基于深度强化学习的水下通信认知均衡算法研究

Yi He, Yi Tao
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引用次数: 0

摘要

在未来几年,水下物联网有望弥合不同的海洋传感技术,使其成为一个具有自我学习和智能计算能力的互联水下物体的智能网络。水下网络的关键技术是水声通信。为了保证物理层的性能,通常采用信道均衡,提出了基于深度q网络(deep Q-network, DQN)的认知均衡算法,改进了均衡器结构参数和递归算法参数的选择。首先,多尺度时变水声(UWA)信道模型生成一定数量的UWA信道作为训练集,认知均衡器可以根据不同UWA信道的脉冲响应(CIR)和信噪比(SNR)条件自适应选择最优的抽头数和步长。仿真结果表明,与经典的自适应均衡算法相比,训练后的认知均衡器不仅具有更好的泛化性能,而且能显著降低误码率(BER),缩短信道均衡时间,提高均衡性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning Based Cognitive Equalization Algorithm Research in Underwater Communication
In the coming years, the Underwater Internet of Things is expected to bridge different technologies for sensing the ocean, allowing it to become an intelligent network of interconnected underwater objects with self-learning and intelligent computing capabilities. The key technology of the underwater network is underwater acoustic communication. In order to ensure the performance of the physical layer, channel equalization is usually adopted, the cognitive equalization algorithm is proposed based on the deep Q-network (DQN) to improve the selection of equalizer structure parameters and recursive algorithm parameters. First, the multi-scale time-varying underwater acoustic (UWA) channel model generates a certain number of UWA channels as the training set, and the cognitive equalizer can adaptively select the optimal number of taps and step length according to the channel impulse response (CIR) and signal-to-noise ratio (SNR) conditions of different UWA channels. Simulation results show that compared with the classical adaptive equalization algorithm, the trained cognitive equalizer not only has better generalization performance, but also can significantly reduce the bit error rate (BER) and shorten the channel equalization time, improving the equalization performance.
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