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Kernel adaptive filtering subject to equality function constraints

机译:受等式函数约束的内核自适应滤波

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Kernel adaptive filters (KAFs) are powerful tools for online nonlinear system modeling, which are direct extensions of traditional linear adaptive filters in kernel space, with growing linear-in-the-parameters (LIP) structure. However, like most other nonlinear adaptive filters, the KAFs are “black box” models where no prior information about the unknown nonlinear system is utilized. If some prior information is available, the “grey box” models may achieve improved performance. In this work, we consider the kernel adaptive filtering with prior information in terms of equality function constraints. A novel Mercer kernel, called the constrained Mercer kernel (CMK), is proposed. With this new kernel, we develop the kernel least mean square subject to equality function constraints (KLMS-EFC), which can satisfy the constraints perfectly while achieving significant performance improvement.
机译:内核自适应滤波器(KAF)是用于在线非线性系统建模的强大工具,它们是内核空间中传统线性自适应滤波器的直接扩展,具有不断增长的参数线性(LIP)结构。但是,像大多数其他非线性自适应滤波器一样,KAF是“黑匣子”模型,其中没有利用有关未知非线性系统的先验信息。如果有一些先验信息,“灰色盒子”模型可能会提高性能。在这项工作中,我们考虑根据等式函数约束条件对具有先验信息的内核进行自适应滤波。提出了一种新的Mercer内核,称为约束Mercer内核(CMK)。使用此新内核,我们开发了受等式函数约束(KLMS-EFC)约束的内核最小均方,它可以完美地满足约束条件,同时实现显着的性能改进。

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