基于BP神经网络的PN码采集系统在水下DSSS水声通信中的应用

Jiang-Yao Chen, Shun-Hsyung Chang
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引用次数: 2

摘要

提出了一种基于改进BP神经网络的伪码采集系统。传统的基于神经网络的采集系统通常是在PN码上进行训练,而该系统是基于在相关检测器输出的所有可能相位上训练一个反向传播神经网络,并通过递归累加器进行修正。递归累加器可以将神经网络的输入收敛到有限的样本空间中,BP神经网络从收敛的数据中获取接收到的PN码的相位。该系统的优点是系统增益可控,训练数据的样本空间有限。采用BP神经网络对传输信号和噪声进行区分。计算机仿真结果表明,该系统在AWGN信道和水声信道中均能在很低的信噪比下正确获取接收到的伪码相位。
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Application of BP neural network based PN code acquisition system in underwater DSSS acoustic communication
A modified back propagation (BP) neural network based PN code acquisition system is presented. Conventional neural network based acquisition systems are usually trained on PN code, but this system is based on training a back propagation neural network at all possible phase of the output of correlation detector which is modified by a recursive accumulator. The recursive accumulator can converge the input of neural network into a limited sample space, and BP neural network will acquire the phase of received PN code from the converged data. The advantages of this system are that the gain of the system is controllable and the sample space of the training data is limited. The BP neural network is used to distinguish the transmitted signal and noise. Computer simulations show that the proposed system can acquire the phase of the received PN code correctly at very low signal to noise ratio (SNR) in an AWGN channel and underwater acoustic channel.
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