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A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio

机译:对信噪比整个范围有效的盲自适应反卷积问题的条件期望的新有效表达式

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In the literature, we can find several blind adaptive deconvolution algorithms based on closed-form approximated expressions for the conditional expectation (the expectation of the source input given the equalized or deconvolutional output), involving the maximum entropy density approximation technique. The main drawback of these algorithms is the heavy computational burden involved in calculating the expression for the conditional expectation. In addition, none of these techniques are applicable for signal-to-noise ratios lower than 7 dB. In this paper, I propose a new closed-form approximated expression for the conditional expectation based on a previously obtained expression where the equalized output probability density function is calculated via the approximated input probability density function which itself is approximated with the maximum entropy density approximation technique. This newly proposed expression has a reduced computational burden compared with the previously obtained expressions for the conditional expectation based on the maximum entropy approximation technique. The simulation results indicate that the newly proposed algorithm with the newly proposed Lagrange multipliers is suitable for signal-to-noise ratio values down to 0 dB and has an improved equalization performance from the residual inter-symbol-interference point of view compared to the previously obtained algorithms based on the conditional expectation obtained via the maximum entropy technique.
机译:在文献中,我们可以找到几种基于闭式近似表达式的盲盲自适应反卷积算法,用于条件期望值(给定均衡或反卷积输出时对源输入的期望值),其中涉及最大熵密度近似技术。这些算法的主要缺点是为条件期望计算表达式时涉及大量的计算负担。此外,这些技术均不适用于低于7 dB的信噪比。在本文中,我基于先前获得的表达式为条件期望提出了一个新的闭式近似表达式,其中通过近似输入概率密度函数计算均衡的输出概率密度函数,该函数本身使用最大熵密度近似技术进行近似。与先前获得的基于最大熵近似技术的条件期望表达式相比,该新提出的表达式具有减轻的计算负担。仿真结果表明,新提出的具有拉格朗日乘数的算法适合于低至0 dB的信噪比值,并且与以前的符号间干扰相比,具有改进的均衡性能。基于通过最大熵技术获得的条件期望获得的算法。

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