“…The most commonly used models are the Support Vector Machine (SVM), Random Forest (RF), and Artificial Neural Networks (ANNs), K‐nearest neighbour (KNN), Relevance Vector Machine (RVM), which can model complex, often nonlinear relationships in climate data. Multiple studies have accounted for the machine learning approach for the ensemble of precipitation, temperature and evaporation (Ahmed et al, 2020; Dey et al, 2022; Jose et al, 2022; Kadkhodazadeh et al, 2022; Wang et al, 2018) and found the best performance of RF and SVM in most of the studies over Southwest Asia, Australia (Wang et al, 2018), KNN and RVM over SVM and ANN in Pakistan (Ahmed et al, 2020), RF over decision tree, Adaptive boosting and linear regression over China (Li et al, 2021; Yang et al, 2022). Also, the studies have endorsed the best performance of RF and SVM over ANN and AM methods in a tropical monsoon climate in eastern India (Dey et al, 2022), and RF in the per‐humid river basin in south India (Jose et al, 2022).…”