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Semi-blind fast equalization of QAM channels using concurrent gradient-Newton CMA and soft decision-directed scheme

机译:使用并发梯度牛顿CMA和软判决定向方案的QAM通道半盲快速均衡

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摘要

This contribution considers semi-blind adaptive equalization for communication systems that employ high-throughput quadrature amplitude modulation signalling. A minimum number of training symbols, approximately equal to the dimension of the equalizer, are first utilized to provide a rough initial least-squares estimate of the equalizer's weight vector. A novel gradient-Newton concurrent constant modulus algorithm and soft decision-directed scheme are then applied to adapt the equalizer. The proposed semi-blind adaptive algorithm is capable of converging fast and accurately to the optimal minimum mean-square error equalization solution. Simulation results obtained demonstrate that the convergence speed of this semi-blind adaptive algorithm is close to that of the training-based recursive least-square algorithm.
机译:该贡献考虑了针对采用高吞吐量正交幅度调制信令的通信系统的半盲自适应均衡。首先利用最少数量的训练符号,近似等于均衡器的尺寸,以提供均衡器权重向量的粗略初始最小二乘估计。然后采用一种新颖的梯度牛顿并发恒模算法和软判决定向方案来适应均衡器。提出的半盲自适应算法能够快速准确地收敛到最优最小均方误差均衡解决方案。仿真结果表明,该半盲自适应算法的收敛速度接近基于训练的递归最小二乘算法。

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