信道访问控制代替随机退避算法

Takashi Imanaka, M. Ohta, M. Taromaru
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引用次数: 0

摘要

在执行载波感知的无线通信系统中,由于在传输节点之间同时传输,经常发生分组冲突,因为传输在信道空闲的那一刻就开始了。在无线局域网和其他系统中,后退算法用于避免同时传输,但通常使用的二进制后退由于随机后退导致等待时间过长。因此,本文提出了一种新的基于强化学习的信道访问控制方法。仿真结果表明了该方法的有效性。
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Channel Access Control Instead of Random Backoff Algorithm
In wireless communication systems that perform carrier sense, packet collisions due to simultaneous transmission between transmitting nodes frequently occur because transmission starts the moment the channel becomes idle. In wireless LANs and other systems, backoff algorithms are used to avoid simultaneous transmission, but the commonly used binary backoff results in excessively large waiting times due to random backoff. Therefore, this paper proposes a new channel access control method using reinforcement learning. Simulation evaluation shows the effectiveness of the proposed method by the characteristics of the transmission success rate.
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