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Recursive Constrained Adaptive Algorithm Under q-Rényi Kernel Function

机译:Q-Rényi内核功能下的递归约束自适应算法

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摘要

In this brief, we proposed a recursive constrained maximum q-Renyi kernel (RCMqR) adaptive filtering algorithm, which is derived via introducing a q-Renyi kernel function into constrained adaptive algorithm and using q-Renyi kernel function to construct a new cost function and providing its recursive form to create a linear constrained filter. The created RCMqR algorithm can achieve superior performance compared with other conventional algorithms under non-Gaussian noises environment. Theoretical transient mean-square deviation (MSD) of the RCMqR algorithm is presented when the system background noises are Gaussian-noise and non-Gaussian noise, and a sufficient condition has been achieved to make sure RCMqR algorithm converge. Various computer simulations are performed in system identification for the purpose of comparison. The simulation results verified that the theoretical analysis match well with the simulations and the proposed algorithm has better robustness than other algorithms under non-Gaussian impulsive noise.
机译:在此简介中,我们提出了一种递归约束的最大Q-Renyi内核(RCMQR)自适应滤波算法,该算法通过将Q-Renyi内核功能引入约束的自适应算法并使用Q-Renyi内核功能来构造新的成本函数和提供其递归形式以创建线性约束滤波器。与非高斯噪声环境下的其他传统算法相比,创建的RCMQR算法可以实现优越的性能。当系统背景噪声是高斯噪声和非高斯噪声时,呈现了RCMQR算法的理论瞬态平均方偏差(MSD),并且已经实现了足够的条件以确保RCMQR算法会聚。在系统识别中执行各种计算机模拟以进行比较。仿真结果证实,理论分析与模拟匹配良好,并且所提出的算法具有比非高斯冲动噪声下的其他算法更好的鲁棒性。

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