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Context-Aware TDD Configuration and Resource Allocation for Mobile Edge Computing

机译:移动边缘计算的上下文感知TDD配置和资源分配

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Mobile edge computing (MEC) supporting localized context awareness creates a new technological frontier for 5G and beyond. Due to very asymmetric traffic related to MEC and the time division duplexing (TDD) system, we efficiently exploit the networking and computing functionalities for TDD orthogonal frequency division multiple access (TDD-OFDMA) technology supporting multiple services. The primary technical challenge of TDD-OFDMA systems lies in dynamic configuring based on the unknown characteristics of future traffic, i.e., the information lag. Therefore, a model-free online TDD configuration scheme is proposed based on context analysis and multi-armed bandit (MAB) optimization. The characteristics of future traffic are predicted by the context-aware MEC computing, so that TDD configuration is novelly modeled as a contextual MAB problem. Solving MAB by the contextual upper-confidence-bound, TDD configuration can be dynamically adjusted according to network traffic. To simultaneously reduce the energy consumption and makespan of mobile devices (MDs), a greedy resource allocation (GRA) embedded in the TDD configuration is further developed to select MDs and allocate resources. GRA algorithm decomposes the complex multi-factor coupling non-convex problem into a series of convex sub-problems, thereby asymptotically obtaining the selection and allocation with polynomial time complexity. Simulations justify significant performance gain in mobile networking and MEC.
机译:支持本地化背景感知的移动边缘计算(MEC)为5G及以后创建了一种新的技术前沿。由于与MEC和时分双工(TDD)系统相关的非常不对称的业务,我们有效利用支持多个服务的TDD正交频分多址(TDD-OFDMA)技术的网络和计算功能。 TDD-OFDMA系统的主要技术挑战是基于未知流量的未知特征的动态配置,即信息滞后。因此,提出了一种基于上下文分析和多武装强盗(MAB)优化的无模型在线TDD配置方案。通过上下文感知MEC计算预测未来流量的特征,使得TDD配置是新颖的建模作为上下文MAB问题。通过上下文的上置信地求解MAB,可以根据网络流量动态调整TDD配置。为了同时降低移动设备的能量消耗和MapSpan(MDS),还开发了嵌入在TDD配置中的贪婪资源分配(GRA)以选择MD和分配资源。 GRA算法将复杂的多因素耦合非凸面问题分解成一系列凸子问题,从而渐近地获得了多项式时间复杂度的选择和分配。模拟可以证明在移动网络和MEC中的显着性能收益。

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