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Blind Neural Network Equalizer Based on QAM and Constant Modulus Algorithm

机译:基于QAM和恒模算法的盲神经网络均衡器。

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By using QAM signals as input, this paper adopts a blind equalizer based on neural network and constant modulus algorithm. By very few training serial signals to make the network convergent, and then the equalizer changes to the blind algorithm. The simulations show that this equalizer has better performance whether at convergence speed or the remnant errorsȁ9; energy, and its convergence capability is steady.
机译:本文以QAM信号为输入,采用基于神经网络和恒模算法的盲均衡器。通过很少训练串行信号以使网络收敛,然后均衡器变为盲算法。仿真表明,该均衡器无论在收敛速度还是剩余误差ȁ9时都有更好的性能。能量,其收敛能力稳定。

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