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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Internet of things delay application driven measurement and optimization technology in edge computing environment
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Internet of things delay application driven measurement and optimization technology in edge computing environment

机译:事物互联网延迟应用驱动测量和优化技术在边缘计算环境中

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摘要

Edge computing applications have the characteristics of huge scale and sensitive quality of service. However, due to the "long tail delay" problem of user access requests across the heterogeneous environment of edge networks, wide area networks and data centers, the quality of experience of edge users has seriously decreased. Therefore, a time reduction rule calculation algorithm based on Internet of Things (IoT) delay application-driven measurement mechanism is proposed, which can be applied to multi-source heterogeneous information fusion, big data fusion and information fusion security. The system architecture features of edge computing applications are reviewed, and the causes and classifications of long tail delays are analyzed. The main theories and methods of network delay measurement are introduced, and the optimization techniques for long tail delay are summarized. Finally, the online optimization operation environment is proposed thoughts and challenges. The research results show that the GXDGC algorithm proposed is effective for the application of driving measurement technology in IoT delay. Users' access to online real-time big data needs to span complex heterogeneous network environments such as edge networks, wide area networks, data center networks, etc. Due to the superposition of delays, any increase in delays in online real-time big data processing will inevitably lead to end-to-end long-tail delays. Therefore, it is necessary to design an integrated optimization mechanism to control end-to-end online real-time big data network delays.
机译:边缘计算应用具有巨大规模和敏感的服务质量的特点。然而,由于用户访问边缘网络的异构环境的“长尾延迟”问题,广域网和数据中心的异构环境,边缘用户的经验质量严重减少了。因此,提出了一种基于物联网(物联网)延迟应用驱动的测量机制的时间减小规则计算算法,其可以应用于多源异构信息融合,大数据融合和信息融合安全性。综述了边缘计算应用的系统架构特征,分析了长尾延迟的原因和分类。介绍了网络延迟测量的主要理论和方法,总结了长尾延迟的优化技术。最后,提出了在线优化运营环境的思考和挑战。研究结果表明,所提出的GXDGC算法对于在物联网延迟中驾驶测量技术的应用是有效的。用户访问在线实时大数据需要跨越复杂的异构网络环境,例如边缘网络,广域网,数据中心网络等。由于延迟的叠加,在线实时大数据延迟的任何增加处理将不可避免地导致端到端的长尾延迟。因此,有必要设计一个集成的优化机制来控制端到端的在线实时大数据网络延迟。

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