Hybrid Immune Whale Differential Evolution Optimization (HIWDEO) Based Computation Offloading in MEC for IoT

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2023-11-21 DOI:10.1007/s10723-023-09705-7
Jizhou Li, Qi Wang, Shuai Hu, Ling Li
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Abstract

The adoption of User Equipment (UE) is on the rise, driven by advancements in Mobile Cloud Computing (MCC), Mobile Edge Computing (MEC), the Internet of Things (IoT), and Artificial Intelligence (AI). Among these, MEC stands out as a pivotal aspect of the 5G network. A critical challenge within the realm of MEC is task offloading. This involves optimizing conflicting factors like execution time, energy usage, and computation duration. Additionally, addressing the offloading of interdependent tasks poses another significant hurdle that requires attention. The developed models are single objective, task dependency, and computationally expensive. As a result, the Immune whale differential evolution optimization algorithm is proposed to offload the dependent tasks to the MEC with three objectives: minimizing the execution delay and reducing the energy and cost of MEC resources. The standard Whale optimization is incorporated with DE with customized mutation operations and immune system to enhance the searching strategy of Whale optimization. The proposed HIWDEO secured reduced energy and overhead of UE to execute its tasks. The comparison between the developed model and other optimization approaches shows the superiority of HIWDEO.

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基于混合免疫鲸鱼差分进化优化(HIWDEO)的物联网MEC计算卸载
在移动云计算(MCC)、移动边缘计算(MEC)、物联网(IoT)和人工智能(AI)进步的推动下,用户设备(UE)的采用率正在上升。其中,MEC作为5G网络的关键方面脱颖而出。MEC领域的一个关键挑战是任务卸载。这涉及到优化冲突因素,如执行时间、能源使用和计算持续时间。此外,解决相互依赖任务的卸载问题是另一个需要注意的重大障碍。开发的模型目标单一,任务依赖,计算成本高。为此,提出了免疫鲸鱼差分进化优化算法,以最小化执行延迟和降低MEC资源的能量和成本为目标,将相关任务卸载给MEC。将标准的Whale优化与具有自定义突变操作和免疫系统的DE相结合,增强了Whale优化的搜索策略。提出的HIWDEO确保了UE执行任务所需的能源和开销的减少。将所建立的模型与其他优化方法进行了比较,表明了HIWDEO方法的优越性。
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CiteScore
7.20
自引率
4.30%
发文量
567
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