A high dimensional features-based cascaded forward neural network coupled with MVMD and Boruta-GBDT for multi-step ahead forecasting of surface soil moisture
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- @Article{JAMEI:2023:engappai,
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author = "Mehdi Jamei and Mumtaz Ali and Masoud Karbasi and
Ekta Sharma and Mozhdeh Jamei and Xuefeng Chu and
Zaher Mundher Yaseen",
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title = "A high dimensional features-based cascaded forward
neural network coupled with {MVMD} and Boruta-{GBDT}
for multi-step ahead forecasting of surface soil
moisture",
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journal = "Engineering Applications of Artificial Intelligence",
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volume = "120",
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pages = "105895",
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year = "2023",
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ISSN = "0952-1976",
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DOI = "doi:10.1016/j.engappai.2023.105895",
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URL = "https://www.sciencedirect.com/science/article/pii/S0952197623000799",
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keywords = "genetic algorithms, genetic programming, Surface soil
moisture forecasting, Microwave remote sensing, SMAP,
Cascaded forward neural network, Bidirectional gated
recurrent unit, Boruta-GBDT, Multivariate variational
model decomposition",
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abstract = "The objective of this study is to develop a novel
multi-level pre-processing framework and apply it for
multi-step (one and seven days ahead) daily forecasting
of Surface soil moisture (SSM) based on the NASA's Soil
Moisture Active Passive (SMAP)-satellite datasets in
arid and semi-arid regions of Iran. The framework
consists of the Boruta gradient boosting decision tree
(Boruta-GBDT) feature selection integrated with the
multivariate variational mode decomposition (MVMD) and
advanced machine learning (ML) models including
bidirectional gated recurrent unit (Bi-GRU), cascaded
forward neural network (CFNN), adaptive boosting
(AdaBoost), genetic programming (GP), and classical
multilayer perceptron neural network (MLP). For this
purpose, effective geophysical soil moisture predictors
for two arid stations of Khosrowshah and Neyshabur were
first filtered among 21 daily input signals from 2015
to 2020 by using the Boruta-GBDT feature selection. The
selected signals were then decomposed using the MVMD
scheme. In the last pre-processing stage, the most
relevant sub-sequences from a large pool in previous
process were filtered using the Boruta-GBDT scheme
aiming to reduce the computation and enhance the
accuracy, before feeding the ML approaches. The
comparison of the results from the five hybrid and
standalone counterpart models in term of standardized
RMSE improvement (SRMSEI) revealed that MV MD-BG-CFNN
for SSM(T+1)| 27.13percent and SSM (T+7)| 43.55percent
at Khosrowshah station and SSM(T+1)| 21.16percent and
SSM (T+7)| 30.10percent at Neyshabur station
outperformed the other hybrid frameworks, followed by
MV MD-BG-Bi-GRU, MV MD-BG-Adaboost, MV MD-BG-GP, and MV
MD-BG-MLP. The accurately forecasted SSM data help
improve irrigation scheduling, which is of significant
importance in water use efficiency and food security",
- }
Genetic Programming entries for
Mehdi Jamei
Mumtaz Ali
Masoud Karbasi
Ekta Sharma
Mozhdeh Jamei
Xuefeng Chu
Zaher Mundher Yaseen
Citations