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Inverse modeling of unsaturated flow using clusters of soil texture and pedotransfer functions

机译:利用土壤质地簇和pedotransfer函数反演非饱和流

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摘要

Characterization of heterogeneous soil hydraulic parameters of deep vadose zones is often difficult and expensive, making it necessary to rely on other sources of information. Pedotransfer functions (PTFs) based on soil texture data constitute a simple alternative to inverse hydraulic parameter estimation, but their accuracy is often modest. Inverse modeling entails a compromise between detailed description of subsurface heterogeneity and the need to restrict the number of parameters. We propose two methods of parameterizing vadose zone hydraulic properties using a combination of k-means clustering of kriged soil texture data, PTFs, and model inversion. One approach entails homogeneous and the other heterogeneous clusters. Clusters may include subdomains of the computational grid that need not be contiguous in space. The first approach homogenizes within-cluster variability into initial hydraulic parameter estimates that are subsequently optimized by inversion. The second approach maintains heterogeneity through multiplication of each spatially varying initial hydraulic parameter by a scale factor, estimated a posteriori through inversion. This allows preserving heterogeneity without introducing a large number of adjustable parameters. We use each approach to simulate a 95 day infiltration experiment in unsaturated layered sediments at a semiarid site near Phoenix, Arizona, over an area of 50 x 50 m(2) down to a depth of 14.5 m. Results show that both clustering approaches improve simulated moisture contents considerably in comparison to those based solely on PTF estimates. Our calibrated models are validated against data from a subsequent 295 day infiltration experiment at the site.
机译:深层渗流带的非均质土壤水力参数的表征通常是困难且昂贵的,因此有必要依赖其他信息来源。基于土壤质地数据的Pedotransfer函数(PTF)构成了逆水力参数估计的一种简单替代方法,但其准确性通常不高。逆建模需要在地下非均质性的详细描述与限制参数数量的需求之间做出折衷。我们提出了两种结合渗滤土壤质地数据,PTF和模型反演的k均值聚类参数化渗流带水力特性参数的方法。一种方法需要同质和其他异类群集。聚类可以包括计算网格的不需要在空间上连续的子域。第一种方法将群集内的变化均匀化为初始水力参数估计值,然后通过反演对其进行优化。第二种方法是通过将每个空间变化的初始水力参数乘以比例因子(通过反演估计后验)来保持异质性。这允许保留异构性,而无需引入大量可调参数。我们使用每种方法来模拟在亚利桑那州凤凰城附近的半干旱地点的不饱和层状沉积物中进行的95天入渗实验,该区域的面积为50 x 50 m(2),深度为14.5 m。结果表明,与仅基于PTF估计的那些方法相比,这两种聚类方法均大大改善了模拟的水分含量。我们的校准模型已针对该站点随后进行的295天渗透实验的数据进行了验证。

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