首页> 外文会议>International Conference on Signal Processing(ICSP'06); 20061116-20; Guilin(CN) >Adaptive Blind Equalization for Chaotic Communication Systems Using Particle Filtering
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Adaptive Blind Equalization for Chaotic Communication Systems Using Particle Filtering

机译:基于粒子滤波的混沌通信系统自适应盲均衡

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摘要

A blind channel equalization technique for chaotic communications based on particle filtering is proposed in this paper. Particularly, we consider the problem of combating various channel distortions from time varying or unvarying multi-path fading. Assuming that the channel coefficients of fading are unknown parameters, blind equalization can be formulated as an estimation problem of mixed nonlinear parameters and states. Conventional methods like extended Kalman filter have relatively poor performance at low SNR. Incorporating the Rao-Blackwellisaion (KB) strategy and roughening noise method, nonlinear filter particle filtering can then be used to estimate the parameters and states sequentially. Simulations confirm that the proposed particle filtering has the improved performance of equalization compared to the extended Kalman filter in chaotic communication, especially at low SNR.
机译:提出了一种基于粒子滤波的混沌通信盲信道均衡技术。特别地,我们考虑了克服因时变或不变的多径衰落而引起的各种信道失真的问题。假设衰落的信道系数是未知参数,可以将盲均衡公式化为混合的非线性参数和状态的估计问题。诸如扩展卡尔曼滤波器之类的常规方法在低SNR时性能相对较差。结合Rao-Blackwellisaion(KB)策略和粗糙化噪声方法,然后可以使用非线性滤波器粒子滤波来依次估计参数和状态。仿真证实,与混沌通信中扩展的卡尔曼滤波器相比,所提出的粒子滤波具有更高的均衡性能,尤其是在低信噪比的情况下。

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