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A freight integer linear programming model under fog computing and its application in the optimization of vehicle networking deployment

机译:雾计算下的货运整数线性编程模型及其在车辆网络部署优化中的应用

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The increase in data amount makes the traditional Internet of Vehicles (IoV) fail to meet users’ needs. Hence, the IoV is explored in series. To study the construction of freight integer linear programming (ILP) model based on fog computing (FG), and to analyze the application of the model in the optimization of the networking deployment (ND) of the IoV. FG and ILP are combined to build a freight computing ILP model. The model is used to analyze the application of ND optimization in the IoV system through simulations. The results show that while analyzing the ND results in different scenarios, the model is more suitable for small-scale scenarios and can optimize the objective function; however, its utilization rate is low in large-scale scenarios. While comparing and analyzing the network cost and running time, compared with traditional cloud computing solutions, the ND solution based on FG requires less cost, shorter running time, and has apparent effectiveness and efficiency. Therefore, it is found that the FG-based model has low cost, short running time, and apparent efficiency, which provides an experimental basis for the application of the later deployment of freight vehicles (FVs) in the Internet of Things (IoT) system for ND optimization. The results will provide important theoretical support for the overall deployment of IoV.
机译:数据量的增加使传统的车辆互联网(IOV)无法满足用户的需求。因此,IOV源于赛中。研究基于雾计算(FG)的货运整数线性编程(ILP)模型的构建,分析模型在IOV网络部署(ND)优化中的应用。 FG和ILP组合以构建货运计算ILP模型。该模型用于通过仿真分析ND优化在IOV系统中的应用。结果表明,在分析ND的同时在不同的场景中,该模型更适合小型方案,可以优化目标函数;但是,其利用率在大型情况下很低。在比较和分析网络成本和运行时间的同时,与传统的云计算解决方案相比,基于FG的ND解决方案需要更少的成本,更短的运行时间,并且具有明显的效率和效率。因此,发现基于FG的模型具有低成本,运行时间短,效率短,这为应用于事物互联网(IOT)系统中的货运车辆(FVS)的应用程序提供了一种实验基础对于ND优化。结果将为IOV整体部署提供重要的理论支持。

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