1. Combining routing and virtual machine selection algorithm based on multi‐hop cloud wireless access network of mobile edge computing
- Author
-
Yilin Shao
- Subjects
cellular radio ,separate resource allocation ,optimisation ,wireless self-organising network ,Computer science ,mobile computing ,Distributed computing ,virtual machines ,Mobile computing ,resource allocation ,Energy Engineering and Power Technology ,Cloud computing ,joint optimisation problem ,02 engineering and technology ,computer.software_genre ,mobile devices ,Base station ,communication resources ,improved krill herd algorithm ,0202 electrical engineering, electronic engineering, information engineering ,edge computing resources ,multihop path ,Selection algorithm ,virtual machine selection algorithm ,Edge computing ,Radio access network ,convergence ,Mobile edge computing ,base station ,business.industry ,cloud computing ,General Engineering ,020206 networking & telecommunications ,radio access networks ,021001 nanoscience & nanotechnology ,wireless resources ,task delay ,multihop cloud ,lcsh:TA1-2040 ,Virtual machine ,high transmission delays ,cloud radio access network ,elite selection ,mobile edge computing ,lcsh:Engineering (General). Civil engineering (General) ,0210 nano-technology ,business ,computer ,Software - Abstract
For the problem that mobile devices that are far away from the base station obtain limited wireless resources, which causes high transmission delays, the study proposes a multi-hop path to assist users who are far away from the base station to use edge computing resources. And it combines cloud radio access network and wireless self-organising network. The modelling aims to minimise the total energy consumption under the constraints of task delay considering the mobility of mobile devices. Meanwhile, it selects the joint optimisation problem of the path for data transmission and the virtual machine for calculation. This study also introduces the krill herd algorithm and analyses its advantages and disadvantages. The author enhances the global search ability of the algorithm by defining perturbation factors in the random diffusion behaviour and introduces a new strategy of elite selection and retention into the iterative process to improve the convergence accuracy. Finally, the improved krill herd algorithm is used to solve the joint optimisation problem and a better allocation result than the separate resource allocation of calculation and communication is obtained. The experiment proves that the selection algorithm combining virtual machine and routing proposed in this study can achieve the expected results.
- Published
- 2020
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