Drought Prediction Method Based on an Improved CEEMDAN-QR-BL Model

In this study, a new broad learning (BL) model based on an improved complete ensemble empirical mode decomposition adaptive noise (CEEMDAN) is proposed to resolve the low accuracy, poor robustness, and long delay problems that are present in current drought assessments. First, the extreme delay meth...

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Main Authors: Yang Liu, Lihu Wang
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9312142/
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author Yang Liu
Lihu Wang
author_facet Yang Liu
Lihu Wang
author_sort Yang Liu
collection DOAJ
description In this study, a new broad learning (BL) model based on an improved complete ensemble empirical mode decomposition adaptive noise (CEEMDAN) is proposed to resolve the low accuracy, poor robustness, and long delay problems that are present in current drought assessments. First, the extreme delay method was applied to improve the CEEMDAN end effect. The improved CEEMDAN method was then used to decompose a series of non-steady-state signals from drought monitoring into multiple steady-state components. A BL model based on orthogonal trigonometry (QR) was then used to predict these multiple steady-state components, and the predicted components were further reorganised to obtain a high-precision drought sequence. On this basis, CEEMDAN was introduced into the orthogonal triangular broad learning (QR-BL), and a drought prediction model (CEEMDAN-QR-BL) combining CEEMDAN and QR-BL was proposed. Finally, the De Martonne aridity index was used to calculate the drought sequence results and determine the drought grades. To meet the real-time requirements of drought prediction, parallel computing was introduced into the CEEMDAN-QR-BL model, and a drought prediction method based on parallel CEEMDAN-QR-BL was constructed. The experimental results show that, when compared with a support vector regression model combined with an empirical mode decomposition, the reliability and accuracy of the CEEMDAN-QR-BL increases by 29.57% and 11.84%, respectively. In addition, when compared with only BL, the prediction efficiency of QR-BL improved by 62.29%.
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spelling doaj.art-c973f426a4b44c4f9fadf7d66096e15e2022-12-22T03:47:07ZengIEEEIEEE Access2169-35362021-01-0196050606210.1109/ACCESS.2020.30487459312142Drought Prediction Method Based on an Improved CEEMDAN-QR-BL ModelYang Liu0https://orcid.org/0000-0003-4188-7907Lihu Wang1https://orcid.org/0000-0003-2259-0294School of Information Engineering, North China University of Water Resources and Electric Power, Zhengzhou, ChinaSchool of Information Engineering, North China University of Water Resources and Electric Power, Zhengzhou, ChinaIn this study, a new broad learning (BL) model based on an improved complete ensemble empirical mode decomposition adaptive noise (CEEMDAN) is proposed to resolve the low accuracy, poor robustness, and long delay problems that are present in current drought assessments. First, the extreme delay method was applied to improve the CEEMDAN end effect. The improved CEEMDAN method was then used to decompose a series of non-steady-state signals from drought monitoring into multiple steady-state components. A BL model based on orthogonal trigonometry (QR) was then used to predict these multiple steady-state components, and the predicted components were further reorganised to obtain a high-precision drought sequence. On this basis, CEEMDAN was introduced into the orthogonal triangular broad learning (QR-BL), and a drought prediction model (CEEMDAN-QR-BL) combining CEEMDAN and QR-BL was proposed. Finally, the De Martonne aridity index was used to calculate the drought sequence results and determine the drought grades. To meet the real-time requirements of drought prediction, parallel computing was introduced into the CEEMDAN-QR-BL model, and a drought prediction method based on parallel CEEMDAN-QR-BL was constructed. The experimental results show that, when compared with a support vector regression model combined with an empirical mode decomposition, the reliability and accuracy of the CEEMDAN-QR-BL increases by 29.57% and 11.84%, respectively. In addition, when compared with only BL, the prediction efficiency of QR-BL improved by 62.29%.https://ieeexplore.ieee.org/document/9312142/Broad learningdrought assessmentempirical mode decompositionorthogonal triangular matrix decomposition
spellingShingle Yang Liu
Lihu Wang
Drought Prediction Method Based on an Improved CEEMDAN-QR-BL Model
IEEE Access
Broad learning
drought assessment
empirical mode decomposition
orthogonal triangular matrix decomposition
title Drought Prediction Method Based on an Improved CEEMDAN-QR-BL Model
title_full Drought Prediction Method Based on an Improved CEEMDAN-QR-BL Model
title_fullStr Drought Prediction Method Based on an Improved CEEMDAN-QR-BL Model
title_full_unstemmed Drought Prediction Method Based on an Improved CEEMDAN-QR-BL Model
title_short Drought Prediction Method Based on an Improved CEEMDAN-QR-BL Model
title_sort drought prediction method based on an improved ceemdan qr bl model
topic Broad learning
drought assessment
empirical mode decomposition
orthogonal triangular matrix decomposition
url https://ieeexplore.ieee.org/document/9312142/
work_keys_str_mv AT yangliu droughtpredictionmethodbasedonanimprovedceemdanqrblmodel
AT lihuwang droughtpredictionmethodbasedonanimprovedceemdanqrblmodel