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Multi-Sensor Signal Fusion Based Modulation Classification by Using Wireless Sensor Networks

机译:无线传感器网络的基于多传感器信号融合的调制分类

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Automatic blind modulation classification (MC) is deployed, as the intermediate step between signal detection and demodulation, to identify modulation schemes automatically. Modulation classification is still a challenging task, especially in a non-cooperative environment, owing to the lack of prior information on the transmitted signal at the receiver. The proposed MC scheme based on multi-sensor signal fusion makes the premise that the combined signal from multiple sensors provides a more accurate description than any one of the individual signal alone. Multi-sensor signal fusion offers increased reliability and huge gains in overall performance as compared to the single sensor one, thus making automatic modulation classification (AMC) of weak signals in non-cooperative communication environment more reliable and successful. Modulation constellations improvements using multi-sensor signal fusion in the AWGN channel are studied first by using numerical simulations. In order to further study SNR improvement through multi-sensor signal fusion, Q-PSK signal SNR estimations using the M2M4 method after multi-sensor signal fusion with 10 sensors versus SNR are also presented. Finally, classification performances based on multi-sensor signal fusion in the AWGN channel are investigated and evaluated in terms of correct classification probability by taking the effects of timing synchronization, phase jitter, phase offset and frequency offset into consideration, respectively. Through Monte Carlo simulations, we demonstrate that the proposed multi-sensor signal fusion based AMC algorithm can greatly outperform other existing AMC schemes.
机译:在信号检测和解调之间的中间步骤中,部署了自动盲调制分类(MC),以自动识别调制方案。调制分类仍然是一项艰巨的任务,特别是在非合作环境中,由于在接收器上缺少有关发射信号的先验信息。所提出的基于多传感器信号融合的MC方案的前提是,与多个单独信号相比,来自多个传感器的组合信号提供了更准确的描述。与单传感器相比,多传感器信号融合提供了更高的可靠性和整体性能的提高,从而使非合作通信环境中的微弱信号的自动调制分类(AMC)更加可靠和成功。首先通过数值模拟研究了在AWGN信道中使用多传感器信号融合的调制星座图改进。为了进一步研究通过多传感器信号融合实现的SNR改善,还提出了在使用10个传感器进行多传感器信号融合后,使用M2M4方法对Q-PSK信号SNR的估计与SNR的关系。最后,通过分别考虑定时同步,相位抖动,相位偏移和频率偏移的影响,根据正确的分类概率对基于AWGN信道中多传感器信号融合的分类性能进行了研究和评估。通过蒙特卡洛仿真,我们证明了基于多传感器信号融合的AMC算法可以大大优于其他现有的AMC方案。

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