A Novel Data Aggregation Mechanism using Reinforcement Learning for Cluster Heads in Wireless Multimedia Sensor Networks

Q2 Computer Science
J. Uddin
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引用次数: 1

Abstract

Wireless multimedia sensor networks (WMSNs) are getting used in numerous applications nowadays. Many robust energy-efficient routing protocols have been proposed to handle multimedia traffic-intensive data like images and videos in WMSNs. It is a common trend in the literature to facilitate a WMSN with numerous sinks allowing cluster heads (CHs) to distribute the collected data to the adjacent sink node for delivery overhead mitigation. Using multiple sink nodes can be expensive and may incur high complexity in routing. There are many single-sink cluster-based routing protocols for WMSNs that lack in introducing optimal path selection among CHs. As a result, they suffer from transmission and queueing delay due to high data volume. To address these two conflicting issues, we propose a data aggregation mechanism based on reinforcement learning (RL) for CHs (RL-CH) in WMSN. The proposed method can be integrated to any of the cluster-based routing protocol for intelligent data transmission to sink node via cooperative CHs. Proposed RL-CH protocol performs better in terms of energy-efficiency, end-to-end delay, packet delivery ratio, and network lifetime. It gains 17.6% decrease in average end-to-end delay and 7.7% increase in PDR along with a network lifetime increased to 3.2% compared to the evolutionary game-based routing protocol which has been used as baseline.
无线多媒体传感器网络中基于簇头强化学习的数据聚合机制
无线多媒体传感器网络(WMSN)在当今的许多应用中得到了广泛的应用。已经提出了许多鲁棒的节能路由协议来处理多媒体业务密集型数据,如WMSN中的图像和视频。在文献中,促进具有多个汇点的WMSN是一种常见的趋势,允许簇头(CH)将收集的数据分发到相邻的汇点节点,以减轻传输开销。使用多个汇聚节点可能是昂贵的,并且可能导致路由的高复杂性。有许多用于WMSN的基于单宿集群的路由协议缺乏在CH之间引入最优路径选择。结果,由于高数据量,它们遭受传输和排队延迟。为了解决这两个相互冲突的问题,我们提出了一种基于强化学习(RL)的WMSN中CH(RL-CH)的数据聚合机制。所提出的方法可以集成到任何基于集群的路由协议中,用于通过协作CH向汇聚节点进行智能数据传输。所提出的RL-CH协议在能量效率、端到端延迟、分组传递率和网络寿命方面表现更好。与用作基线的基于进化游戏的路由协议相比,它的平均端到端延迟减少了17.6%,PDR增加了7.7%,网络寿命增加到3.2%。
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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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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