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Bias-compensated normalized maximum correntropy criterion algorithm for system identification with noisy input

机译:带有噪声输入的系统辨识偏差补偿归一化最大熵准则算法

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摘要

This paper proposes a bias-compensated normalized maximum correntropy criterion (BCNMCC) algorithm charactered by its low steady-state misalignment for system identification with noisy input in an impulsive output noise environment. The normalized maximum correntropy criterion (NMCC) is derived from a correntropy based cost function, which is rather robust with respect to impulsive noises. To deal with the noisy input, we introduce a bias-compensated vector to the NMCC algorithm, and then an unbiasedness criterion and some reasonable assumptions are used to compute the bias-compensated vector. Taking advantage of the bias-compensated vector, the bias caused by the input noise can be effectively suppressed. System identification simulation results demonstrate that the proposed BCNMCC algorithm can outperform other related algorithms with noisy input especially in an impulsive output noise environment. (C) 2018 Elsevier B.V. All rights reserved.
机译:针对脉冲输出噪声环境中的噪声输入,提出了一种具有低稳态失准特性的偏置补偿归一化最大熵准则(BCNMCC)算法。归一化的最大肾上腺皮质标准(NMCC)是从基于肾上腺皮质的成本函数中得出的,该函数对于脉冲噪声相当鲁棒。为了处理噪声输入,我们在NMCC算法中引入了一个补偿后的矢量,然后使用一个无偏准则和一些合理的假设来计算该补偿后的矢量。利用偏置补偿矢量,可以有效地抑制由输入噪声引起的偏置。系统辨识仿真结果表明,所提出的BCNMCC算法在输入噪声较大的情况下,性能优于其他相关算法,尤其是在脉冲输出噪声环境下。 (C)2018 Elsevier B.V.保留所有权利。

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