Combination of Metaheuristic Optimization Algorithms  and Machine Learning Methods for Groundwater  Potential Mapping
        
     
    
        
            The groundwater contained in aquifers is among the most important water supply resources, especially in semi-arid and arid regions worldwide. This study aims to evaluate and compare the prediction capability of two well?known models, support vector machine (SVM) and adaptive neuro-fuzzy inference system (ANFIS), combined with a genetic algorithm (GA), invasive weed 
optimization (IWO), and teaching?learning-based optimization (TLBO) algorithms in groundwater 
potential mapping (GPM) the Azraq Basin in Jordan. The hybridization of the SVM and ANFIS 
models with the GA, IWO, and TLBO algorithms results in six models: SVM?GA, SVM?IWO, SVM?
TLBO, ANFIS?GA, ANFIS?IWO, and ANFIS?TLBO. A database consisting of well data containing 
464 wells with 12 predictive factors was developed for the groundwater potential mapping (GPM) 
of the study area. Of the 464 well locations, 70% (325 locations) were assigned for the training set 
and the rest (139 locations) for the validation set. The correlation between the 12 predictive factors 
and the well locations is analyzed using the frequency ratio (FR) statistical model. An area under 
receiver operating characteristic (AUROC) curve was used to evaluate and compare the models. 
According to the results, the SVM-based hybrid models outperformed other ANFIS hybrid models 
in the learning (training) and validation phases. The SVM?GA and SVM?TLBO hybrid models 
showed AUROC values of 0.984 and 0.971, respectively, in the training and validation phases. Moreover, the ANFIS?GA and ANFIS?TLBO hybrid models showed an AUROC of 0.979 and 0.984 in the 
training phase and an AUROC of 0.973 and 0.984 in the validation phase, respectively. The SVM?
IWO and ANFIS?IWO hybrid models showed the lowest AUROC. This study demonstrated the 
more efficient results of the SVM-based hybrid models in comparison with the ANFIS-based hybrid 
models in terms of accuracy and modeling speed.