Energy Efficient Geocasting Based on Q-Learning for Wireless Sensor Networks

Neng-Chung Wang, Young-Long Chen, Yung-Fa Huang, Li-Cheng Huang, Tzu-Yi Wang, Hsu-Yao Chuang
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引用次数: 1

Abstract

In this paper, we propose two energy efficient geocasting protocols based on Q-learning for wireless sensor networks (WSNs), called FERMA-QL and FER-MA-QL-E. We utilize the theorem of Fermat point to find Fermat points in geocasting, the node which is the closest to the Fermat points is selected as the relay nodes. Then, we establish the shared path among gateways, relay nodes and base station by Q-learning for data transmission. In FERMA-QL, the reward is given by the reciprocal of the distance between the received node and the destination node In FERMA-QL-E, the reward is given by the remaining energy of the received node divided by the distance between itself and the destination node. Sensors utilize the shared path to forward their data to achieve goal of reduce energy consumption. Simulation result shows that the proposed FERMA-QL and FERMA-QL-E can efficiently extend the life-time of the WSN.
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基于q -学习的无线传感器网络节能地理投影
在本文中,我们提出了两种基于q -学习的无线传感器网络(WSNs)节能地理投射协议,称为FERMA-QL和FER-MA-QL-E。利用费马点定理寻找地质浇铸中的费马点,选取离费马点最近的节点作为中继节点。然后,通过q学习建立网关、中继节点和基站之间的共享路径,实现数据传输。在FERMA-QL中,奖励是接收节点与目的节点之间距离的倒数。在FERMA-QL- e中,奖励是接收节点的剩余能量除以自身与目的节点之间的距离。传感器利用共享路径转发数据,达到降低能耗的目的。仿真结果表明,所提出的FERMA-QL和FERMA-QL- e能够有效地延长无线传感器网络的寿命。
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