水下信道可靠性对机器学习优化的框架式阿罗哈 MAC 协议影响的仿真分析

Aleksa Albijanic, S. Tomovic, I. Radusinović
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引用次数: 0

摘要

在水下声学传感器网络(UASN)中,水下声学信道的不可预测性给可靠通信带来了巨大挑战。传统的介质访问控制(MAC)协议是为更稳定的陆地环境设计的,在这种情况下难以有效执行。本文评估了 UW-ALOHA-Q 的性能,这是一种基于强化学习 (RL) 的 MAC 协议,专为 UASN 而设计,重点关注其在面对水下信道固有的不稳定性时的适应性和性能--这是之前的评估中没有深入研究的方面。利用 DESERT 水下模拟器,我们研究了信道条件对 UW-ALOHA-Q 学习机制有效性的影响。结果表明,UW-ALOHA-Q 在信道利用率方面优于 ALOHA-CS 和 TDMA 等传统协议,但在高度不可靠的信道条件下实现收敛面临挑战。我们的研究强调了基于 RL 的 MAC 协议在提高 UASN 的鲁棒性和效率方面的潜力,同时也确定了进一步研究 RL 方法的关键领域,以应对水下环境的独特挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulation Analysis of the Impact of Underwater Channel Reliability on Machine Learning-Optimized Framed-Aloha MAC protocols
In underwater acoustic sensor networks (UASNs), the unpredictable nature of the underwater acoustic channel presents significant challenges for reliable communication. Traditional medium access control (MAC) protocols, designed for more stable terrestrial environments, struggle to perform effectively in these circumstances. This paper evaluates the performance of UW-ALOHA-Q, a reinforcement learning (RL)-based MAC protocol designed for UASNs, focusing on its adaptability and performance in the face of the underwater channel’s inherent unreliability—an aspect not thoroughly examined in prior evaluations. Utilizing the DESERT Underwater simulator, we investigate the impact of channel conditions on the effectiveness of UW-ALOHA-Q’s learning mechanism. Our results show that UW-ALOHA-Q outperforms conventional protocols such as ALOHA-CS and TDMA in terms of channel utilization, but faces challenges in achieving convergence in highly unreliable channel conditions. Our study underscores the potential of RL-based MAC protocols in enhancing the robustness and efficiency of UASNs, while also identifying critical areas for further research in RL methodology to address the unique challenges of underwater environments.
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