Least squares based channel estimation approach and Bit Error Rate analysis of Cognitive Radio

M. Premkumar, M. Chitra, M. Arun, M. Saravanan
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引用次数: 4

Abstract

Cognitive Radio (CR) is very essential in day-to-day life as there is a growing demand for usage of frequency spectrum for different wireless applications. Being an opportunistic communication scenario, cognitive radio performance analysis attains prime significance. Performance analysis of a cognitive radio scenario in a wireless channel is done by a well-known performance metric Bit Error Rate (BER). However, the wireless channel coefficients or channel state information (CSI) are always unknown in any practical cognitive scenario. Hence, it needs to be estimated by estimation approaches like least squares (LS), minimum mean square error (MMSE) and maximum likelihood (ML). Least squares approach of estimation of wireless channel coefficients satisfies linearity property and is simple in computation, however it produces a lesser Mean Square Error (MSE) in comparison to MMSE and ML based approaches. But MMSE and ML approaches are based on the probability density function (PDF) which generally leads to increased computational complexity to determine the estimate of the wireless channel. However, a moderate MSE performance is sufficient for performance analysis of a CR scenario due to spectrum sensing. Least squares based approach provides an estimate of the wireless channel with very less computational complexity. Hence, this paper uses LS to estimate the wireless channel coefficients. In addition bit error rate performance of a cognitive radio scenario is analyzed using the obtained LS estimate of the wireless channel. Simulation results are obtained to analyze the LS performance of CR scenario using mean square error and BER performance metric. The obtained simulation results can be used as a benchmark for analysis of cognitive radio environments.
基于最小二乘的信道估计方法及误码率分析
认知无线电(CR)在日常生活中非常重要,因为不同的无线应用对频谱的使用需求越来越大。作为一种机会性的通信场景,认知无线电性能分析具有重要意义。无线信道中认知无线电场景的性能分析是通过一个众所周知的性能度量误码率(BER)来完成的。然而,在实际的认知场景中,无线信道系数或信道状态信息(CSI)总是未知的。因此,需要通过最小二乘(LS)、最小均方误差(MMSE)和最大似然(ML)等估计方法进行估计。无线信道系数估计的最小二乘方法满足线性特性,计算简单,但与基于最小二乘和最小二乘的方法相比,其均方误差(MSE)较小。但是MMSE和ML方法是基于概率密度函数(PDF)的,这通常会导致计算复杂度增加,从而确定无线信道的估计。然而,由于频谱感知,适度的MSE性能对于CR场景的性能分析是足够的。基于最小二乘的方法以非常低的计算复杂度提供了无线信道的估计。因此,本文采用LS估计无线信道系数。此外,利用得到的无线信道LS估计,分析了认知无线电场景的误码率性能。利用均方误差和误码率性能指标对CR场景下的LS性能进行了仿真分析。所得仿真结果可作为认知无线电环境分析的基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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