4.6 Article

Modification of the USLE K factor for soil erodibility assessment on calcareous soils in Iran

Journal

GEOMORPHOLOGY
Volume 273, Issue -, Pages 385-395

Publisher

ELSEVIER
DOI: 10.1016/j.geomorph.2016.08.003

Keywords

Erodibility; Erosivity; Mamdani fuzzy inference systems; Neural network; Stepwise regression

Funding

  1. Shahrekord University

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The measurement of soil erodibility (K) in the field is tedious, time-consuming and expensive; therefore, its prediction through pedotransfer functions (FITs) could be far less costly and time-consuming. The aim of this study was to develop new PTFs to estimate the K factor using multiple linear regression, Mamdani fuzzy inference systems, and artificial neural networks. For this purpose, K was measured in 40 erosion plots with natural rainfall. Various soil properties including the soil particle size distribution, calcium carbonate equivalent, organic matter, permeability, and wet-aggregate stability were measured. The results showed that the mean measured K was 0.014 t h MJ(-1) mm(-1) and 2.08 times less than the estimated mean K (0.030 t h MJ(-1) mm(-1)) using the USLE model. Permeability, wet-aggregate stability, very fine sand, and calcium carbonate were selected as independent variables by forward stepwise regression in order to assess the ability of multiple linear regression, Mamdani fuzzy inference systems and artificial neural networks to predict K. The calcium carbonate equivalent, which is not accounted for in the USLE model, had a significant impact on K in multiple linear regression due to its strong influence on the stability of aggregates and soil permeability. Statistical indices in validation and calibration datasets determined that the artificial neural networks method with the highest R-2, lowest RMSE, and lowest ME was the best model for estimating the K factor. A strong correlation (R-2 = 0.81, n = 40, p < 0.05) between the estimated K from multiple linear regression and measured K indicates that the use of calcium carbonate equivalent as a predictor variable gives a better estimation of K in areas with calcareous soils. (C) 2016 Elsevier B.V. All rights reserved.

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