Blind channel identification using evolutionary programming

C. Kalluri, S.S. Rao, S. Nelatury
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引用次数: 1

Abstract

The problem of blind channel identification involves estimation of the channel coefficients based on the received noisy signal. The coefficients are estimated by using higher order cumulant fitting of the received signal. The optimization of the cumulant-fitting cost function is a multimodal problem, and conventional approaches using gradient algorithms often involve local optima in the absence of a good initial estimate. We use evolutionary algorithms which evolve towards better regions of search space by means of randomized processes of selection and variation, to optimize the cost function. The effectiveness of genetic algorithms as well as evolutionary programming using self-adaptive mutation as stochastic optimization techniques is studied, and the results presented for the blind channel identification problem.
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采用进化规划的盲信道识别
盲信道识别问题是根据接收到的噪声信号估计信道系数。利用接收信号的高阶累积量拟合来估计系数。累积拟合代价函数的优化是一个多模态问题,在缺乏良好初始估计的情况下,使用梯度算法的传统方法往往涉及局部最优。我们使用进化算法,通过随机选择和变异过程向更好的搜索空间区域进化,以优化成本函数。研究了遗传算法和以自适应突变为随机优化技术的进化规划的有效性,并给出了盲信道识别问题的结果。
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