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首页> 外文期刊>Journal of Computers >Orthogonal Wavelet Transform Dynamic Weighted Multi-Modulus Blind Equalization Algorithm Based on Dynamic Particle Swarm
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Orthogonal Wavelet Transform Dynamic Weighted Multi-Modulus Blind Equalization Algorithm Based on Dynamic Particle Swarm

机译:基于动态粒子群的正交小波变换动态加权多模盲均衡算法

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摘要

—For improving the equalization performance of higher-order QAM signals, orthogonal Wavelet transform dynamic Weighted Multi-Modulus blind equalization Algorithm based on the Dynamic Particle Swarm Optimization(DPSO-WWMMA) is proposed. In this proposed algorithm, dynamic particle swarm optimization algorithm and orthogonal wavelet transform are introduced into dynamic Weighted Multi-Modulus blind equalization Algorithm(WMMA). Accordingly, the equalizer weight vector can be optimized by Dynamic Particle Swarm Optimization(DPSO) algorithm, the autocorrelation of the input signals can be reduced via using orthogonal wavelet transform, and the WMMA is used to choose appropriate error model to match QAM constellations. The theoretical analyses and computer simulations in underwater acoustic channels indicate that the proposed algorithm can obtain the fastest convergence rate and the smallest steady mean square error in equalizing high-order QAM signals. So, the proposed algorithm has important reference value in the underwater acoustic communications.
机译:- 提高高阶QAM信号的均衡性能,提出了基于动态粒子群优化(DPSO-WWMMA)的正交小波变换动态加权多模盲均衡算法。在这种提出的算法中,引入动态粒子群优化算法和正交小波变换被引入动态加权多模盲均衡算法(WMMA)。因此,可以通过动态粒子群优化(DPSO)算法来优化均衡器权重向量,可以通过使用正交小波变换来减小输入信号的自相关,并且WMMA用于选择适当的错误模型以匹配QAM星座。水下声道中的理论分析和计算机模拟表明,所提出的算法可以获得最快的收敛速率和均衡QAM信号中最小的稳定均方误差。因此,所提出的算法在水下声学通信中具有重要的参考价值。

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