A Task Allocation Framework for Large-Scale Mobile Edge Computing

Xinghan Wang, Xiaoxiong Zhong, Yanbin Zheng, Xiaoke Ma, Tingting Yang, Genglin Zhang
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Abstract

We consider the problem of intelligent and efficient task allocation mechanism in large-scale mobile edge computing (MEC), which can reduce delay and energy consumption in a parallel and distributed optimization. In this paper, we study the joint optimization model to consider cooperative task management mechanism among mobile terminals (MT), macro cell base station (MBS), and multiple small cell base station (SBS) for large-scale MEC applications. We propose a parallel multi-block Alternating Direction Method of Multipliers (ADMM) based method to model both requirements of low delay and low energy consumption in the MEC system which formulates the task allocation under those requirements as a nonlinear 0-1 integer programming problem. To solve the optimization problem, we develop an efficient combination of conjugate gradient, Newton and linear search techniques based algorithm with Logarithmic Smoothing (for global variables updating) and the Cyclic Block coordinate Gradient Projection (CBGP, for local variables updating) methods, which can guarantee convergence and reduce computational complexity with a good scalability. Numerical results demonstrate the effectiveness of the proposed mechanism and it can effectively reduce delay and energy consumption for a large-scale MEC system.
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面向大规模移动边缘计算的任务分配框架
研究了大规模移动边缘计算(MEC)中智能高效的任务分配机制问题,该机制可以在并行和分布式优化中减少延迟和能耗。本文研究了大规模MEC应用中考虑移动终端(MT)、宏蜂窝基站(MBS)和多个小蜂窝基站(SBS)之间协同任务管理机制的联合优化模型。本文提出了一种基于并行多块乘法器交替方向法(ADMM)的MEC系统低延迟和低能耗要求建模方法,并将此要求下的任务分配问题表述为一个非线性0-1整数规划问题。为了解决优化问题,我们开发了一种基于共轭梯度、牛顿和线性搜索技术的高效组合算法,并结合对数平滑(用于全局变量更新)和循环块坐标梯度投影(CBGP,用于局部变量更新)方法,可以保证收敛性并降低计算量,具有良好的可扩展性。数值结果表明了该机制的有效性,可以有效地降低大型MEC系统的延迟和能耗。
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