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Analysis of Levenberg-Marquardt and Scaled Conjugate gradient training algorithms for artificial neural network based LS and MMSE estimated channel equalizers

机译:基于LS和MMSE估计通道均衡器的人工神经网络的Levenberg-Marquardt和比例共轭梯度训练算法分析。

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Multilayer perceptron (MLP) based artificial neural network (ANN) equalizers, deploying back propagation (BP) training algorithm, have been profusely used for equalization earlier. However this algorithm suffers from slow convergence rate, depending on the size of network. In this paper, Levenberg-Marquardt and Scaled Conjugate algorithms are proposed to train an MLP based ANN for least square (LS) and minimum mean square (MMSE) estimated channel coefficients using MPSK and MQAM modulation techniques. The key analytical performance measures are comprehended in terms of three parameters i.e regression, validation and training state. Based on the regression parameter, Scaled Conjugate method outpaces Levenberg-Marquardt and on the basis of Mean Squared Error (MSE), it is seen that the Levenberg-Marquardt has better accuracy than Scaled Conjugate.
机译:部署反向传播(BP)训练算法的基于多层感知器(MLP)的人工神经网络(ANN)均衡器早已被广泛用于均衡。但是,根据网络的大小,该算法的收敛速度较慢。在本文中,提出了Levenberg-Marquardt和Scaled Conjugate算法,以使用MPSK和MQAM调制技术训练基于MLP的最小二乘(LS)和最小均方(MMSE)估计信道系数的ANN。关键的分析性能指标包括三个参数,即回归,验证和训练状态。基于回归参数,比例共轭方法优于Levenberg-Marquardt,并基于均方误差(MSE),可以看出Levenberg-Marquardt的精度优于比例共轭。

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