and maturity model of optical transport network[J].Telecommunications Science,2025,41(09):28-42. DOI: 10.11959/j.issn.1000-0801.2025192.
Research on the capability evaluation system and maturity model of optical transport network
聚焦于光传送网(optical transport network,OTN)数字孪生能力评估体系和成熟度模型的构建与应用,首先系统剖析了光传送网数字孪生能力评估需求和关键技术,并提出能力评估体系应具备的核心特征,然后对光传送网能力评估体系的构建进行研究,以精准衡量技术水平和应用成效。最后,基于构建的能力评价指标框架提出了光传送网数字孪生成熟度模型,包括各阶段发展目标和评价因子,从而勾勒出光传送网数字孪生技术和应用的未来发展演进方向和等级评价方法,为该领域的持续发展提供参考。
Abstract
The construction and application of the evaluation system and maturity model for digital twin capabilities in optical transport network (OTN) were focused on. Firstly
the evaluation requirements and key technologies for digital twin capabilities in OTN were systematically analyzed
and the core characteristics that the evaluation system should possess were proposed. Subsequently
research was conducted on the construction of the evaluation system for OTN capabilities to accurately measure technical proficiency and application effectiveness. Finally
based on the constructed evaluation index framework for capabilities
a maturity model for digital twins in OTN was proposed
encompassing development goals and evaluation factors for each stage. This outlined the future evolution directions and hierarchical evaluation methods for digital twin technology and applications in OTN
providing a reference for the continuous development in this field.
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references
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