基于MAC的水下MAC协议的功率控制:一种q -学习方法

Junho Cho, F. Ahmed, Ethungshan Shitiri, Ho-Shin Cho
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引用次数: 3

摘要

水声传感器是由电池供电的,在分组传输过程中消耗了大部分有限的能量。为了节约能源,基于MACA (multiple access collision avoidance)的MAC协议降低了数据包的传输功率,而控制报文则使用最大的传输功率。但是,降低数据传输功率会使数据包容易发生碰撞。为此,针对基于maca的水下MAC协议,提出了一种基于强化学习的功率控制方案,在保持高能效的同时减少碰撞。该方案的一个关键特征是,它使传感器节点能够在不事先知道干扰的情况下防止碰撞,从而消除了额外的信令需求。仿真结果表明,该方案显著提高了基于maca的功率控制方案的能效和吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power Control for MACA-based Underwater MAC Protocol: A Q-Learning Approach
Underwater acoustic sensors are battery-powered and spend a major portion of their limited energy during packet transmissions. To conserve energy, multiple access collision avoidance (MACA)-based MAC protocols are designed to lower the data packet transmission power, while using the maximum transmission power for control packets. However, lowering the data transmission power make the data packets susceptible to collisions. In this regard, a reinforcement learning-based power control scheme is proposed for MACA-based underwater MAC protocol that can reduce collisions while maintaining high energy efficiency. A key feature of the proposed scheme is that it enables the sensor nodes to prevent collisions without any prior knowledge of the interferences, eliminating the need for additional signaling. Simulation results show that the proposed scheme significantly improves the energy efficiency and the throughput of MACA-based power control schemes.
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