A New Evolutionary Hybrid Random Forest Model for SPEI Forecasting

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Date

2022

Authors

Ali Danandeh Mehr
Ali Torabi Haghighi
Masood Jabarnejad
Mir Jafar Sadegh Safari
Vahid Nourani

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Volume Title

Publisher

MDPI

Open Access Color

GOLD

Green Open Access

Yes

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No
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Abstract

State-of-the-art random forest (RF) models have been documented as versatile tools to solve regression and classification problems in hydrology. They can model stochastic time series by bagging different decision trees. This article introduces a new hybrid RF model that increases the forecasting accuracy of RF-based models. The new model called GARF is attained by integrating genetic algorithm (GA) and hybrid random forest (RF) in which different decision trees are bagged. We applied GARF to model and forecast a multitemporal drought index (SPEI-3 and SPEI-6) at two meteorology stations (Beypazari and Nallihan) in Ankara Turkey. We compared the associated results with classic RF standalone extreme learning machine (ELM) and a hybrid ELM model optimized by Bat algorithm (Bat-ELM) to verify the new model accuracy. The performance assessment was performed using graphical and statistical analysis. The forecasting results demonstrated that the GARF outperformed the benchmark models. GARF achieved the least error in a quantitative assessment for the prediction of both SPEI-3 and SPEI-6 particularly in the testing period. The results of this study showed that the new model can improve the forecasting accuracy of the classic RF technique up to 30% and 40% at Beypazari and Nallihan stations respectively. © 2022 Elsevier B.V. All rights reserved.

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Keywords

Drought Forecasting, Genetic Algorithm, Hydro-climatology, Random Forest, Spei, Türkiye, Benchmarking, Decision Trees, Drought, Forestry, Learning Algorithms, Machine Learning, Stochastic Models, Stochastic Systems, Weather Forecasting, Beypazari, Forecasting Accuracy, Hybrid Random Forests, Hydroclimatology, Random Forest Modeling, Random Forests, Spei, State Of The Art, Turkiye, Versatile Tools, Genetic Algorithms, Benchmarking, Classification, Evolutionary Theory, Forecasting Method, Genetic Algorithm, Numerical Model, Ankara [turkey], Nallihan, Turkey, Benchmarking, Decision trees, Drought, Forestry, Learning algorithms, Machine learning, Stochastic models, Stochastic systems, Weather forecasting, Beypazari, Forecasting accuracy, Hybrid random forests, Hydroclimatology, Random forest modeling, Random forests, SPEI, State of the art, Turkiye, Versatile tools, Genetic algorithms, benchmarking, classification, evolutionary theory, forecasting method, genetic algorithm, numerical model, Ankara [Turkey], Nallihan, Turkey, Genetic Algorithm, Random Forest, Drought, Hydro-Climatology, Turkiye, Türkiye, drought forecasting, SPEI, Spei, Drought Forecasting, genetic algorithm, Extreme Learning-Machine, hydro-climatology, Wavelet, random forest; genetic algorithm; drought forecasting; hydro-climatology; SPEI; Türkiye, random forest

Fields of Science

0207 environmental engineering, 02 engineering and technology

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OpenCitations Citation Count
20

Source

Water

Volume

14

Issue

Start Page

755

End Page

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CrossRef : 21

Scopus : 28

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Mendeley Readers : 56

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