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Energy-efficient cache node placement using genetic algorithm in wireless sensor networks

机译:无线传感器网络中使用遗传算法的节能缓存节点放置

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摘要

Wireless sensor network (WSN) applications are required to report events and service queries with minimum delay and minimal energy consumption. The network lifetime of a WSN can be extended if the amount of communication in the network is reduced. We can achieve this by caching useful data closer to the requesting node. Caching successfully reduces data access latency and also the number of packet transmissions in the network, thereby increasing network lifetime. However, the important aspect of caching schemes is to identify nodes that can implement caching decisions and also place such cache nodes in a way that they can provide services to as many sensor nodes as possible in their vicinity. This has led to the study of optimal deployment of these cache nodes in a WSN. We carried out experiments to demonstrate the use of a multi-objective genetic algorithm (GA) for cache node placement in a WSN. In this paper, GA optimization aims to increase two parameters: sensors per cache in charge and field coverage. We also show that the GA successfully helps in selecting sensor nodes to implement caching and request forwarding decisions. Finally, we run the Scaled Power Community Index Cooperative Caching scheme (scaPCICC) on the optimized network and compare the delay and total number of overhead messages in the network. We conclude that by reducing the number of messages in the network and reducing the data access latency, the energy consumption of the network is reduced and network lifetime is increased. The experiments were run on MATLAB and ns2.
机译:需要无线传感器网络(WSN)应用程序以最小的延迟和最小的能耗报告事件和服务查询。如果减少网络中的通信量,则可以延长WSN的网络寿命。我们可以通过将有用的数据缓存在请求节点附近来实现此目的。缓存成功地减少了数据访问延迟,并且还减少了网络中数据包传输的次数,从而延长了网络寿命。但是,缓存方案的重要方面是识别可以实施缓存决策的节点,并以可以向附近的尽可能多的传感器节点提供服务的方式放置此类缓存节点。这导致了对WSN中这些缓存节点的最佳部署的研究。我们进行了实验,以证明在WSN中使用多目标遗传算法(GA)缓存节点。在本文中,GA优化旨在增加两个参数:每个高速缓存中的传感器和现场覆盖范围。我们还表明,GA成功地帮助选择了传感器节点以实现缓存和请求转发决策。最后,我们在优化的网络上运行可扩展电源社区索引合作缓存方案(scaPCICC),并比较网络中开销消息的延迟和总数。我们得出的结论是,通过减少网络中的消息数量并减少数据访问延迟,可以减少网络的能耗并延长网络寿命。实验在MATLAB和ns2上运行。

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