基于强化学习的水下传感器网络节能路径建立方法

K. Shruthi, C. Kavitha
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引用次数: 0

摘要

水声传感器网络在环境监测、海底勘探、灾害预防、地震监测、辅助导航、矿山侦察等许多领域都有应用。在水下应用中,许多问题都得到了解决。要解决的重要问题之一是路由。路由是所有网络的基本任务。找到发送数据包到目的地的最佳路径是至关重要的。由于水下环境的不变性,在水下网络中路由是一项困难的任务。许多算法都是为了找到到达目的地的最佳路径而设计的。在本文中,我们提出了一种基于强化学习的方法,通过考虑节点的能量和水下环境来建立到达目的地的最佳路径。在基于RL的方法中,根据水下环境和节点的剩余能量选择邻居节点。该算法计算每个动作的奖励,并根据总奖励建立最佳路径。然后使用到接收器的最佳路径路由数据包。作者得出结论,基于强化学习的方法通过考虑节点的能量提供了一条更好的到达目的地的路径。
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Reinforcement learning-based approach for establishing energy-efficient routes in underwater sensor networks
Underwater acoustic sensor networks find their applications in many areas including Environmental monitoring, Undersea explorations, Disaster prevention, Seismic monitoring, Assisted navigation, Mine reconnaissance, and many more. Many of the issues are addressed and resolved in underwater applications. One of the important issues to be addressed is routing. Routing is an essential task in all the networks. Finding the best path to send packets to the destination is of utmost importance. Routing in underwater networks is a difficult task due to invariant conditions of the underwater environment. Many of the algorithms have been designed to find the best path to the destination. In this paper, we propose a Reinforcement learning-based approach to establish the best path to the destination by considering the energy of the nodes and underwater environment. In RL based approach, a neighbor node is selected based on the underwater environment and the remaining energy of the nodes. The algorithm calculates the reward for every action and the best path is established based on total reward. Packets are then routed using the best path to the sink. The authors conclude RL based approach provides a better path to a destination by taking into consideration the energy of the nodes.
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