二元遗传算法与连续遗传算法在认知无线电网络协同频谱优化中的比较

M. K. Hossain, Ayman A. El-Saleh, M. Ismail
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引用次数: 13

摘要

认知无线电(CR)的主要障碍是可靠地检测主用户(pu)的存在,以减少对许可通信的干扰。遗传算法非常适合于CR优化问题,通过控制频谱的未使用部分来提高频谱利用率,并为明显的频谱利用不足问题提供了解决方案。提出了基于二进制遗传算法(BGA)和基于连续遗传算法(CGA)的软决策融合(SDF)方案,用于认知无线电网络(CRN)的协同频谱优化。然后在线性SDF方案的融合中心(FC)上实现基于bga的优化引擎,利用其他传统方法对线性系数向量进行优化。BGA和CGA的比较表明,BGA的性能优于CGA。结果和分析证实了BGA的有效性和稳定性,优于传统的基于自然偏转系数- (NDC)、修正偏转系数- (MDC-)、最大比值组合- (MRC-)和等增益组合- (EGC-)的SDF方案以及基于or规则的硬决策融合(HDF)方案。验证了BGA方法的计算复杂度满足认知无线电频谱感知的实时性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison between binary and continuous genetic algorithm for collaborative spectrum optimization in cognitive radio network
The main obstacle for a cognitive radio (CR) is to detect the presence of primary users (PUs) reliably in order to reduce the interference to licensed communications. Genetic algorithms (GAs) are well suited for CR optimization problems to improve spectrum utilization by manipulating its unused portions and offer a solution to the apparent spectrum underutilization problem. In this paper, we present binary genetic algorithm (BGA) and continuous genetic algorithm (CGA)-based soft decision fusion (SDF) scheme for cooperative spectrum optimization in cognitive radio network (CRN). Then BGA-based optimization engine is implemented at the fusion center (FC) of a linear SDF scheme to optimize the linear coefficient vector with other conventional methods. The comparison between BGA and CGA shows that BGA performs better than CGA. Then the results and analysis confirm that BGA is efficient and stable and it outperforms conventional natural deflection coefficient- (NDC), modified deflection coefficient- (MDC-), maximal ratio combining- (MRC-) and equal gain combining- (EGC-) based SDF schemes as well as the OR-rule based hard decision fusion (HDF) scheme. It also verifies that the computation complexity of the BGA method meets the real time requirements of cognitive radio spectrum sensing.
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