2018
DOI: 10.3390/atmos9070251
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Machine Learning Models Coupled with Variational Mode Decomposition: A New Approach for Modeling Daily Rainfall-Runoff

Abstract: Accurate modeling for nonlinear and nonstationary rainfall-runoff processes is essential for performing hydrologic practices effectively. This paper proposes two hybrid machine learning models (MLMs) coupled with variational mode decomposition (VMD) to enhance the accuracy for daily rainfall-runoff modeling. These hybrid MLMs consist of VMD-based extreme learning machine (VMD-ELM) and VMD-based least squares support vector regression (VMD-LSSVR). The VMD is employed to decompose original input and target time … Show more

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Cited by 56 publications
(36 citation statements)
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References 103 publications
(147 reference statements)
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“…DWT requires less time of the arithmetic processes, and is easier to implement than CWT [68,70]. A fast DWT algorithm requires four filters for perfect implementation (e.g., decomposition low-pass, decomposition high-pass, reconstruction low-pass, and reconstruction high-pass) [68,[71][72][73]. The low-pass filter for decomposition and reconstruction categories permits the interpretation of low frequency components, while the high-pass filter approves the investigation of high frequency components [72,74].…”
Section: Discrete Wavelet Transform (Dwt)mentioning
confidence: 99%
See 1 more Smart Citation
“…DWT requires less time of the arithmetic processes, and is easier to implement than CWT [68,70]. A fast DWT algorithm requires four filters for perfect implementation (e.g., decomposition low-pass, decomposition high-pass, reconstruction low-pass, and reconstruction high-pass) [68,[71][72][73]. The low-pass filter for decomposition and reconstruction categories permits the interpretation of low frequency components, while the high-pass filter approves the investigation of high frequency components [72,74].…”
Section: Discrete Wavelet Transform (Dwt)mentioning
confidence: 99%
“…The multi-resolution approach using Mallat's DWT algorithm can be explained as a process to depict 'approximation' and 'details' for an underlying signal. An approximation produces a conventional trend of the original signal, while the details provide its high-frequency components [72,73,75]. The feature reports for Mallat's DWT algorithm can be found in Nason [76] and Percival and Walden [77].…”
Section: Discrete Wavelet Transform (Dwt)mentioning
confidence: 99%
“…Novel hybrid neural networks models based on ensemble empirical mode decomposition and discrete wavelet transform have been developed to predict rainflow [38]. Advances in simulation of daily rainfall-runoff have been made using hybrid machine learning models such as least squares support vector regression and extreme learning machine [39].…”
Section: Flood Maps and Existing Applicationsmentioning
confidence: 99%
“…Many EEMD and variational mode decomposition (VMD) based algorithms have been applied in hydrology to predict rainfall and runoff records [38][39][40][41]. The work of Napolitano et al [42] was the first attempt in using artificial neural networks (ANNs) based on EEMD for daily streamflow prediction.…”
Section: Introductionmentioning
confidence: 99%