Differential Scale based Multi-objective Task Scheduling and Computational Offloading in Fog Networks

M. Saxena, Sudhir Kumar
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Abstract

Cloud computing suffers from various challenging issues in Internet of Things (IoT) networks like real-time response, energy-efficient execution, and cost of computation. Fog is an emerging distributed computing paradigm which is useful for delay-sensitive tasks in IoT network. An offloading strategy decides where to offload the task and a task scheduling strategy chooses an appropriate fog node based on the requirements of the task while meeting the quality of services (QoS) criteria. Although the computational offloading and task scheduling problem has been widely studied, there is very limited research on delay-energy tradeoff. We propose a fog network that follows an M/M/c queue for computational offloading and a differential scale-based Best Worst Method (BWM) for computation of optimal weights in multi-objective task scheduling. The optimization problem minimizes the execution delay while meeting QoS criteria. The numerical experiments show the efficacy for the different QoS criteria.
基于差分尺度的雾网络多目标任务调度与计算卸载
云计算在物联网(IoT)网络中面临各种具有挑战性的问题,如实时响应、节能执行和计算成本。雾是一种新兴的分布式计算范式,它对物联网网络中的延迟敏感任务非常有用。卸载策略决定任务的卸载位置,任务调度策略根据任务的需求选择合适的雾节点,同时满足服务质量(QoS)标准。尽管计算卸载和任务调度问题已经得到了广泛的研究,但对延迟-能量权衡的研究却非常有限。在多目标任务调度中,我们提出了一种基于M/M/c队列的雾网络计算卸载,以及一种基于微分尺度的最优最差方法(BWM)计算最优权重。优化问题使执行延迟最小化,同时满足QoS标准。数值实验表明了不同QoS准则的有效性。
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