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Modelling of infiltration using artificial intelligence techniques in semi-arid Iran

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Version 2 2019-09-24, 08:35
Version 1 2019-08-29, 12:42
journal contribution
posted on 2019-09-24, 08:35 authored by Parveen Sihag, Vijay P. Singh, Anastasia Angelaki, Vinod Kumar, Alireza Sepahvand, Evangelia Golia

Infiltration plays a fundamental role in streamflow, groundwater recharge, subsurface flow, and surface and subsurface water quality and quantity. In this study, adaptive neuro-fuzzy inference system (ANFIS), support vector machine (SVM) and random forest (RF) models were used to determine cumulative infiltration and infiltration rate in arid areas in Iran. The input data were sand, clay, silt, density of soil and soil moisture, while the output data were cumulative infiltration and infiltration rate, the latter measured using a double-ring infiltrometer at 16 locations. The results show that SVM with radial basis kernel function better estimated cumulative infiltration (RMSE = 0.2791 cm) compared to the other models. Also, SVM with M4 radial basis kernel function better estimated the infiltration rate (RMSE = 0.0633 cm/h) than the ANFIS and RF models. Thus, SVM was found to be the most suitable model for modelling infiltration in the study area.

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