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Dynamic fuzzy logic and reinforcement learning for adaptive energy efficient routing in mobile ad-hoc networks

机译:移动自组织网络中自适应节能路由的动态模糊逻辑和强化学习

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In this paper, a dynamic fuzzy energy state based AODV (DFES-AODV) routing protocol for Mobile Ad-hoc NETworks (MANETs) is presented. In DFES-AODV route discovery phase, each node uses a Mamdani fuzzy logic system (FLS) to decide its Route REQuests (RREQs) forwarding probability. The FLS inputs are residual battery level and energy drain rate of mobile node. Unlike previous related-works, membership function of residual energy input is made dynamic. Also, a zero-order Takagi Sugeno FLS with the same inputs is used as a means of generalization for state-space in SARSA-AODV a reinforcement learning based energy-aware routing protocol. The simulation study confirms that using a dynamic fuzzy system ensures more energy efficiency in comparison to its static counterpart. Moreover, DFES-AODV exhibits similar performance to SARSA-AODV and its fuzzy extension FSARSA-AODV. Therefore, the use of dynamic fuzzy logic for adaptive routing in MANETs is recommended. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于移动自组网(MANET)的基于动态模糊能量状态的AODV(DFES-AODV)路由协议。在DFES-AODV路由发现阶段,每个节点都使用Mamdani模糊逻辑系统(FLS)来确定其路由请求(RREQ)转发概率。 FLS输入是电池剩余电量和移动节点的能量消耗率。与以前的相关工作不同,剩余能量输入的隶属函数是动态的。同样,具有相同输入的零阶高木Sugeno FLS也被用作SARSA-AODV中基于状态增强的能量感知路由协议的状态空间泛化方法。仿真研究证实,与静态对等系统相比,使用动态模糊系统可确保更高的能源效率。此外,DFES-AODV与SARSA-AODV及其模糊扩展FSARSA-AODV表现出相似的性能。因此,建议将动态模糊逻辑用于MANET中的自适应路由。 (C)2015 Elsevier B.V.保留所有权利。

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