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Predicting Saturated Hydraulic Conductivity for Estimating Maximum Soil Infiltration Rates

机译:预测饱和水导率以估算最大土壤入渗率

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Pedotransfer functions (PTFs) can be used to estimate saturated hydraulic conductivity (K-s) from soil properties such as texture and bulk density. We evaluated several published PTFs to determine which was the most reliable for predicting maximum soil infiltration rates for soils in Dane County, Wisconsin. The PTFs were evaluated with a local database of measured infiltration rates (using a 5000-cm(2) infiltrometer), land use, soil properties (texture, bulk density, and organic matter content), and topographic properties (elevation, slope, and aspect) at 42 locations. We used Bayesian updating to combine local and national data to develop Dane County K-s estimates for some soil textural classes, some of which were subdivided into two porosity classes. We developed a local PTF for predicting K-s and examined the potential for using nonsoil properties (land use and topography) as predictors of K-s. The local PTF used the mass fraction of sand and bulk density as predictors; adding nonsoil predictors did not improve its accuracy. Although the local PTF had a lower root mean squared error (RMSE) than the published PTFs, it should be evaluated with an independent dataset. Of the published PTFs evaluated, the most reliable K-s estimate compared to the local database was the one used for soils with strong structure in the precision agricultural-landscape modeling system (PALMS), a fine-scale landscape process model. The K-s estimates developed by Bayesian updating corresponded well with those used in PALMS for soils with strong structure.
机译:Pedotransfer函数(PTFs)可用于根据土壤性质(例如质地和堆积密度)估算饱和水力传导率(K-s)。我们评估了几种公开的PTF,以确定哪种方法最可靠,可以预测威斯康星州丹恩县土壤的最大土壤入渗率。使用本地数据库对PTF进行评估,该数据库包括测得的入渗率(使用5000-cm(2)入渗仪),土地利用,土壤特性(质地,堆积密度和有机物含量)以及地形特性(高程,坡度和方面)在42个位置。我们使用贝叶斯更新将本地和国家数据结合起来,以开发Dane County K-s对某些土壤质地类别的估计,其中一些细分为两个孔隙度类别。我们开发了用于预测K-s的本地PTF,并研究了使用非土壤性质(土地利用和地形)作为K-s预测因子的潜力。当地的PTF使用沙子的质量分数和堆积密度作为预测指标。添加非土壤预测因子并不能提高其准确性。尽管本地PTF的均方根误差(RMSE)低于已发布的PTF,但应使用独立的数据集对其进行评估。在已评估的已发布PTF中,与本地数据库相比,最可靠的K-s估计值是用于精细农业景观模型系统(PALMS)(一种精细规模的景观过程模型)中结构坚固的土壤的K-s估计值。贝叶斯更新产生的K-s估计值与PALMS中用于结实结构的土壤的估计值非常吻合。

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