Channel Quality Prediction for Adaptive Underwater Acoustic Communication

Hossein Ghannadrezaii, J. MacDonald, Jean-François Bousquet, David R. Barclay
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引用次数: 2

Abstract

In this paper, the communication quality of an underwater acoustic link between two nodes is quantified by the predicted channel gain and delay spread using a stochastic and reinforcement learning model. The stochastic model generates an ensemble of time-varying channel characteristics by capturing the effect of known environmental changes including changes in sound speed profile, tides and bathymetry. Along with the stochastic model to capture the impact of unknown environmental parameters on channel quality a hidden Markov model is utilized to complement sparse channel measurements and predict the channel characteristics over a long time period spanning multiple days. In this work, the nodes are bottom mounted in a shallow turbulent water environment, with known tide cycles, physical oceanography conditions and channel geometry. As such, the channel characteristics can be estimated using a simulation software model at the remote nodes. While the simulation model is used to estimate the initial channel condition between the nodes in short-term deployment, as will be shown, the hidden Markov model provides an accurate channel characteristics prediction for long term deployment, which can be utilized by software-defined acoustic nodes such that they can adapt to the time varying acoustic channel.
自适应水声通信信道质量预测
本文采用随机强化学习模型,通过预测信道增益和延迟扩展来量化两个节点之间的水声链路的通信质量。随机模型通过捕捉已知环境变化的影响,包括声速剖面、潮汐和水深测量的变化,生成时变通道特征的集合。随着随机模型捕捉未知环境参数对航道质量的影响,隐马尔可夫模型被用于补充稀疏航道测量和预测跨越多天的长时间内的航道特性。在这项工作中,节点底部安装在浅层湍流水环境中,具有已知的潮汐周期,物理海洋学条件和通道几何形状。因此,可以使用远程节点上的仿真软件模型来估计信道特性。在短期部署中,仿真模型用于估计节点之间的初始信道条件,如下所示,隐马尔可夫模型为长期部署提供了准确的信道特性预测,这可以被软件定义的声学节点利用,使其能够适应时变的声学信道。
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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