首页> 外文会议>IEEE International Conference on Communications >Green Fog Computing Resource Allocation Using Joint Benders Decomposition, Dinkelbach Algorithm, and Modified Distributed Inner Convex Approximation
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Green Fog Computing Resource Allocation Using Joint Benders Decomposition, Dinkelbach Algorithm, and Modified Distributed Inner Convex Approximation

机译:使用联合Benders分解,Dinkelbach算法和改进的分布式内部凸近似方法进行绿色雾计算资源分配

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摘要

Fog computing is a promising approach to alleviate the computation burden in traditional mobile networks to meet the increasing application demands. Such a complicated system is typically challenging and requires distributed solutions. In this paper, we investigate the resource allocation problem in fog computing to maximize the utility function from the energy efficiency perspective. The formulated problem is a mix integer nonlinear programming problem, which is NP-hard. We adopt a modified distributed inner convex approximation (NOVA) to approximate the problem first. Then, the Benders decomposition algorithm is applied to deal with integer variables. In the subproblem, we use the Dinkelbach algorithm to transform the fractional programming into an equivalent parametric subtractive form. Furthermore, the subproblem is decomposed distributedly, which enables users to update without information exchange. The simulation results indicate the effectiveness of the proposed algorithm.
机译:雾计算是减轻传统移动网络中的计算负担以满足日益增长的应用需求的一种有前途的方法。这种复杂的系统通常具有挑战性,需要分布式解决方案。本文从能源效率的角度研究雾计算中的资源分配问题,以最大化效用函数。拟定的问题是一个混合整数非线性规划问题,它是NP难的。我们采用改进的分布式内凸近似(NOVA)首先对问题进行近似。然后,应用Benders分解算法处理整数变量。在子问题中,我们使用Dinkelbach算法将分数编程转换为等效的参数减法形式。此外,子问题可以分布式分解,这使用户无需进行信息交换即可进行更新。仿真结果表明了该算法的有效性。

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