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Research on Variable Step-Size Blind Equalization Algorithm Based on Normalized RBF Neural Network in Underwater Acoustic Communication

机译:基于归一化RBF神经网络在水下声学通信中的可变梯级盲均衡算法研究

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In this paper, based on constant modulus algorithm (CMA), variable step-size blind equalization algorithm based on normalized radial basis function (RBF) neural network is proposed, considering blind equalization can equalize nonlinear characteristic of underwater acoustic channel without training sequence and RBF neural network is a nonlinear system with excellent approximation characteristic and performance of equalizing nonlinear channel. The algorithm is emulated in SIMULINK and verified its feasibility and performance using data of lake testing. Simulation and testing results show that variable step-size blind equalization algorithm based on normalized RBF neural network is better than classical BP algorithm and RBF algorithm in convergence rate and equalization performance.
机译:本文基于恒定模量算法(CMA),提出了基于归一化径向基函数(RBF)神经网络的可变步长盲均衡算法,考虑盲均衡可以均衡水下声道的非线性特性而不训练序列和RBF神经网络是一种非线性系统,具有出色的近似特性和均衡非线性通道的性能。使用湖泊测试数据验证了算法,并验证了其可行性和性能。仿真和测试结果表明,基于归一化RBF神经网络的可变斜面盲均衡算法优于经典BP算法和均衡性能的典型BP算法和RBF算法。

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