A full-duplex fast training algorithm for simultaneously estimating echo and channel response

Xixian Chen, M. Suzuki, N. Miki, N. Nagai
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Abstract

The authors present a new scheme that extends the correlation based fast training of echo cancellers introduced by Long and Ling (1990) to allow for ultra-high-speed initialization of a full-duplex data transmission system over two-wire lines. A fast training procedure is derived to coestimate the near echo and the far echo with bulk delay, and the channel responses. The effects of the noise and symbol rates' offset between two ends are examined in terms of both mean square error and SNR. Both the theoretical analysis and computer simulations show that there are three degrading factors due to symbol rates' offset. The new algorithm delivers fst convergence speed with the same computational requirements as those of stochastic-gradient algorithms and reduces the tap-setting time to half of that required by the traditional half-duplex fast training scheme.<>
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一种同时估计回波和信道响应的全双工快速训练算法
作者提出了一种新的方案,该方案扩展了Long和Ling(1990)引入的基于相关的回波消除器快速训练,以允许在双线线上超高速初始化全双工数据传输系统。推导了一种快速训练方法,用于估计具有大时延的近回波和远回波以及信道响应。在均方误差和信噪比方面,研究了两端之间的噪声和符号率偏移的影响。理论分析和计算机仿真结果表明,由于码元速率的偏移,导致了三种性能的下降。新算法具有与随机梯度算法相同的快速收敛速度,并且将分锥设置时间减少到传统半双工快速训练方案所需时间的一半。
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