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Joint Optimization of Computation Offloading and Resource Allocation in C-RAN With Mobile Edge Computing Using Evolutionary Algorithms

作     者:Singh, Sumit Kim, Dong Ho 

作者机构:Seoul Natl Univ Sci & Technol Dept Integrated IT Engn Seoul 01811 South Korea Seoul Natl Univ Sci & Technol Dept IT Media Engn Seoul 01811 South Korea 

出 版 物:《IEEE ACCESS》 (IEEE Access)

年 卷 期:2023年第11卷

页      面:112693-112705页

核心收录:

基  金:Institute of Information and Communications Technology Planning and Evaluation (IITP) - Korean Government [Ministry of Science and ICT (MSIT)] [2021-0-00368] 

主  题:Computation offloading genetic algorithm binary PSO profit in MEC 

摘      要:Mobile Edge Computing has been widely recognized as a key enabler for new latency-sensitive applications on resource constrained mobile devices. The objective to offload a computationally intensive task to a cloud server is in general intended to reduce the system s energy consumption and/or latency. In this paper, we attempt to examine how profitable computation offloading is from a service provider s perspective. The joint optimization of radio and computing resources along with offloading decisions results in a mixed integer nonlinear optimization problem which belongs to the class of NP-hard problems. To counter this challenge, we decouple the offloading decision from the resource allocation problem. Initially, approximately optimal offloading decisions are determined using evolutionary algorithms such as genetic algorithms and binary particle swarm optimization algorithms. After several iterations of the evolutionary process to make offloading decisions, the optimal solution is ultimately obtained that performs resource allocation based on exact calculation of the profit value. For faster execution of the evolutionary algorithm, instead of using an optimization solver to find the exact solution, we use a novel approach to seeding the initial population and a regression-based machine learning method to predict the optimal resource allocation values to minimize the objective function evaluation time. According to the simulations performed as part of this study, the proposed evolutionary algorithms outperform existing spectral efficiency-based offloading algorithm in terms of profitability, with shorter execution times as well. The effects of resource availability and the parameters of the algorithm on the profitability of offloading are also examined.

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