SSKHOA: Hybrid Metaheuristic Algorithm for Resource Aware Task Scheduling in Cloud-fog Computing

M. S. Kumar, K. G. Reddy, Rakesh Kumar Donthi
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Abstract

Cloud fog computing is a new paradigm that combines cloud computing and fog computing to boost resource efficiency and distributed system performance. Task scheduling is crucial in cloud fog computing because it decides the way computer resources are divided up across tasks. Our study suggests that the Shark Search Krill Herd Optimization (SSKHOA) method be incorporated into cloud fog computing's task scheduling. To enhance both the global and local search capabilities of the optimization process, the SSKHOA algorithm combines the shark search algorithm and the krill herd algorithm. It quickly explores the solution space and finds near-optimal work schedules by modelling the swarm intelligence of krill herds and the predator-prey behavior of sharks. In order to test the efficacy of the SSKHOA algorithm, we created a synthetic cloud fog environment and performed some tests. Traditional task scheduling techniques like LTRA, DRL, and DAPSO were used to evaluate the findings. The experimental results demonstrate that the SSKHOA outperformed the baseline algorithms in terms of task success rate increased 34%, reduced the execution time by 36%, and reduced makespan time by 54% respectively.
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SSKHOA:云雾计算中资源感知任务调度的混合元搜索算法
云雾计算是一种结合云计算和雾计算的新模式,可提高资源效率和分布式系统性能。任务调度在云雾计算中至关重要,因为它决定了计算机资源在任务间的分配方式。我们的研究建议在云雾计算的任务调度中采用鲨鱼搜索鱼群优化(SSKHOA)方法。为了增强优化过程的全局和局部搜索能力,SSKHOA 算法结合了鲨鱼搜索算法和磷虾群算法。它通过模拟磷虾群的群集智能和鲨鱼的捕食-猎物行为,快速探索解空间并找到接近最优的工作计划。为了测试 SSKHOA 算法的有效性,我们创建了一个合成云雾环境并进行了一些测试。我们使用了传统的任务调度技术,如 LTRA、DRL 和 DAPSO 来评估结果。实验结果表明,SSKHOA 在任务成功率提高 34%、执行时间缩短 36%、任务间隔时间缩短 54% 等方面均优于基线算法。
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