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Deep Learning Network for Multiuser Detection in Satellite Mobile Communication System

机译:卫星移动通信系统中用于多用户检测的深度学习网络

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摘要

A multiuser detection (MUD) algorithm based on deep learning network is proposed for the satellite mobile communication system. Due to relative motion between the satellite and users, multiple access interference (MUI) introduced by multipath fading channel reduces system performance. The proposed MUD algorithm based on deep learning network firstly establishes the CINR optimal loss function according to the multiuser access mode and then obtains the best multiuser detection weight through the steepest gradient iteration. Multilayer nonlinear learning obtains interference cancellation sharing weights to achieve maximum signal-to-noise ratio through gradient iteration, which is superior than the traditional serial interference cancellation algorithm and parallel interference cancellation algorithm. Then, the weights with multiuser detection through multilayer network forward learning iteration are obtained with traditional multiuser detecting quality characteristics. The proposed multiuser access detection based on deep learning network algorithm improves the MUD accuracy and reduces the number of traditional multiusers. The performance of the satellite multifading uplink system shows that the proposed deep learning network can provide high precision and better iteration times.
机译:针对卫星移动通信系统,提出了一种基于深度学习网络的多用户检测算法。由于卫星和用户之间的相对运动,多径衰落信道引入的多址干扰(MUI)会降低系统性能。提出的基于深度学习网络的MUD算法首先根据多用户访问模式建立CINR最优损失函数,然后通过最陡峭的梯度迭代获得最佳的多用户检测权重。多层非线性学习通过梯度迭代获得权重相互抵消的干扰消除算法,以达到最大信噪比,优于传统的串行干扰消除算法和并行干扰消除算法。然后,利用传统的多用户检测质量特征,获得了通过多层网络前向学习迭代进行多用户检测的权重。提出的基于深度学习网络算法的多用户访问检测提高了MUD的准确性,减少了传统多用户的数量。卫星多衰落上行链路系统的性能表明,提出的深度学习网络可以提供高精度和更好的迭代时间。

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