首页> 外文期刊>Advances in Adaptive Data Analysis >FAST EMPIRICAL MODE DECOMPOSITIONS OF MULTIVARIATE DATA BASED ON ADAPTIVE SPLINE-WAVELETS AND A GENERALIZATION OF THE HILBERT-HUANG-TRANSFORMATION (HHT) TO ARBITRARY SPACE DIMENSIONS
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FAST EMPIRICAL MODE DECOMPOSITIONS OF MULTIVARIATE DATA BASED ON ADAPTIVE SPLINE-WAVELETS AND A GENERALIZATION OF THE HILBERT-HUANG-TRANSFORMATION (HHT) TO ARBITRARY SPACE DIMENSIONS

机译:基于自适应样条小波和希尔伯特-黄变换(HHT)到任意空间维的广义化的多元数据快速经验模态分解

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摘要

The Hilbert-Huang-Transform (HHT) has proven to be an appropriate multiscale analysis technique specifically for nonlinear and nonstationary time series on non-equidistant grids. It is empirically adapted to the data: first, an additive decomposition of the data (empirical mode decomposition, EMD) into certain multiscale components is computed, denoted as intrinsic mode functions. Second, to each of these components, the Hilbert transform is applied. The resulting Hilbert spectrum of the modes provides a localized time-frequency spectrum and instantaneous (time-dependent) frequencies. For the first step, the empirical decomposition of the data, a different method based on local means has been developed by Chen et al. (2006). In this paper, we extend their method to multivariate data sets in arbitrary space dimensions. We place special emphasis on deriving a method which is numerically fast also in higher dimensions. Our method works in a coarse-to-fine fashion and is based on adaptive (tensor-product) spline-wavelets. We provide some numerical comparisons to a method based on linear finite elements and one based on thin-plate-splines to demonstrate the performance of our method, both with respect to the quality of the approximation as well as the numerical efficiency. Second, for a generalization of the Hilbert transform to the multivariate case, we consider the Riesz transformation and an embedding into Clifford-algebra valued functions, from which instantaneous amplitudes, phases and orientations can be derived. We conclude with some numerical examples.
机译:Hilbert-Huang变换(HHT)已被证明是一种适用于多尺度分析技术,专门用于非等距网格上的非线性和非平稳时间序列。它根据经验适合于数据:首先,计算将数据累加分解(经验模式分解,EMD)为某些多尺度分量,称为固有模式函数。其次,对这些组件中的每一个都应用希尔伯特变换。模式的结果希尔伯特频谱提供了局部时间频谱和瞬时(时间相关)频率。对于第一步,数据的经验分解,Chen等人开发了一种基于局部方法的不同方法。 (2006)。在本文中,我们将其方法扩展到任意空间维度的多元数据集。我们特别着重于在更高维度上推导数值上快速的方法。我们的方法以粗糙到精细的方式工作,并且基于自适应(张量积)样条小波。我们对基于线性有限元的方法和基于薄板样条的方法进行了数值比较,以证明我们的方法在逼近质量和数值效率方面的性能。其次,为了将希尔伯特变换推广到多元情况,我们考虑了Riesz变换并嵌入到Clifford-代数值函数中,从中可以得出瞬时幅度,相位和方向。我们以一些数值示例作为结束。

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