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首页> 外文期刊>IEEE Transactions on Communications >Convergence analysis of decision-directed adaptive echo cancellers for baseband data transmission
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Convergence analysis of decision-directed adaptive echo cancellers for baseband data transmission

机译:用于基带数据传输的决策导向自适应回声消除器的收敛性分析

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摘要

This article deals with the analysis of a decision-directed echo canceller working in a baseband data communication link. This guided scheme, as known in self-adaptive equalization systems, introduces stable local minima in the error surface thus dissuading any gradient search procedure. Regardless of this drawback, the article studies two stochastic gradient algorithms in a multimodal error surface context. They are based in the minimization of absolute and quadratic norms (L/sub 1/ and L/sub 2/) of an improved error reference signal. The analysis assumes bipolar data contaminated with a residual intersymbol interference plus background white noise. The article introduces a new perspective on the analysis of conditions that guarantees convergence towards any desired steady state even with the existence of local minima. It uses a dynamic bounding function for the adaption step dependent on the residual echo variance that allows tracking of the global convergence-condition in the working range. Furthermore, the analysis makes it also possible to predict whether the algorithm will converge or whether it could be trapped in any stable stationary point. It also shows the risky dependence of the convergence towards an undesired steady state on some internal and working variables, such as initial filter settings, interference level, etc.
机译:本文分析了在基带数据通信链路中工作的决策导向回声消除器。如自适应均衡系统中已知的那样,这种引导方案在误差表面中引入了稳定的局部最小值,从而阻止了任何梯度搜索过程。不管有何缺点,本文都研究了在多峰误差面环境中的两种随机梯度算法。它们基于最小化改进误差参考信号的绝对和二次范数(L / sub 1 /和L / sub 2 /)。该分析假设双极性数据被残留的符号间干扰加背景白噪声污染。本文介绍了条件分析的新视角,即使存在局部极小值,该条件也可确保收敛至任何所需的稳态。它根据残差回波方差对匹配步骤使用动态限制功能,该功能可以跟踪工作范围内的全局收敛条件。此外,分析还可以预测算法是否收敛或是否可能陷入任何稳定的固定点。它还显示了收敛到不希望的稳态的风险依赖于一些内部和工作变量,例如初始滤波器设置,干扰水平等。

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