Toward Intelligent Reconfiguration of RPL Networks using Supervised Learning

Moussa Aboubakar, Mounir Kellil, A. Bouabdallah, P. Roux
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引用次数: 9

Abstract

Designing scalable and energy-efficient routing protocols for IoT low power networks is a particularly challenging problem. The IETF ROLL Working Group has defined and standardized an IPv6 routing protocol for IoT low power networks called RPL (IPv6 Routing Protocol for Low-Power and Lossy Networks) [1]. This protocol builds and maintains dynamic routes among network devices based on various objective functions (OFs) that exploit different network metrics for parent node selection (e.g., ETX-based [2], Energy-based [3]), etc.). With such OFs, RPL organizes the network topology as a Destination Oriented Directed Acyclic Graph (DODAG). However, the performance of RPL may be affected by frequent network topology changes, which may be caused by different factors like node battery depletion, link quality degradation, etc. Indeed, in such situations, the OF functions do not guarantee optimal maintenance of the RPL tree. To address this issue, this paper describes how Supervised Learning can be leveraged to improve RPL performance and energy efficiency by mitigating RPL DODAG instability when the network conditions, used by the RPL’s OF functions, change frequently. We use an offline supervised learning to provide the optimal value of the transmission range (the maximal distance to which a node can send its data to another one) that mitigates the instability of the RPL network, and hence minimizes the energy consumption. The preliminary simulation results show that our proposal can improve network performance and increase network lifetime.
基于监督学习的RPL网络智能重构研究
为物联网低功耗网络设计可扩展且节能的路由协议是一个特别具有挑战性的问题。IETF ROLL工作组为物联网低功耗网络定义并标准化了IPv6路由协议,称为RPL(低功耗和有损网络IPv6路由协议)[1]。该协议基于各种目标函数(OFs)在网络设备之间建立和维护动态路由,这些目标函数(OFs)利用不同的网络指标来选择父节点(例如,基于etx的[2],基于energy的[3])等)。通过这样的OFs, RPL将网络拓扑组织为面向目的地的有向无环图(DODAG)。然而,RPL的性能可能会受到频繁的网络拓扑变化的影响,这些变化可能是由节点电池耗尽、链路质量下降等不同因素引起的。实际上,在这种情况下,OF函数并不能保证RPL树的最佳维护。为了解决这个问题,本文描述了当RPL的OF函数使用的网络条件频繁变化时,如何利用监督学习来减轻RPL DODAG不稳定性,从而提高RPL的性能和能源效率。我们使用离线监督学习来提供传输范围的最优值(一个节点可以将其数据发送到另一个节点的最大距离),以减轻RPL网络的不稳定性,从而使能量消耗最小化。初步仿真结果表明,该方案可以提高网络性能,延长网络寿命。
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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