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Estimability Analysis for Optimization of Hysteretic Soil Hydraulic Parameters Using Data of a Field Irrigation Experiment

机译:利用田间灌溉试验数据优化滞回土壤水力参数的可估计性分析

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摘要

To improve the quality of parameter optimization, estimability analysis has been proposed as the first step before inverse modeling. When using field data of irrigation experiments for the determination of soil hydraulic parameters, wetting and drying processes may complicate optimization. The objectives of this study were to compare estimability analysis and inverse optimization of the soil hydraulic parameters in the models with and without considering hysteresis of the soil water retention function. Soil water pressure head data of a field irrigation experiment were used. The one-dimensional vertical water movement in variably saturated soil was described with the Richards equation using the HYDRUS-1D code. Estimability of the unimodal van Genuchten-Mualem hydraulic model parameters as well as of the hysteretic parameter model of Parker and Lenhard was classified according to a sensitivity coefficient matrix. The matrix was obtained by sequentially calculating effects of initial parameter variations on changes in the simulated pressure head values. Optimization was carried out by means of the Levenberg-Marquardt method implemented in the HYDRUS-1D code. The parameters α, K_s, θ_s, and n in the nonhysteretic model were found sensitive and parameter θ_s strongly correlated with parameter n. When assuming hysteresis, the estimability was decreased with soil depth for K_s and α~d, and increased for θ_s and n. Among the shape parameters, α~w was the most estimable. The hysteretic model could approximate the pressure heads in the soil by considering parameters from wetting and drying periods separately as initial estimates. The inverse optimization could be carried out more efficiently with most estimable parameters. Despite the remaining weaknesses of the local optimization algorithm and the inflexibility of the unimodal van Genuchten model, the results suggested that estimability analysis could be considered as a guidance to better define the optimization scenarios and then improved the determination of soil hydraulic parameters.
机译:为了提高参数优化的质量,可逆性建模之前已经提出了可估计性分析。当使用灌溉实验的现场数据确定土壤水力参数时,润湿和干燥过程可能会使优化复杂化。这项研究的目的是在不考虑土壤保水功能滞后的情况下,比较模型中土壤水力参数的可估计性分析和逆向优化。使用田间灌溉实验的土壤水压头数据。使用HYDRUS-1D代码通过Richards方程描述了在饱和饱和土壤中的一维垂直水运动。根据灵敏度系数矩阵,对单峰范Genuchten-Mualem水力模型参数以及Parker和Lenhard的滞后参数模型的可估计性进行了分类。通过依次计算初始参数变化对模拟压头值变化的影响来获得矩阵。通过在HYDRUS-1D代码中实现的Levenberg-Marquardt方法进行了优化。发现非迟滞模型中的参数α,K_s,θ_s和n敏感,并且参数θ_s与参数n密切相关。假设具有滞后性,可估计性随着土壤深度的增加,对于K_s和α〜d减小,而对于θ_s和n增大。在形状参数中,α〜w是最可估计的。滞后模型可以通过分别考虑湿润和干燥时期的参数作为初始估计值来近似土壤中的压头。使用最可估计的参数可以更有效地执行逆优化。尽管局部优化算法仍然存在缺陷,并且单峰范Genuchten模型不灵活,但结果表明,可估计性分析可以作为指导,以更好地定义优化方案,然后改善对土壤水力参数的确定。

著录项

  • 来源
    《Transport in Porous Media》 |2014年第3期|535-562|共28页
  • 作者单位

    Institute of Soil Landscape Research, Leibniz-Centre for Agricultural Landscape Research (ZALF), Eberswalder Strasse 84, 15374 Muencheberg, Germany,Laboratoire d'Hydrologie et de Geochimie de Strasbourg, Universite de Strasbourg/EOST, CNRS, 1 rue Blessig, 67084 Strasbourg Cedex, France;

    Institute of Soil Landscape Research, Leibniz-Centre for Agricultural Landscape Research (ZALF), Eberswalder Strasse 84, 15374 Muencheberg, Germany;

    Research Center Landscape Development and Mining Landscapes, Brandenburg University of Technology Cottbus, Konrad-Wachsmann-Allee 6, 03046 Cottbus, Germany;

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  • 正文语种 eng
  • 中图分类
  • 关键词

    Estimability analysis; Parameter correlation; Optimization; Hysteresis irrigation experiment; Infiltration;

    机译:估计性分析;参数关联;优化;磁滞灌溉实验;浸润;

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