Energy Detection in Cognitive Radio applications using Logarithmic Square Adaptive Learning

S. Surekha, Nagesh Mantravadi, S. Mirza, Mohammad Zia Ur Rahman
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Abstract

To avoid spectrum scarcity problems in wireless communications, cognitive radio concept used as reliable and effective solution. To use proper exploitation of white sources in cognitive radios required accurate, fast and robust methods. In this paper, we proposed new method for detecting white spaces in spectrum. Based on this strategy, cognitive radio performs spectrum sensing via energy detection technique. Main novelty of this paper is adaptive algorithm i.e., error normalized least mean logarithmic square (ENLMLS), it contains the information of primary user presence or absence. Identification of white spaces depends on entity which is able to improve deflection coefficient significantly related with detector when compared to other adaptive algorithms. Simulation results shows that proposed ENLMLS algorithm performs well compared to LMS algorithm by means of convergence. Further by using clipping function, it reduces noise levels and yields missed detection probability is smaller by SNR values and predefined threshold value.
使用对数平方自适应学习的认知无线电应用中的能量检测
为避免无线通信中频谱稀缺的问题,采用认知无线电概念作为可靠有效的解决方案。在认知无线电中合理利用白源需要准确、快速和可靠的方法。本文提出了一种新的光谱白空间检测方法。基于该策略,认知无线电通过能量检测技术进行频谱感知。本文的主要新颖之处是自适应算法,即误差归一化最小平均对数平方(enlls),它包含了主用户的存在或不存在信息。空白区域的识别依赖于实体,与其他自适应算法相比,能够显著提高与检测器相关的偏转系数。仿真结果表明,所提出的ENLMLS算法在收敛性方面优于LMS算法。进一步利用裁剪函数,降低了噪声水平,通过信噪比值和预定义阈值使漏检概率减小。
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