https://ogma.newcastle.edu.au/vital/access/ /manager/Index en-au 5 Optimization of an adaptive neuro-fuzzy inference system for groundwater potential mapping https://ogma.newcastle.edu.au/vital/access/ /manager/Repository/uon:46670 3/h were selected and randomly divided into two groups. In all, 238 wells (70%) were used for training the models and 101 wells (30%) were used for testing and validating the models. Fifteen conditioning factors were selected as input parameters for the modeling. The accuracy of the groundwater potential maps for the study area was determined using root mean squared error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), and standard deviation of error (SD), as well as the area under the receiver operating characteristic (ROC) curve (AUC). Overall, the results demonstrated that ANFIS-GA had the highest prediction capability (AUC = 0.915) for groundwater potential mapping followed by ANFIS-BBO (0.903), entropy (0.862), FR (0.86), ANFIS-SA (0.83), ANFIS (0.82) and EBF (0.80). According to the entropy model, land-use, soil order and rainfall factors had the highest impact on groundwater potential in the study area. The results of this research show that the ANFIS models combined with meta-heuristic optimization algorithms can be a useful decision-making tool for assessment and management of groundwater resources.]]> Tue 29 Nov 2022 08:50:38 AEDT ]]> Coupling hysteresis analysis with sediment and hydrological connectivity in three agricultural catchments in Navarre, Spain https://ogma.newcastle.edu.au/vital/access/ /manager/Repository/uon:38743 Fri 21 Jan 2022 09:47:08 AEDT ]]>