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首页> 外文期刊>IEEE transactions on mobile computing >Collaborative Service Placement for Edge Computing in Dense Small Cell Networks
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Collaborative Service Placement for Edge Computing in Dense Small Cell Networks

机译:密集小型电池网络边缘计算的协作服务安置

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摘要

Mobile Edge Computing (MEC) pushes computing functionalities away from the centralized cloud to the proximity of data sources, thereby reducing service provision latency and saving backhaul network bandwidth. Although computation offloading for MEC systems has been extensively studied in the literature, service placement is an equally, if not more, important design topic of MEC, yet receives much less attention. Service placement refers to configuring the service platform and storing the related libraries/databases at the edge server, e.g., MEC-enabled Base Station (BS), which enables corresponding computation tasks to be executed. Due to the limited computing resource, the edge server can host only a small number of services and hence which services to host has to be judiciously decided to maximize the system performance. In this paper, we investigate collaborative service placement in MEC-enabled dense small cell networks. An efficient decentralized algorithm, called CSP (Collaborative Service Placement), is proposed where a network of small cell BSs optimize service placement decisions collaboratively to address a number of challenges in MEC systems, including service heterogeneity, spatial demand coupling, and decentralized coordination. CSP is developed based on parallel Gibbs sampling by exploiting the graph coloring on the small cell network. The algorithm significantly improves the time efficiency compared to conventional Gibbs sampling, yet guarantees provable convergence and optimality. CSP is further extended to work with selfish BSs, where BSs are allowed to choose "to cooperate" or "not to cooperate." We employ coalitional game to investigate the strategic behaviors of selfish BSs and design a coalition formation scheme to form stable BS coalitions using merge-and-split rules. Simulations results show that CSP can effectively reduce edge system operational cost for both cooperative and selfish BSs.
机译:移动边缘计算(MEC)将计算功能从集中式云推向数据源的接近,从而减少服务提供延迟和保存回程网络带宽。虽然在文献中已经广泛研究了MEC系统的计算卸载,但服务放置是一个平等的,如果不是更多,MEC的重要设计主题,但接收了更少的关注。服务放置是指配置服务平台并将相关的库/数据库存储在Edge Server,例如,启用MEC的基站(BS),其能够执行相应的计算任务。由于计算资源有限,边缘服务器只能托管少量服务,从而使主机的服务必须明智地决定最大化系统性能。在本文中,我们调查了启用MEC的密集小型电池网络中的协作服务展示。提出了一种称为CSP(协作服务展示位置)的有效分散算法,其中小小区BSS网络优化了协作的服务放置决策,以解决MEC系统中的许多挑战,包括服务异质性,空间需求耦合和分散的协调。 CSP是通过利用小型电池网络上的图形着色来基于并行GIBBS采样而开发的。与传统的GIBBS采样相比,该算法显着提高了时间效率,但保证了可提供的收敛和最优性。 CSP进一步扩展以与自私BSS合作,其中BSS被允许选择“合作”或“不合作”。我们聘请了拆组游戏来调查自私BSS的战略行为,并设计联盟形成计划,以使用合并和分割规则形成稳定的BS联盟。仿真结果表明,CSP可以有效地降低合作和自私BS的边缘系统运营成本。

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