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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Genetic Grey Wolf Optimizer Based Channel Estimation in Wireless Communication System
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Genetic Grey Wolf Optimizer Based Channel Estimation in Wireless Communication System

机译:基于遗传灰狼优化器的无线通信系统信道估计

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摘要

Various methods are available for channel estimation in the orthogonal frequency division multiplexing and orthogonal frequency and code division multiplexing (OFCDM) based wireless communication schemes. Along with this, the most utilized techniques are namely the minimum mean square error (MMSE) and least square (LS). The process of LS channel estimation method is simple but it occupies a very high mean square error. On the other hand, the performance of MMSE is better than LS in terms of SNR, though it shows high computational complexity. Compared to MMSE and LS based techniques, the combination of MMSE and LS techniques using evolutionary programming reduces the error significantly to receive exact signal. In this study, we propose a hybrid method namely GGWO that includes grey wolf optimization (GWO) and genetic algorithms (GA) for estimate the channel in MIMO-OFCDM schemes. At first, the best channel is estimated using GWO and afterwards, the MMSE and LS are hybridized through GA for calculating the best channel to decrease error. Overall, the GWO and GA contribute in fine tuning the obtained channel scheme so that the channel model is derived further to correlate with the ideal scheme. Our results demonstrate that the proposed scheme is superior to conventional MMSE and LS in terms of BER and SNR.
机译:基于正交频分复用和正交频率和码分复用(OFCDM)的无线通信方案,各种方法可用于在正交频分复用和正交频率和码分复用(OFCDM)中的信道估计。除此之外,最利用的技术是最小均方误差(MMSE)和最小二乘(LS)。 LS信道估计方法的过程很简单,但它占据非常高的平均方误差。另一方面,在SNR方面,MMSE的性能优于LS,但它显示出高计算复杂性。与MMSE和LS的技术相比,使用进化编程的MMSE和LS技术的组合可显着降低了误差以接收精确信号。在这项研究中,我们提出了一种混合方法,即GGWO,包括灰狼优化(GWO)和遗传算法(GA),用于估计MIMO-OFCDM方案中的信道。首先,使用GWO和之后估计最佳信道,MMSE和LS通过GA杂交,用于计算最佳通道以降低误差。总的来说,GWO和GA在精细调整所获得的信道方案中贡献,以便频道模型进一步与理想方案相关联。我们的结果表明,在BER和SNR方面,该方案优于传统的MMSE和LS。

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