An Optimal Clustering-Based Congestion-Aware Multipath Routing Mechanism in WSN Using Hybrid Optimization and Adaptive Deep Network

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS
S. Parthiban, C. Sivasankar, V. Sarala, U. Samson Ebenezar, Moorthy Agoramoorthy
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Abstract

Wireless Sensor Networks (WSNs) are currently considered an effective distributed sensing technology that boosts the performance of integrated devices and wireless communication. Though WSN offers a novel opportunity for establishing the foundation for utilizing ubiquitous and pervasive computing, it faces some kinds of barriers and difficulties, such as low energy efficiency, data packet loss, and network latency. Especially due to repeatedly altered network design and congestion problems, it influences both network bandwidth utilization as well as efficiency. Therefore, in this work, an effectual congestion-aware multipath routing approach is implemented. The motivation behind this work is to resolve the critical issue of congestion-aware routing in WSNs, which is significant for effective data transmission as well as network performance. The enhancing demand for real-time data processing and transmission in WSNs has resulted in congestion-based issues such as energy depletion, delay, and packet loss. The conventional routing approaches mostly concentrate on optimizing single performance measures, avoiding the complex interplay among factors such as routing congestion, energy consumption, delay, and distance. To resolve these issues, the developed work suggests a Hybrid Heuristic-based Crayfish and Kookaburra Optimization Strategy (HH-CKOS), which comprises the Crayfish Optimization Algorithm (COA) and the Kookaburra Optimization Algorithm (KOA). The developed HH-CKOS algorithm chooses the Cluster Head (CH) from the node's group to enhance the performance of distance, delay, residual energy, energy consumption, load, path loss, and routing congestion. Furthermore, the Adaptive Deep Temporal Convolution Network (ADTCN) model is developed for monitoring the congestion and providing congestion-aware routing, where the parameters are tuned by the developed HH-CKOS algorithm to increase the performance. Finally, the developed system provides a congestion-detected outcome. At last, the performance of the developed system is explored and evaluated with numerous conventional systems and proves its superiority.

Abstract Image

基于混合优化和自适应深度网络的WSN中最优聚类感知拥塞多路径路由机制
无线传感器网络(WSNs)是一种有效的分布式传感技术,可以提高集成设备和无线通信的性能。尽管无线传感器网络为建立普适计算和普适计算的基础提供了一个新的机会,但它也面临着一些障碍和困难,如低能效、数据包丢失和网络延迟。特别是由于反复更改网络设计和拥塞问题,它既影响网络带宽的利用率,也影响网络效率。因此,在这项工作中,实现了一种有效的拥塞感知多路径路由方法。这项工作背后的动机是解决wsn中拥塞感知路由的关键问题,这对有效的数据传输和网络性能具有重要意义。无线传感器网络对实时数据处理和传输的需求不断提高,导致了能量消耗、延迟和丢包等拥塞问题。传统的路由方法主要集中于优化单一的性能指标,避免了路由拥塞、能耗、延迟和距离等因素之间复杂的相互作用。为了解决这些问题,本文提出了一种基于启发式的小龙虾和笑翠鸟混合优化策略(hh - kcos),该策略包括小龙虾优化算法(COA)和笑翠鸟优化算法(KOA)。提出的HH-CKOS算法从节点组中选择簇头(CH)来提高距离、延迟、剩余能量、能量消耗、负载、路径损失和路由拥塞的性能。此外,开发了自适应深度时序卷积网络(ADTCN)模型,用于监测拥塞并提供感知拥塞的路由,其中参数通过所开发的hh - kcos算法进行调整以提高性能。最后,开发的系统提供了一个拥堵检测结果。最后,对所开发系统的性能进行了探讨,并与众多常规系统进行了对比,证明了其优越性。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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