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Reproducing kernel approximation in weighted Bergman spaces: Algorithm and applications

机译:在加权Bergman空格中再现内核近似:算法和应用

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In this paper, we present algorithms of preorthogonal adaptive Fourier decomposition (POAFD) in weighted Bergman spaces. POAFD, as has been studied, gives rise to sparse approximations as linear combinations of the corresponding reproducing kernels. It is found that POAFD is unavailable in some weighted Hardy spaces that do not enjoy the boundary vanishing condition; as a result, the maximal selections of the parameters are not guaranteed. We overcome this difficulty with two strategies. One is to utilize the shift operator while the other is to perform weak POAFD. In the cases when the reproducing kernels are rational functions, POAFD provides rational approximations. This approximation method may be used to 1D signal processing. It is, in particular, effective to some Hardy H-p space functions for p not being equal to 2. Weighted Bergman spaces approximation may be used in system identification of discrete time-varying systems. The promising effectiveness of the POAFD method in weighted Bergman spaces is confirmed by a set of experiments. A sequence of functions as models of the weighted Hardy spaces, being a wider class than the weighted Bergman spaces, are given, of which some are used to illustrate the algorithm and to evaluate its effectiveness over other Fourier type methods.
机译:在本文中,我们在加权Bergman空间中提供了前正交自适应傅里叶分解(POAFD)的算法。如已经研究的,POAFD导致稀疏近似值作为相应再现核的线性组合。发现Poafd在一些不享受边界消失状态的加权哈迪空间中不可用;结果,不保证参数的最大选择。我们用两种策略克服这个困难。一个是利用换档操作员,而另一个是执行弱痘。在再现核是合理函数的情况下,POAFD提供了合理的近似。该近似方法可以用于1D信号处理。特别地,对于不等于的P不等于的一些HARY H-P空间函数是有效的。加权Bergman空间近似可以用于离散时变系统的系统识别。通过一组实验证实了加权伯格曼空间中POAFD方法的有希望的效果。给出了作为加权硬空间的模型的功能序列,其是比加权Bergman空间更广泛的类,其中一些用于说明算法并评估其在其他傅里叶类型方法上的有效性。

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