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Nonlinear adaptive channel equalization using genetic algorithms

机译:使用遗传算法的非线性自适应信道均衡

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Nonlinear adaptive channel equalization is a well-documented problem. Equalizers based on the complex decision feedback recurrent neural network (CDFRNN) have been intensively studied to address this problem. However, when trained with conventional training algorithms like the real time recurrent learning (RTRL) technique, the equalizer suffers from low convergence speed, requiring very long training sequence to achieve proper performance. In this work, we propose a new approach to equalize nonlinear channels using genetic algorithms. The proposed Volterra decision feedback genetic algorithm (VDFGA) uses a genetic optimization strategy to estimate Volterra kernels in order to model the inverse of the channel response. Simulation results show very high convergence speed, which allowed to achieve interesting bit error rate (BER) using relatively short training symbols, when considering only 8-bits long coded weights.
机译:非线性自适应信道均衡是一个有据可查的问题。为了解决这个问题,已经对基于复杂决策反馈递归神经网络(CDFRNN)的均衡器进行了深入研究。但是,当使用常规训练算法(如实时递归学习(RTRL)技术)进行训练时,均衡器的收敛速度很慢,需要很长的训练序列才能获得适当的性能。在这项工作中,我们提出了一种使用遗传算法均衡非线性通道的新方法。提出的Volterra决策反馈遗传算法(VDFGA)使用遗传优化策略来估计Volterra内核,以对通道响应的逆进行建模。仿真结果显示出非常高的收敛速度,当仅考虑8位长的编码权重时,使用相对较短的训练符号即可实现令人感兴趣的误码率(BER)。

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