Convolutional Noise Analysis via Large Deviation Technique

M. Pinchas
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引用次数: 1

Abstract

Due to non-ideal coefficients of the adaptive equalizer used in the system, a convolutional noise arises at the output of the deconvolutional process in addition to the source input. A higher convolutional noise may make the recovering process of the source signal more difficult or in other cases even impossible. In this paper we deal with the fluctuations of the arithmetic average (sample mean) of the real part of consecutive convolutional noises which deviate from the mean of order higher than the typical fluctuations. Typical fluctuations are those fluctuations that fluctuate near the mean, while the other fluctuations that deviate from the mean of order higher than the typical ones are considered as rare events. Via the large deviation theory, we obtain a closed-form approximated expression for the amount of deviation from the mean of those fluctuations considered as rare events as a function of the system’s parameters (step-size parameter, equalizer’s tap length, SNR, input signal statistics, characteristics of the chosen equalizer and channel power), for a pre-given probability that these events may occur.
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基于大偏差技术的卷积噪声分析
由于系统中使用的自适应均衡器的系数不理想,除源输入外,在反卷积过程的输出处产生卷积噪声。较高的卷积噪声可能使源信号的恢复过程更加困难,或者在其他情况下甚至不可能。本文研究了连续卷积噪声实部算术平均值(样本均值)的波动,这种波动偏离平均值的阶高于典型波动的阶。典型波动是指那些在平均值附近波动的波动,而偏离平均值高于典型波动数量级的其他波动被认为是罕见事件。通过大偏差理论,对于这些事件可能发生的预先给定概率,作为系统参数(步长参数、均衡器的分接长度、信噪比、输入信号统计量、所选均衡器的特性和通道功率)的函数,我们获得了这些被认为是罕见事件的波动的均值偏差量的封闭形式的近似表达式。
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