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Machine learning based code dissemination by selection of reliability mobile vehicles in 5G networks

机译:通过选择5G网络中的可靠性移动车辆来进行基于机器学习的代码分发

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摘要

Recently, the evolving of 5G networks is foreseen as a major driver of future mobile vehicular social networks (VSNs), which can provide a novel method of code disseminations. Based on this concept, vehicles can be used as code disseminators. That is, infrastructures of a smart city can be upgraded by receiving updated program codes that are disseminated by vehicles in the VSNs. Specifically, vehicles in the 5G network are hard to be managed. Under this domain, safety of program codes is a key challenge. Meanwhile, improving coverage of program codes is also challenging. However, arranging plenty of vehicles as code disseminators will incur large costs of the ground control station (GCS). Therefore, by utilizing machine learning methods, this paper proposes a "Machine Learning based Code Dissemination by Selecting Reliability Mobile Vehicles in 5G Networks" (MLCD) scheme to choose vehicles with higher reliable degree and coverage ratio as code disseminators to deliver code with lower costs. Firstly, reliable degrees of vehicles are calculated and selected to improve safety degree of code disseminations. Secondly, vehicles with higher coverage ratio are preferred to promise code coverage. Thirdly, machine learning methods are utilized to select vehicles with both higher coverage ratios and reliable degrees as code disseminators with limited costs. Compared to random-selection and coverage-only scheme respectively, the MLCD scheme can improve safety degree of code dissemination process by 83.6% and 18.86% in 5G networks, and can improve coverage ratio of updated information by 23.16%. Comprehensive performances of the proposed scheme can be improved by 80.56% and 17.25% respectively. Future works focus on improving code security in 5G networks by more advanced and suitable machine learning methods.
机译:最近,预计5G网络的发展将成为未来移动车载社交网络(VSN)的主要驱动力,而VSN可以提供一种新颖的代码分发方法。基于此概念,可以将车辆用作代码分发器。即,可以通过接收由VSN中的车辆传播的更新的程序代码来升级智能城市的基础设施。具体来说,很难管理5G网络中的车辆。在这一领域,程序代码的安全性是一个关键的挑战。同时,提高程序代码的覆盖范围也具有挑战性。但是,将大量车辆安排为代码传播器将导致地面控制站(GCS)的大量费用。因此,通过利用机器学习方法,本文提出了一种“通过选择5G网络中的可靠移动车辆进行基于机器学习的代码分发”(MLCD)方案,以选择具有更高可靠度和覆盖率的车辆作为代码分发器,从而以较低的成本交付代码。首先,计算并选择车辆的可靠度,以提高代码发布的安全度。其次,优先选择覆盖率更高的车辆以保证代码覆盖率。第三,利用机器学习方法来选择具有较高覆盖率和可靠程度的车辆作为成本有限的代码传播器。与随机选择和仅覆盖方案相比,MLCD方案在5G网络中可以将代码分发过程的安全度提高83.6%和18.86%,并且可以将更新信息的覆盖率提高23.16%。该方案的综合性能可以分别提高80.56%和17.25%。未来的工作重点是通过更高级,更合适的机器学习方法来提高5G网络中的代码安全性。

著录项

  • 来源
    《Computer Communications》 |2020年第2期|109-118|共10页
  • 作者

  • 作者单位

    Cent South Univ Sch Comp Sci & Engn Changsha 410083 Peoples R China;

    Cent South Univ Sch Comp Sci & Engn Changsha 410083 Peoples R China|Univ Adelaide Sch Elect & Elect Engn Adelaide SA 5005 Australia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning; Code disseminations; Safety degree; Coverage ratio; Reliability; SG networks;

    机译:机器学习;代码发布;安全等级;覆盖率;可靠性;SG网络;

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