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首页> 外文期刊>Journal of network and computer applications >Multi-objective accelerated particle swarm optimization with a container-based scheduling for Internet-of-Things in cloud environment
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Multi-objective accelerated particle swarm optimization with a container-based scheduling for Internet-of-Things in cloud environment

机译:云环境中基于集装箱的调度,多目标加速粒子群优化

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Over the last decades, cloud computing leverages the capability of Internet-of-Thing (IoT)-based applications by providing computational power as a form of a container or virtual machines (VMs). Most of the existing scheduling strategies deploy the VM instances for each task which require maximum start-up time and consumes maximum energy for processing the tasks. However, containers are a lightweight process and start in less than a second. In this paper, we develop a new energy-efficient container-based scheduling (EECS) strategy for processing various types of IoT and non-IoT based tasks with quick succession. The proposed method use accelerated particle swarm optimization (APSO) technique for finding a suitable container for each task with minimum delay. Resource scheduling is another important objective in a cloud environment for better utilization of the resources in the cloud servers. The EECS strategy can deploy the containers on an optimal cloud server with an optimal scheduling strategy. The main objectives of EECS are to minimize the overall energy consumptions and computational time of the tasks with efficient resource utilization. The effect of the control parameters of the APSO technique is investigated thoroughly. Through comparisons, we show that the proposed method performs better than the existing ones in terms of various performance metrics including computational time, energy consumption, CO2 emission, Temperature emission, and resource utilization.
机译:在过去十年中,云计算通过将计算能力作为容器或虚拟机(VM)提供计算能力来利用互联网(IOT)的应用程序。大多数现有的调度策略为每个任务部署了VM实例,每个任务需要最大的启动时间,并消耗最大能量以处理任务。然而,容器是轻量级过程,并在不到一秒钟内开始。在本文中,我们开发了一种新的节能容器的调度(EECS)策略,用于使用快速连续处理各种类型的IOT和非IOT基于任务。所提出的方法使用加速粒子群优化(APSO)技术来查找具有最小延迟的每个任务的合适容器。资源调度是云环境中的另一个重要目标,以便更好地利用云服务器中的资源。 EECS策略可以使用最佳调度策略在最佳云服务器上部署容器。 EEC的主要目标是最大限度地减少有效资源利用率的任务的整体能耗和计算时间。彻底研究了APSO技术的控制参数的效果。通过比较,我们表明该方法在各种性能度量方面表现优于现有的方法,包括计算时间,能量消耗,二氧化碳排放,温度发射和资源利用。

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