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Quantifying soil hydraulic properties and their uncertainties by modified GLUE method
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Authors: | Y. Yan1, J. Liu1, J. Zhang1, X. Li1, Y. Zhao1 1Institute of Soil Science Chinese Academy of Sciences, Nanjing, Jiangsu, China |
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Abstract : | Nonlinear least squares algorithm is commonly used to fit the evaporation experiment data and to obtain the ‘optimal’ soil hydraulic model parameters. But the major defects of nonlinear least squares algorithm include non-uniqueness of the solution to inverse problems and its inability to quantify uncertainties associated with the simulation model. In this study, it is clarified by applying retention curve and a modified generalised likelihood uncertainty estimation method to model calibration. Results show that nonlinear least squares gives good fits to soil water retention curve and unsaturated water conductivity based on data observed by Wind method. And meanwhile, the application of generalised likelihood uncertainty estimation clearly demonstrates that a much wider range of parameters can fit the observations well. Using the ‘optimal’ solution to predict soil water content and conductivity is very risky. Whereas, 95% confidence interval generated by generalised likelihood uncertainty estimation quantifies well the uncertainty of the observed data. With a decrease of water content, the maximum of nash and sutcliffe value generated by genera- |
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Keywords : | soil hydraulic properties, uncertainty, generalized likelihood uncertainty estimation, evaporation experiment | ||||||||||
Language : | English |