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A Practical Guide to Discrete Wavelet Decomposition of Hydrologic Time Series

机译:水文时间序列离散小波分解的实用指南

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Discrete wavelet transform (DWT) is commonly used for wavelet threshold de-noising, wavelet decomposition, wavelet aided hydrologic series simulation and prediction, as well as many other hydrologic time series analyses. However, its effectiveness in practice is influenced by many key factors. In this paper the "reference energy function" was firstly established by operating Monte-Carlo simulation to diverse noise types; then, energy function of hydrologic series was compared with the reference energy function, and four key issues on discrete wavelet decomposition were studied and the methods for solving them were proposed, namely wavelet choice, decomposition level choice, wavelet threshold de-noising and significance testing of DWT, based on which a step-by-step guide to discrete wavelet decomposition of hydrologic series was provided finally. The specific guide is described as: choose appropriate wavelet from the recommended wavelets and according to the statistical characters relations among original series, de-noised series and removed noise; choose proper decomposition levels by analyzing the difference between energy function of the analyzed series and reference energy function; then, use the chosen wavelet and decomposition level, estimate threshold according to series' complexity and set the same threshold under each level, and use the mid-thresholding rule to remove noise; finally, conduct significance testing of DWT by comparing energy function of the de-noised series with the reference energy function. Analyses of both synthetic and observed series indicated the better performance and easier operability of the proposed guide compared with those methods used presently. Following the guide step by step, noise and different deterministic components in hydrologic series can be accurately separated, and uncertainty can also be quantitatively estimated, thus the discrete wavelet decomposition result of series can be improved.
机译:离散小波变换(DWT)通常用于小波阈值降噪,小波分解,小波辅助水文序列模拟和预测以及许多其他水文时间序列分析。但是,它在实践中的有效性受许多关键因素的影响。本文首先通过对各种噪声类型进行蒙特卡洛模拟来建立“参考能量函数”。然后,将水文序列的能量函数与参考能量函数进行比较,研究了离散小波分解的四个关键问题,并提出了解决这些问题的方法,即小波选择,分解水平选择,小波阈值去噪和显着性检验。 DWT的基础上,最终提供了水文序列离散小波分解的逐步指南。具体指导描述为:从推荐的小波中选择合适的小波,并根据原始序列,去噪序列和去除噪声之间的统计特性关系进行选择;通过分析被分析序列的能量函数和参考能量函数之间的差异来选择适当的分解水平;然后,使用选择的小波和分解级别,根据序列的复杂度估计阈值,并在每个级别下设置相同的阈值,并使用中间阈值规则去除噪声。最后,将去噪序列的能量函数与参考能量函数进行比较,对DWT进行显着性测试。综合和观察到的系列分析表明,与目前使用的那些方法相比,拟议指南具有更好的性能和更易操作性。遵循逐步的指导,可以准确地分离出水文序列中的噪声和不同的确定性成分,并且可以定量估计不确定性,从而可以改善序列的离散小波分解结果。

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