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Joint Task Offloading and Resource Allocation for Streaming Applications in Cooperative Mobile Edge Computing

IEEE Transactions on Vehicular Technology(2025)

China Mobile Research Institute | School of Cyberspace Science and Technology | School of Information and Electronics

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Abstract
Streaming applications like smart monitoring and real-time data processing are characterized by long data-collecting duration and delay stringent computation. Mobile edge computing can enable mobile devices to execute such applications more smoothly. However, achieving timely completion of streaming applications necessitates processing a flow of computation tasks in an assembly-line fashion, which requires an unprecedented system model and thus needs further study. This work addresses the above concern by investigating a scenario where multiple mobile devices run streaming tasks and offload them to a nearby BS for edge computing through a cooperative node. In this system, the duration of data collection, task offloading and edge computation together with multiuser offloading ratio and bandwidth allocation are jointly optimized to achieve low power consumption of the mobile devices and the cooperative node. The introduction of streaming tasks and cooperation mechanisms turns the task execution into multi-stage process and thus greatly exacerbate the complexity of overall solution. To this end, Dinkelbach method is first utilized for problem transformation. Subsequently, a hybrid approach of block coordinate descent (BCD) and Lagrangian multiplier method is employed to find local optimal solution when the BS has abundant computation capacity and difference of convex algorithm (DCA) is leveraged to attain convergent solution when the BS has finite computation capacity. Finally, numerical results are demonstrated to verify the effectiveness of the proposed methods and offer some insightful results about our proposed strategy.
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Cooperative mobile edge computing,streaming task,task offloading,resource allocation
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要点】:本文针对流应用在移动边缘计算中的任务卸载和资源分配问题,提出了一种联合优化方案,以降低移动设备和合作节点的能耗并保障任务及时完成。

方法】:采用Dinkelbach方法进行问题转换,并使用混合的块坐标下降(BCD)和拉格朗日乘数方法求解局部最优解,当基站计算能力有限时,利用差异凸算法(DCA)获得收敛解。

实验】:通过数值实验验证了所提方法的有效性,并展示了关于所提出策略的一些有益见解。实验中未具体提及使用的数据集名称。