Abstract

Abstract Infiltration plays a fundamental role in streamflow, groundwater recharge, subsurface flow, and surface and subsurface water quality and quantity. This study includes a comparative analysis of the two machine learning techniques, M5P model tree (M5P) and Gene Expression Programming (GEP), in predictions of the infiltration characteristics. The models were trained and tested using the 7 combination (CMB1 – CMB7) of input parameters; moisture content (m), bulk density of soil (D), percentage of silt (SI), sand (SA) and clay (C), and time (t), with output parameters; cumulative infiltration (CI) and infiltration rate (IR). Results suggested that GEP has an edge over M5P to predict the IR and CI with R, RMSE and MAE values 0.9343, 15.9667 mm/hr & 8.7676 mm/hr, and 0.9586, 9.2522 mm and 7.7865 mm for IR and CI, respectively with CMB1. Although the M5P model also gave good results with R, RMSE and MAE values 0.9192, 14.1821 mm/hr, and 19.2497 mm/hr, and 0.8987, 11.2144 mm and 18.4328 mm for IR and CI, respectively, but lower than GEP. Furthermore, single-factor ANOVA and uncertainty analysis were used to show the significance of the predicted results and to find the most efficient soft computing techniques respectively.

Highlights

  • IntroductionA good water management system required an efficient control of the infiltration characteristics of the soil (Singh et al 2018a)

  • Water and soil have a vibrant relationship (Patle et al 2018)

  • The cumulative infiltration refers to the total amount of water that infiltrates into the soil and the infiltration rate is the rate by which it infiltrates into the soil (Haghighi et al 2010)

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Summary

Introduction

A good water management system required an efficient control of the infiltration characteristics of the soil (Singh et al 2018a). Good knowledge of the infiltration characteristics would help in a wide range of problems such as artificial and natural groundwater recharge, flooding, pollution of underground water, the optimum amount of water for irrigation, and runoff water (Dahan et al 2007). It is the most dominant factor in the accurate prediction of the flooding conditions in any catchment (Bhave & Sreeja 2013). Infiltration characteristics play a significant role in the prediction of runoff in designing hydraulic structures as well as water resources planning and management (Heinz et al 2007; Souchère et al 2010)

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