2022
DOI: 10.1007/s11600-022-00738-2
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Drought forecasting using new advanced ensemble-based models of reduced error pruning tree

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Cited by 18 publications
(8 citation statements)
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“…Understanding meteorological variables i.e., trend, variability and future forecasting is essential for comprehending the complexities attributed to climate change. Several ensemble bagging-based models have been utilized for forecasting flood and susceptibility zonation (Chen et al2019;Talukdar et al 2020;Sharon et al 2022), drought (Shahdad and Saber 2022), deforestation prediction (Saha et al 2020), modelling carbon monoxide concentration in the atmosphere (Masih et al 2018) and even rainfall prediction (Bushara and Abraham 2015). However, works on dynamic relationship between rainfall and temperature using ensemble bagging-REPTree model are scant in the existing literature.…”
Section: Introductionmentioning
confidence: 99%
“…Understanding meteorological variables i.e., trend, variability and future forecasting is essential for comprehending the complexities attributed to climate change. Several ensemble bagging-based models have been utilized for forecasting flood and susceptibility zonation (Chen et al2019;Talukdar et al 2020;Sharon et al 2022), drought (Shahdad and Saber 2022), deforestation prediction (Saha et al 2020), modelling carbon monoxide concentration in the atmosphere (Masih et al 2018) and even rainfall prediction (Bushara and Abraham 2015). However, works on dynamic relationship between rainfall and temperature using ensemble bagging-REPTree model are scant in the existing literature.…”
Section: Introductionmentioning
confidence: 99%
“…The RMSE and NNSE ranges of the MARS model (during test phase) were 0.37-0.54 and 0.78-0.87, respectively. Shahdad and Saber (2022) [58] investigated the efficiency of the standalone Reduced Error Pruning Tree (REPT) model and its integration with Bagging (BA), Additive Regression (AR), Dagging (DA), and Random Committee (RC) for modeling SPI-6 in the Karkheh watershed in Iran. They found that hybrid algorithms improved the modeling capabilities of the standalone REPT algorithm.…”
Section: Resultsmentioning
confidence: 99%
“…Afterwards, a wrapper‐based selection (Kohavi & John, 1997) is performed on each of the 30 subsets created. These wrappers use the genetic algorithm (GA) metaheuristic as search strategy, the accuracy as fitness measure, and the random forest (RF) (Breiman, 2001), J48 (Sahu & Mehtre, 2015), reduce error pruning tree (REPTree) (Shahdad & Saber, 2022), k‐nearest neighbors ( k ‐NN) (Maleki et al, 2021), support vector machine (SVM) (Chauhan et al, 2019), random tree (Geurts et al, 2006), and Bayes Nets (Ben‐Gal, 2007) learning methods. The KNIME Weka nodes were used to implement these wrappers.…”
Section: Methodsmentioning
confidence: 99%