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Assessing an efficient hybrid of Monte Carlo technique (GSA-GLUE) in Uncertainty and Sensitivity Analysis of vanGenuchten Soil Moisture Characteristics Curve

机译:评估蒙特卡罗技术(GSA胶水)的高效杂交,在Vangenuchten土壤水分特性曲线的不确定度和敏感性分析中

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摘要

Studying model uncertainty and identifying the parameter uncertainty in the modeling of water flow through the soil is useful to improve water and soil management. This research aimed to assess the uncertainty of the parameters of soil water retention curve (SWRC) models using an efficient hybrid of the Monte Carlo technique e.g. generalized likelihood uncertainty estimation (GLUE). GLUE estimates the parameters of vanGenuchten, vanGenuchten-Mualem, and vanGenuchten-Burdine models for four soil classes. Also, to evaluate the relative importance of the model parameters, generalized sensitivity analysis (GSA) was performed. The results of the uncertainty analysis showed that among the studied models, the vanGenuchten-Mualem model with the indices of S = 0.05, T = 0.4, d-factor = 0.25 and, P_(CI)= 100 was considered as the most accurate model with the least uncertainty. Also, the results of GSA were demonstrated that alpha and n parameters were sensitive parameters in the models. Consequently, identifying the uncertainty of the SWRC model structure and its parameters, relevant models with higher accuracy can be used in the study of soil water processes, and better water resource allocation.
机译:研究模型不确定度并识别通过土壤的水流建模中的参数不确定性是有助于改善水土的管理。该研究旨在利用蒙特卡罗技术的有效杂交来评估土壤水保留曲线(SWRC)模型的参数的不确定性。广义似然不确定性估计(胶水)。胶水估计Vangenuchten,Vangenuchten-Mualem和四种土壤课程的vangenuchten-Crdine模型的参数。此外,为了评估模型参数的相对重要性,进行广义敏感性分析(GSA)。不确定性分析结果表明,在研究的模型中,Vangenuchten-yemem模型具有S = 0.05,T = 0.4,D型= 0.25的索引,P_(CI)= 100被认为是最准确的模型具有最不确定性的。此外,GSA的结果证明了α和N参数在模型中是敏感的参数。因此,识别SWRC模型结构及其参数的不确定性,具有更高精度的相关模型可用于土壤水过程的研究,更好的水资源配置。

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