Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models

Agriculture, meteorological, and hydrological drought is a natural hazard which affects ecosystems in the central India of Maharashtra state. Due to limited historical data for drought monitoring and forecasting available in the central India of Maharashtra state, implementing machine learning (ML)...

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Main Authors: Elbeltagi A., Pande C.B., Kumar M., Tolche A.D., Singh S.K., Kumar A., Vishwakarma D.K.
Other Authors: 57204724397
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Published: Springer Science and Business Media Deutschland GmbH 2024
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spelling my.uniten.dspace-342692024-10-14T11:18:44Z Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models Elbeltagi A. Pande C.B. Kumar M. Tolche A.D. Singh S.K. Kumar A. Vishwakarma D.K. 57204724397 57193547008 57713959100 57198446685 57198063860 24448652000 57351531900 Drought Machine learning Random forest (RF) Standardized precipitation index (SPI) Algorithms Droughts Ecosystem India Random Forest India Maharashtra drought Gaussian method geographical region machine learning meteorology precipitation (climatology) regression analysis algorithm drought ecosystem India random forest Agriculture, meteorological, and hydrological drought is a natural hazard which affects ecosystems in the central India of Maharashtra state. Due to limited historical data for drought monitoring and forecasting available in the central India of Maharashtra state, implementing machine learning (ML) algorithms could allow for the prediction of future drought events. In this paper, we have focused on the prediction accuracy of meteorological drought in the semi-arid region based on the standardized precipitation index (SPI) using the random forest (RF), random tree (RT), and Gaussian process regression (GPR-PUK kernel) models. A different combination of machine learning models and variables has been performed for the forecasting of metrological drought based on the SPI-6 and 12�months. Models were developed using monthly rainfall data for the period of 2000�2019 at two meteorological stations, namely, Karanjali and Gangawdi, each representing a geographical region of Upper Godavari river basin area in the central India of Maharashtra state which frequently experiences droughts. Historical data from the SPI from 2000 to 2013 was processed to train the model into machine learning model, and the rest of the 2014 to 2019-year data were used for testing to forecast the SPI and metrological drought. The mean square error (MSE), root mean square error (RMSE), adjusted�R2, Mallows� (Cp), Akaike�s (AIC), Schwarz�s (SBC), and Amemiya�s PC were used to identify the best combination input model and best subregression analysis for both stations of SPI-6 and 12. The correlation coefficient (r), mean absolute error (MAE), root mean square error (RMSE), relative absolute error (RAE), and root relative squared error (RRSE) were used to perform evaluation for SPI-6 and 12�months of both stations with RF, RT, and GPR-PUK kernel models during the training and testing scenarios. The results during testing phase revealed that the RF was found as the best model in forecasting droughts with values of r, MAE, RMSE, RAE (%), and RRSE (%) being 0.856, 0.551, 0.718, 74.778, and 54.019, respectively, for SPI-6 while 0.961, 0.361, 0.538, 34.926, and 28.262, respectively, for SPI-12 scales at Gangawdi station. Further, the respective values of evaluators at Karanjali station were 0.913 and 0.966, 0.541 and 0.386, 0.604 and 0.589, 52.592 and 36.959, and 42.315 and 31.394 for PUK kernel and RT models, respectively, during SPI-6 and SPI-12. Machine learning models are potential drought warning techniques because they take less time, have fewer inputs, and are less sophisticated than dynamic or scientific models. � 2023, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature. Final 2024-10-14T03:18:44Z 2024-10-14T03:18:44Z 2023 Article 10.1007/s11356-023-25221-3 2-s2.0-85146570337 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85146570337&doi=10.1007%2fs11356-023-25221-3&partnerID=40&md5=74637f70a9b2c0ce0c5221a2b3287fd4 https://irepository.uniten.edu.my/handle/123456789/34269 30 15 43183 43202 Springer Science and Business Media Deutschland GmbH Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Drought
Machine learning
Random forest (RF)
Standardized precipitation index (SPI)
Algorithms
Droughts
Ecosystem
India
Random Forest
India
Maharashtra
drought
Gaussian method
geographical region
machine learning
meteorology
precipitation (climatology)
regression analysis
algorithm
drought
ecosystem
India
random forest
spellingShingle Drought
Machine learning
Random forest (RF)
Standardized precipitation index (SPI)
Algorithms
Droughts
Ecosystem
India
Random Forest
India
Maharashtra
drought
Gaussian method
geographical region
machine learning
meteorology
precipitation (climatology)
regression analysis
algorithm
drought
ecosystem
India
random forest
Elbeltagi A.
Pande C.B.
Kumar M.
Tolche A.D.
Singh S.K.
Kumar A.
Vishwakarma D.K.
Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models
description Agriculture, meteorological, and hydrological drought is a natural hazard which affects ecosystems in the central India of Maharashtra state. Due to limited historical data for drought monitoring and forecasting available in the central India of Maharashtra state, implementing machine learning (ML) algorithms could allow for the prediction of future drought events. In this paper, we have focused on the prediction accuracy of meteorological drought in the semi-arid region based on the standardized precipitation index (SPI) using the random forest (RF), random tree (RT), and Gaussian process regression (GPR-PUK kernel) models. A different combination of machine learning models and variables has been performed for the forecasting of metrological drought based on the SPI-6 and 12�months. Models were developed using monthly rainfall data for the period of 2000�2019 at two meteorological stations, namely, Karanjali and Gangawdi, each representing a geographical region of Upper Godavari river basin area in the central India of Maharashtra state which frequently experiences droughts. Historical data from the SPI from 2000 to 2013 was processed to train the model into machine learning model, and the rest of the 2014 to 2019-year data were used for testing to forecast the SPI and metrological drought. The mean square error (MSE), root mean square error (RMSE), adjusted�R2, Mallows� (Cp), Akaike�s (AIC), Schwarz�s (SBC), and Amemiya�s PC were used to identify the best combination input model and best subregression analysis for both stations of SPI-6 and 12. The correlation coefficient (r), mean absolute error (MAE), root mean square error (RMSE), relative absolute error (RAE), and root relative squared error (RRSE) were used to perform evaluation for SPI-6 and 12�months of both stations with RF, RT, and GPR-PUK kernel models during the training and testing scenarios. The results during testing phase revealed that the RF was found as the best model in forecasting droughts with values of r, MAE, RMSE, RAE (%), and RRSE (%) being 0.856, 0.551, 0.718, 74.778, and 54.019, respectively, for SPI-6 while 0.961, 0.361, 0.538, 34.926, and 28.262, respectively, for SPI-12 scales at Gangawdi station. Further, the respective values of evaluators at Karanjali station were 0.913 and 0.966, 0.541 and 0.386, 0.604 and 0.589, 52.592 and 36.959, and 42.315 and 31.394 for PUK kernel and RT models, respectively, during SPI-6 and SPI-12. Machine learning models are potential drought warning techniques because they take less time, have fewer inputs, and are less sophisticated than dynamic or scientific models. � 2023, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.
author2 57204724397
author_facet 57204724397
Elbeltagi A.
Pande C.B.
Kumar M.
Tolche A.D.
Singh S.K.
Kumar A.
Vishwakarma D.K.
format Article
author Elbeltagi A.
Pande C.B.
Kumar M.
Tolche A.D.
Singh S.K.
Kumar A.
Vishwakarma D.K.
author_sort Elbeltagi A.
title Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models
title_short Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models
title_full Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models
title_fullStr Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models
title_full_unstemmed Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models
title_sort prediction of meteorological drought and standardized precipitation index based on the random forest (rf), random tree (rt), and gaussian process regression (gpr) models
publisher Springer Science and Business Media Deutschland GmbH
publishDate 2024
_version_ 1814060079570223104
score 13.223943