A pursuit learning solution to underwater communications with limited mobility agents

Hajar Bennouri, A. Yazidi, A. Berqia
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引用次数: 2

Abstract

Underwater environments are subject to varying conditions which might degrade the quality of communications. In this paper, we propose an adaptive control mechanism to improve the communication in underwater sensor networks using the theory of Learning Automata (LA). Our LA based solution controls the mobility of thermocline sensors to improve the link stability in underwater networks. The problem is modelled as a variant of the Stochastic Point Location (SPL) problem [14, 20, 25]. The sensor is allowed two directions of movement, either surface or dive, in order to avoid physical phenomena that cause faults. Our proposed scheme constitutes also a contribution to the field of LA and particularly to the SPL problem by resorting to the concept of pursuit LA. In fact, pursuit LA exploits more effectively the information from the environment than traditional LA schemes that are myopic and use merely the last feedback from the environment instead of considering the whole history of the feedback. Experimental results show the performance of our algorithm and its ability to find the optimal sensor position.
具有有限移动代理的水下通信的追求学习解决方案
水下环境受到各种条件的影响,这些条件可能会降低通信质量。本文提出了一种基于学习自动机的自适应控制机制,以改善水下传感器网络中的通信。我们基于LA的解决方案控制温跃层传感器的移动性,以提高水下网络中的链路稳定性。该问题被建模为随机点定位(SPL)问题的一个变体[14,20,25]。该传感器允许两个方向运动,要么是水面,要么是潜水,以避免导致故障的物理现象。我们提出的方案也通过采用追求法的概念,对法的领域,特别是对SPL问题作出了贡献。事实上,与传统的短视的、只使用环境的最后反馈而不考虑反馈的整个历史的LA方案相比,追求LA更有效地利用了来自环境的信息。实验结果表明了该算法的性能和找到最优传感器位置的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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