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Reinforcement learning-based real time search algorithm for routing optimisation in wireless sensor networks using fuzzy link cost estimation

机译:基于增强学习的实时搜索算法,用于模糊传感器成本估算的无线传感器网络路由优化

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摘要

Internet of things is a technological advancement of wireless sensor networks (WSNs) which are characterised by highly complex, large scale, heterogeneous, dynamically changing and asymmetric networks. Such constraints make routing in WSNs a difficult task. This paper introduces fuzzy link cost estimation-based real time search routing algorithm (fuzzy RTS) in which link cost estimation is obtained from physical and MAC layer parameters like residual energy, packet drop rate and RSSI. Its performance has been evaluated with traditional reinforcement learning-based algorithms like real time search, adaptive tree, ant routing and constrained flooding algorithms on the basis of metrics like throughput, loss rate, success rate, energy consumption, energy efficiency and node battery life. The simulation results reveal that fuzzy RTS algorithm is most appropriate reinforcement learning-based routing algorithm among given algorithms for ensuring energy efficient and QoS aware routing in dynamically changing, asymmetric and unreliable environment of WSNs.
机译:物联网是无线传感器网络(WSN)的一项技术进步,其特征是高度复杂,大规模,异构,动态变化和不对称的网络。这样的限制使得WSN中的路由成为一项艰巨的任务。本文介绍了基于模糊链路成本估计的实时搜索路由算法(模糊RTS),其中链路成本估计是从物理和MAC层参数(例如剩余能量,丢包率和RSSI)获得的。已根据吞吐量,丢失率,成功率,能源消耗,能源效率和节点电池寿命等指标,使用传统的基于增强学习的算法(例如实时搜索,自适应树,蚂蚁路由和约束泛洪算法)对它的性能进行了评估。仿真结果表明,在给定算法中,模糊RTS算法是最合适的基于增强学习的路由算法,用于在动态变化,非对称和不可靠的WSN环境中确保能源高效和QoS感知路由。

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