论文标题
水下声通信通道使用储层计算
Underwater Acoustic Communication Channel Modeling using Reservoir Computing
论文作者
论文摘要
水下声学(UWA)通信已被广泛使用,但由于水下环境的复杂性而受到了极大的损害。为了改善UWA通信,建模和理解UWA渠道是必不可少的。但是,由于水下环境的高度不确定性以及缺乏现实世界的测量数据,存在许多挑战。在这项工作中,已经探索了储层计算和深度学习的能力,可以使用从有干扰和塔霍湖的水箱中收集的实际水下数据准确地对UWA通信通道进行建模。我们利用储层计算的能力来建模动态系统,并提供了使用回声状态网络(ESN)建模数据驱动的方法。此外,已经检查了转移学习到储层计算的潜在应用。实验结果表明,与流行的深度学习模型相比,ESN能够以平均绝对百分比误差(MAPE)的形式对混乱的UWA通道进行更高的性能建模,特别是ESN在良性和混乱的UWA中分别超过了深度神经网络的2%和40%。
Underwater acoustic (UWA) communications have been widely used but greatly impaired due to the complicated nature of the underwater environment. In order to improve UWA communications, modeling and understanding the UWA channel is indispensable. However, there exist many challenges due to the high uncertainties of the underwater environment and the lack of real-world measurement data. In this work, the capability of reservoir computing and deep learning has been explored for modeling the UWA communication channel accurately using real underwater data collected from a water tank with disturbance and from Lake Tahoe. We leverage the capability of reservoir computing for modeling dynamical systems and provided a data-driven approach to modeling the UWA channel using Echo State Network (ESN). In addition, the potential application of transfer learning to reservoir computing has been examined. Experimental results show that ESN is able to model chaotic UWA channels with better performance compared to popular deep learning models in terms of mean absolute percentage error (MAPE), specifically, ESN has outperformed deep neural network by 2% and as much as 40% in benign and chaotic UWA respectively.