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Relay Nodes Selection Using Reinforcement Learning

机译:继电器节点选择使用加强学习

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摘要

In IoT networks, the nodes work cooperatively. They receive data packets and re-transmit to the sink node (or fusion node) via multiple relay nodes. In order to reduce the loss of packets as well as power consumption, it is important to transmit data packet successfully and find an optimal path from source node to sink node. Relay node selection is one of key research challenges in IoT networks. The reinforcement learning (RL) deals with sequential decision making problem under uncertainty. The goal of sequential decision making problem is to select actions to maximize long term rewards. The RL has emerged as a powerful method for many different areas. In this paper, relay node selection problem in IoT networks with channel measurement data is formulated as a Markov decision process (MDP) problem. The relay node selection problem is solved using Q learning when a local channel measurement map is given. We find an optimal relay node selection path.
机译:在IOT网络中,节点协同工作。 它们通过多个中继节点接收数据分组并重新发送到宿节点(或融合节点)。 为了减少数据包的丢失以及功耗,重要的是要成功传输数据包并从源节点到宿节点找到最佳路径。 中继节点选择是IOT网络中的关键研究挑战之一。 强化学习(RL)处理不确定性下的连续决策问题。 序贯决策问题的目标是选择动作来最大化长期奖励。 RL已成为许多不同区域的强大方法。 在本文中,配制了具有信道测量数据的IOT网络中的中继节点选择问题作为马尔可夫决策过程(MDP)问题。 当给出本地通道测量图时,使用Q学习解决中继节点选择问题。 我们发现最佳中继节点选择路径。

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