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Reliable and accurate point-based prediction of cumulative infiltration using soil readily available characteristics: A comparison between GMDH, ANN, and MLR.

Authors :
Rahmati, Mehdi
Source :
Journal of Hydrology. Aug2017, Vol. 551, p81-91. 11p.
Publication Year :
2017

Abstract

Developing accurate and reliable pedo-transfer functions (PTFs) to predict soil non-readily available characteristics is one of the most concerned topic in soil science and selecting more appropriate predictors is a crucial factor in PTFs’ development. Group method of data handling (GMDH), which finds an approximate relationship between a set of input and output variables, not only provide an explicit procedure to select the most essential PTF input variables, but also results in more accurate and reliable estimates than other mostly applied methodologies. Therefore, the current research was aimed to apply GMDH in comparison with multivariate linear regression (MLR) and artificial neural network (ANN) to develop several PTFs to predict soil cumulative infiltration point-basely at specific time intervals (0.5–45 min) using soil readily available characteristics (RACs). In this regard, soil infiltration curves as well as several soil RACs including soil primary particles (clay (CC), silt (Si), and sand (Sa)), saturated hydraulic conductivity ( K s ), bulk ( D b ) and particle ( D p ) densities, organic carbon ( OC ), wet-aggregate stability ( WAS ), electrical conductivity ( EC ), and soil antecedent ( θ i ) and field saturated ( θ fs ) water contents were measured at 134 different points in Lighvan watershed, northwest of Iran. Then, applying GMDH, MLR, and ANN methodologies, several PTFs have been developed to predict cumulative infiltrations using two sets of selected soil RACs including and excluding K s . According to the test data, results showed that developed PTFs by GMDH and MLR procedures using all soil RACs including K s resulted in more accurate (with E values of 0.673–0.963) and reliable (with CV values lower than 11 percent) predictions of cumulative infiltrations at different specific time steps. In contrast, ANN procedure had lower accuracy (with E values of 0.356–0.890) and reliability (with CV values up to 50 percent) compared to GMDH and MLR. The results also revealed that K s exclusion from input variables list caused around 30 percent decrease in PTFs accuracy for all applied procedures. However, it seems that K s exclusion resulted in more practical PTFs especially in the case of GMDH network applying input variables which are less time consuming than K s . In general, it is concluded that GMDH provides more accurate and reliable estimates of cumulative infiltration (a non-readily available characteristic of soil) with a minimum set of input variables (2–4 input variables) and can be promising strategy to model soil infiltration combining the advantages of ANN and MLR methodologies. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00221694
Volume :
551
Database :
Academic Search Index
Journal :
Journal of Hydrology
Publication Type :
Academic Journal
Accession number :
124302139
Full Text :
https://doi.org/10.1016/j.jhydrol.2017.05.046