A Parallelly Implemented Hybrid Multi-Objective Efficient Persuasion of Coverage and Redundancy Programming Model for Internet of Things in 5G Networks using Hadoop

R. B, K. Kumar
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Abstract

In 5G networks, the demand for IoT devices is increasing due to their applications. With the development and widespread adoption of 5G networks, the Internet of Things (IoT) coverage issue will collide with the issue of enormous nodes. In this paper, a parallell y implemented Hybridised Mayfly and Rat Swarm Optimizer algorithm utilising Hadoop is proposed for optimising the IoT coverage and node redundancy in IoT with massive nodes, which automatically lengthens the IoT's lifecycle. Initially, parallel operation d ivides the IoT coverage problem involving massive nodes into numerous smaller problems in order to reduce the problem's scope, which are then solved using parallel Hadoop. Using the flight behaviour and mating process of mayflies, we optimise the coverage problem here. Rats' pursuing and attacking behaviours are employed to optimise the redundancy problem. Then, select the non critical nodes from the critical nodes in an optimal manner. Lastly, parallel operation effectively resolves the IoT's coverage issu e through massive nodes by strategically extending the IoT's lifespan. Using the NS2 application, the proposed method is simulated. Computation Time, Energy efficiency, Lifespan, Lifetime, and Remaining Nodes are analysed as performance metrics. The propos ed MOP Hyb MFRS IoT 5GN method achieves lower computation times of 98.38%, 92.34%, and 97.45%, higher lifetime of 89.34%, 83.12%, and 88.96%, and lower remaining time as 91.25%, 79.90%, and 92.88% compared with existing methods such as parallel genetic alg orithm spread the lifespan of internet of things on 5G networks (MPGA IoT 5GN)
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基于Hadoop并行实现的5G网络物联网混合多目标高效覆盖说服与冗余规划模型
在5G网络中,由于其应用,对物联网设备的需求正在增加。随着5G网络的发展和广泛采用,物联网(IoT)覆盖问题将与巨大节点问题发生碰撞。本文提出了一种利用Hadoop并行实现的Hybridised Mayfly and Rat Swarm Optimizer算法,用于优化大节点物联网中的物联网覆盖和节点冗余,从而自动延长物联网的生命周期。最初,并行操作d将涉及大量节点的物联网覆盖问题划分为许多较小的问题,以减小问题的范围,然后使用并行Hadoop解决问题。利用蜉蝣的飞行行为和交配过程,对覆盖问题进行了优化。利用老鼠的追逐和攻击行为来优化冗余问题。然后,以最优方式从关键节点中选择非关键节点。最后,并行运行通过战略性地延长物联网的生命周期,有效地解决了物联网通过大规模节点的覆盖问题。利用NS2应用程序对该方法进行了仿真。计算时间、能效、寿命、生存期和剩余节点作为性能指标进行分析。与并行遗传算法等现有方法相比,本文提出的MOP Hyb MFRS IoT 5GN方法的计算次数分别为98.38%、92.34%和97.45%,寿命分别为89.34%、83.12%和88.96%,剩余时间分别为91.25%、79.90%和92.88%,延长了5G网络(MPGA IoT 5GN)的物联网寿命。
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