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A Neural Network of Multiresolution Wavelet Analysis

机译:多分辨率小波分析的神经网络

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Wavelet transformation is a powerful method of signal processing which uses decomposition of the studied signal over a special basis with unique properties, the most important of which are its compactness and multiresolution: wavelet functions are produced from the mother wavelet by transition and dilation. Wavelet neural networks (WNN) are a family of approximation algorithms that use wavelet functions to decompose the approximated function. If only approximation and no inverse transformation is needed, the values of transition and dilation coefficients may be determined during network training, and the windows corresponding to various wavelet functions may overlap, making the whole system much more efficient. Here we present a new type of a WNN - Adaptive Window WNN (AWWNN), in which window positions and wavelet levels are determined with a special iterative procedure. Two modifications of AWWNN are tested against linear model and multi-layer perceptron on Mackey-Glass benchmark prediction problem.
机译:小波变换是一种强大的信号处理方法,它利用特殊特性对研究信号进行分解,并具有独特的性能,其中最重要的是其紧凑性和多分辨率:小波函数是通过转换和扩张从母子波产生的。小波神经网络(WNN)是使用小波函数分解近似函数的一系列近似算法。如果仅需要近似而不需要逆变换,则可以在网络训练期间确定跃迁系数和膨胀系数的值,并且与各种小波函数相对应的窗口可能会重叠,从而使整个系统效率更高。在这里,我们提出一种新型的WNN-自适应窗口WNN(AWWNN),其中窗口位置和小波级别是通过特殊的迭代过程确定的。针对Mackey-Glass基准预测问题,针对线性模型和多层感知器测试了AWWNN的两种修改形式。

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