RPL Protocol Enhancement using Artificial Neural Network (ANN) for IoT Applications

S. Kuwelkar, H. G. Virani
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引用次数: 1

Abstract

In near future, IoT will revolutionize human lifestyle. IoT is categorized as low power lossy network since it employs devices with constrained power, memory and processing capability which are interconnected over lossy links. The efficiency of such networks largely depends on the design of the routing protocol. To cater specific routing needs of such networks, the IETF has proposed IPv6 routing protocol for LLNs (RPL) as a de facto routing standard. In RPL, routing decision is based on a single parameter which leads to the selection of inefficient paths and affects network lifetime. This work primarily focuses on improving the RPL protocol by overcoming the single metric limitation. In this work, a novel version of RPL is proposed which uses a Multilayer Feed Forward Neural Network to make the routing decision based on multiple metrics. Four routing parameters namely, hop count, delay, residual energy and link quality of candidate neighbors are fed as input to ANN in order to compute the fitness of each candidate and the one with highest value is designated as the most suitable parent to route packets towards sink node. This technique lowers energy consumption by 15%, improves Packet Delivery Ratio by 3%, lowers delay by 17% and reduces the control overhead by 48% as compared to standard RPL implementation.
物联网应用中使用人工神经网络(ANN)的RPL协议增强
在不久的将来,物联网将彻底改变人类的生活方式。物联网被归类为低功耗损耗网络,因为它使用的设备具有受限的功率、内存和处理能力,这些设备通过有损链路相互连接。这种网络的效率很大程度上取决于路由协议的设计。为了满足此类网络的特定路由需求,IETF提出了用于lln的IPv6路由协议(RPL)作为事实上的路由标准。在RPL中,路由决策是基于单一参数的,这会导致选择低效的路径并影响网络的生存时间。这项工作主要集中在通过克服单度量限制来改进RPL协议。在这项工作中,提出了一种新的RPL版本,该版本使用多层前馈神经网络基于多个指标进行路由决策。将候选邻居的跳数、时延、剩余能量和链路质量四个路由参数作为输入输入到人工神经网络中,计算每个候选邻居的适应度,并将值最高的一个指定为最适合的父节点,将数据包路由到sink节点。与标准RPL实现相比,该技术降低了15%的能耗,提高了3%的数据包传输率,降低了17%的延迟,减少了48%的控制开销。
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