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首页> 外文期刊>Vadose zone journal VZJ >Multiscale Analysis of Hydrologic Time Series Data using the Hilbert-Huang Transform
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Multiscale Analysis of Hydrologic Time Series Data using the Hilbert-Huang Transform

机译:使用Hilbert-Huang变换对水文时间序列数据进行多尺度分析

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For the analysis of time series data from hydrology, we used a recently developed technique that is by now widely known as the Hilbert-Huang transform (HHT). Specifically, it is designed for nonlinear and nonstationary data. In contrast to data analysis techniques using the short-time, windowed Fourier transform or the continuous wavelet transform, the new technique is empirically adapted to the data in the following sense. First, an additive decomposition, called empirical mode decomposition (EMD),of the data into certain multi scale components is computed. Second, to each of these components, the Hilbert transform is applied. The resulti ng Hilbert spectrum of the modes provides a localized time-frequency spectrum and instantaneous (time-dependent) frequencies. In this study, we applied the HHT to hydrological time series data from the Upper Rur Catchment Area, mostly German territory, taken during a period of 20 yr. Our first observation was that a coarse approximate on of the data can be derived by truncati ng the EMD representa-ti on. This can be used to better model patterns like seasonal structures. Moreover, the corresponding ti me-frequency energy spectrum applied to the complete EMD revealed seasonal events in a particular apparent waytogether with their energy. We compared the Hilbert spectra with Fourier spectrograms and wavelet spectra to demonstrate a better localizati on of the energy components, which also exhibit strong seasonal components. The Hilbert energy spectrum of the three measurement stations appear to be very similar, indicating little local variability in drainage.
机译:为了分析水文中的时间序列数据,我们使用了一种最新开发的技术,该技术目前被广泛称为希尔伯特-黄变换(HHT)。具体来说,它是为非线性和非平稳数据设计的。与使用短时窗口傅里叶变换或连续小波变换的数据分析技术相比,新技术在以下意义上根据经验适用于数据。首先,计算将数据分解为某些多尺度分量的加法分解,称为经验模式分解(EMD)。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。在这项研究中,我们将HHT应用于20年来从上鲁尔集水区(主要是德国领土)获得的水文时间序列数据。我们的第一个观察结果是,可以通过截断EMD表示来得出数据的粗略近似值。这可以用来更好地模拟季节性结构等模式。此外,应用于完整EMD的相应的频率能量谱以特定的明显方式揭示了季节性事件及其能量。我们将希尔伯特谱图与傅立叶谱图和小波谱图进行了比较,以证明能量分量具有更好的局部化性,同时还表现出较强的季节性分量。三个测量站的希尔伯特能谱看起来非常相似,表明排水的局部变化很小。

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