基于MHMPSO粒子滤波的单通道时变振幅LFM干扰盲分离

W. Lu, Bangning Zhang
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引用次数: 5

摘要

提出了一种基于Metropolis-Hastings突变粒子群优化粒子滤波(MHMPSOPF)的通信信号与时变幅度LFM干扰的单通道盲信号分离(SCBSS)新方法。该算法通过对受干扰信号建立状态空间模型,利用粒子滤波方法获得通信码和未知参数的最大后验估计,并在粒子滤波的重采样过程中引入粒子群优化,克服了样本贫困化问题。在序列估计过程中减少了所需粒子的数量,保留了粒子的多样性,并且在时变幅度LFM干扰下具有优越的性能。仿真结果表明,当信噪比小于20dB,信噪比大于14dB时,该方法能有效分离通信信号和干扰。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single channel time-varying amplitude LFM interference blind separation using MHMPSO particle filtering
A new approach is proposed for single channel blind signal separation(SCBSS) problem of communication signal and time-varying amplitude LFM interference based on Metropolis-Hastings mutation particle swarm optimized particle filtering (MHMPSOPF). The proposed algorithm aims to obtain the maximum a posterior (MAP) estimate of communication code and the unknown parameters using particle filtering by establishing the state space model for the interfered signal, Specially, in order to overcome the sample impoverishment problem, particle swarm optimized is introduced to the re-sampling process in particle filtering(PF). In such a way, the number of needed particles is reduced and the variety of particles is retained during the sequential estimation process, moreover, the proposed algorithm has superior performance under time-varying amplitude LFM interference. Simulation results show that the method is effective to separate communication signal and interference when the ISR is less than 20dB and SNR is more than 14dB.
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