SDN-based dynamic resource management and scheduling for cognitive industrial IoT

S. Chandramohan, M. Senthilkumaran
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Abstract

PurposeIn recent years, it is imperative to establish the structure of manufacturing industry in the context of smart factory. Due to rising demand for exchange of information with various devices, and huge number of sensor nodes, the industrial wireless networks (IWNs) face network congestion and inefficient task scheduling. For this purpose, software-defined network (SDN) is the emerging technology for IWNs, which is integrated into cognitive industrial Internet of things for dynamic task scheduling in the context of industry 4.0.Design/methodology/approachIn this paper, the authors present SDN based dynamic resource management and scheduling (DRMS) for effective devising of the resource utilization, scheduling, and hence successful transmission in a congested medium. Moreover, the earliest deadline first (EDF) algorithm is introduced in authors’ proposed work for the following criteria’s to reduce the congestion in the network and to optimize the packet loss.FindingsThe result shows that the proposed work improves the success ratio versus resource usage probability and number of nodes versus successful joint ratio. At last, the proposed method outperforms the existing myopic algorithms in terms of query response time, energy consumption and success ratio (packet delivery) versus number of increasing nodes, respectively.Originality/valueThe authors proposed a priority based scheduling between the devices and it is done by the EDF approach. Therefore, the proposed work reduces the network delay time and minimizes the overall energy efficiency.
基于sdn的认知工业物联网动态资源管理与调度
近年来,构建智能工厂背景下的制造业结构势在必行。由于工业无线网络与各种设备的信息交换需求不断增加,且传感器节点数量庞大,因此面临着网络拥塞和任务调度效率低下的问题。为此,软件定义网络(SDN)是IWNs的新兴技术,在工业4.0背景下,将其集成到认知工业物联网中,用于动态任务调度。设计/方法/方法在本文中,作者提出了基于SDN的动态资源管理和调度(DRMS),用于有效地设计资源利用,调度,从而在拥挤的介质中成功传输。此外,在本文中还引入了最早截止日期优先(EDF)算法,以减少网络中的拥塞和优化丢包。结果表明,本文提出的方法提高了连接成功率与资源使用概率的关系,提高了节点数与连接成功率的关系。最后,该方法在查询响应时间、能量消耗和成功率(数据包投递)与增加节点数的关系上均优于现有的近视眼算法。作者提出了一种基于优先级的设备间调度方法,并通过EDF方法实现。因此,所提出的工作减少了网络延迟时间,并使整体能源效率最小化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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