频谱监测中基于小波变换的最小均方自适应滤波检测

Xin He, Yonghui Zhang, Zhenjia Chen, Lihui Wang
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引用次数: 0

摘要

由于电磁干扰的增加,频谱检测和信号源感知的难度越来越大。由于电磁环境的复杂性和系统部件的多样性,微小甚至微弱的信号有时会淹没在噪声和干扰中,难以检测。针对信号不易检测的问题,提出了一种基于电磁波谱监测与自适应滤波相结合的信号检测算法。在理论验证方面,利用模拟仿真平台进行仿真分析,并对算法进行性能测试。本文的主要研究内容如下:对正弦周期信号进行LMS算法仿真实验。针对固定步长LMS算法在收敛速度上的局限性,采用小波变换进行频段分离,并将小波变换方法与LMS算法相结合进行信号检测仿真。仿真结果表明,该命题结合小波变换和LMS算法可以检测到有用的信号。与改进前的LMS算法相比,自适应滤波算法的收敛速度得到了有效提高。并且该方案可以减少稳态紊乱,同时有效消除频谱上的干扰,增强消噪能力。
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Least Mean Square Adaptive Filter Detection Based on Wavelet Transform in Spectrum Monitoring
The difficulty of spectrum detection and signal source perceivement is growing because of the increase in electromagnetic interference. Due to the complexity of the electromagnetic environment and the diversity of system components, micro or even weak signals sometimes submerge in noise and interference, difficult to detect. Aiming at a problem that the signal is not easy to detect, a signal detection algorithm based on electromagnetic spectrum monitoring combined with adaptive filtering method is proposed. In terms of theoretical verification, simulation analysis using analog simulation platform, and the algorithm performs performance testing. The main research contents of this paper are as follows: LMS algorithm simulation experiments are performed on the sinusoidal cycle signal. In response to the limitations of the fixed step LMS algorithm on convergence speed, the wavelet transform is used to perform frequency band separation, and the wavelet transform method is combined with the LMS algorithm to perform signal detection simulation. The simulation results show that the proposition combined with the wavelet transform and the LMS algorithm can detect useful signals. The convergence speed of the adaptive filtering algorithm is effectively improved compared to the LMS algorithm before the improvement. And the scheme can reduce steady state disorders, while effective elimination of interference on the spectrum, enhanced noise elimination capability.
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