Cadena Muñoz Ernesto, Pedraza Martínez Luis Fernando, Hernandez Cesar Augusto
Systems and Industrial Department, Universidad Nacional de Colombia, Bogotá 111321, Colombia.
Telecommunications Engineering Department, Universidad Distrital Francisco José de Caldas, Bogotá 110231, Colombia.
Entropy (Basel). 2020 Jun 6;22(6):626. doi: 10.3390/e22060626.
A very important task in Mobile Cognitive Radio Networks (MCRN) is to ensure that the system releases a given frequency when a Primary User (PU) is present, by maintaining the principle to not interfere with its activity within a cognitive radio system. Afterwards, a cognitive protocol must be set in order to change to another frequency channel that is available or shut down the service if there are no free channels to be found. The system must sense the frequency spectrum constantly through the energy detection method which is the most commonly used. However, this analysis takes place in the time domain and signals cannot be easily identified due to changes in modulation, power and distance from mobile users. The proposed system works with Gaussian Minimum Shift Keying (GMSK) and Orthogonal Frequency Division Multiplexing (OFDM) for systems from Global System for Mobile Communication (GSM) to 5G systems, the signals are analyzed in the frequency domain and the Rényi-Entropy method is used as a tool to distinguish the noise and the PU signal without prior knowledge of its features. The main contribution of this research is that uses a Software Defined Radio (SDR) system to implement a MCRN in order to measure the behavior of Primary and Secondary signals in both time and frequency using GNURadio and OpenBTS as software tools to allow a phone call service between two Secondary Users (SU). This allows to extract experimental results that are compared with simulations and theory using Rényi-entropy to detect signals from SU in GMSK and OFDM systems. It is concluded that the Rényi-Entropy detector has a higher performance than the conventional energy detector in the Additive White Gaussian Noise (AWGN) and Rayleigh channels. The system increases the detection probability (P) to over 96% with a Signal to Noise Ratio (SNR) of 10dB and starting 5 dB below energy sensing levels.
移动认知无线电网络(MCRN)中的一项非常重要的任务是,通过坚持不干扰认知无线电系统内主要用户(PU)活动的原则,确保当主要用户出现时系统释放给定频率。之后,必须设置一种认知协议,以便切换到另一个可用的频道,或者在找不到空闲频道时关闭服务。该系统必须通过最常用的能量检测方法持续感知频谱。然而,这种分析是在时域中进行的,由于调制、功率以及与移动用户距离的变化,信号不容易被识别。所提出的系统适用于从全球移动通信系统(GSM)到5G系统的高斯最小频移键控(GMSK)和正交频分复用(OFDM)系统,在频域中分析信号,并使用雷尼熵方法作为工具,在无需事先了解其特征的情况下区分噪声和主要用户信号。本研究的主要贡献在于,使用软件定义无线电(SDR)系统来实现MCRN,以便使用GNURadio和OpenBTS作为软件工具,在时域和频域中测量主要信号和次要信号的行为,从而实现两个次要用户(SU)之间的通话服务。这使得能够提取实验结果,并使用雷尼熵将其与模拟和理论结果进行比较,以检测GMSK和OFDM系统中的次要用户信号。得出的结论是,在加性高斯白噪声(AWGN)和瑞利信道中,雷尼熵检测器比传统能量检测器具有更高的性能。该系统在信噪比(SNR)为10dB且比能量感知水平低5dB开始时,将检测概率(P)提高到96%以上。