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A Probabilistic Model for the Deployment of Human-Enabled Edge Computing in Massive Sensing Scenarios

机译:大规模感应方案中的启用人体边缘计算的概率模型

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Human-enabled edge computing (HEC) is a recent smart city technology designed to combine the advantages of massive mobile crowdsensing (MCS) techniques with the potential of multiaccess edge computing (MEC). In this context, the architectural hierarchy of the network shifts the management of sensing information close to terminal nodes through the use of intermediate entities (edges) bridging the direct Cloud-Device communication channel. Recent proposals suggest the implementation of those edges, not only employing fixed MEC nodes, but also opportunistically using as edge nodes mobile devices selected among the terminal ones. However, inappropriate selection techniques may lead to an overestimation or an underestimation of the number of nodes to be used in such a layer. In this article, we propose a probabilistic model for the estimation of the number of mobile nodes to be selected as substitutes of fixed ones. The effectiveness of our model is verified with tests performed on real-world mobility traces.
机译:启用人的边缘计算(HEC)是最近的智能城市技术,旨在将大规模移动众多(MCS)技术的优点与多功能欲达边缘计算(MEC)相结合。在这种情况下,网络的架构层次结构通过使用桥接直接云设备通信信道的中间实体(边缘)来将感测信息的感测信息的管理转移到终端节点。最近的建议表明,这些边缘的实施不仅采用固定的MEC节点,还可以使用终端中选择的边缘节点移动设备。然而,不适当的选择技术可能导致高估或低估在这种层中使用的节点数量。在本文中,我们提出了一种概率模型,用于估计要选择的移动节点的数量作为固定的替代品。我们模型的有效性是通过对现实世界移动迹线执行的测试进行验证。

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