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Evaluation of pedotransfer functions for estimating soil hydraulic properties of prevalent soils in a catchment of the Bavarian Alps

机译:评估pedaltransfer函数估算巴伐利亚阿尔卑斯流域常见土壤的水力性质

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In this study, two types of pedotransfer functions (PTFs) were evaluated for their accuracy and applicability to a broad range of Alpine soils in the Halbammer area in southern Bavaria (Germany). The first model is ROSETTA, which is based on neural network analyses. It implements five hierarchical PTFs using limited to more extend input data. The second model is SOILPROP that is based on physical methods and predicts the soil hydraulic properties from particle size distribution and bulk density. The PTF were evaluated by comparing predicted with measured water retention values. The accuracy was quantified by direct statistical evaluation with the correlation coefficient (R), the mean error (ME) and the root mean square difference (RMSD). Additionally, a process based functional validation was performed by simulating the water flow using the measured and predicted soil hydraulic data. The RMSD values from ROSETTA models ranged from 0.068 to 0.202 cm3/cm3 for the water retention and from 0.450 to 0.579 log Ks (cm/day) concerning the hydraulic conductivity (K s). The ME indicated underestimated water contents at high suctions and for soils with high organic content. The functional evaluation was the better as the more input data were used in the hierarchical PTFs. The RMSD of SOILPROP was 0.073 cm3/cm3 for water contents and 0.718 log Ks (cm/day) for the hydraulic conductivity. The water contents in the middle suction range were underestimated in sandy soils and overestimated in soils with low bulk density. The functional evaluation showed improved model accuracy when the predicted saturated conductivity was adjusted to more realistic values from literature showing its sensitiveness towards water flow modelling.
机译:在这项研究中,对两种类型的pedotransfer函数(PTF)的准确性和适用性进行了评估,它们适用于巴伐利亚南部(德国)Halbammer地区的多种高山土壤。第一个模型是ROSETTA,它基于神经网络分析。它使用仅限于更多扩展输入数据的方式实现了五个分层PTF。第二个模型是SOILPROP,它基于物理方法,并通过粒度分布和堆积密度预测土壤的水力特性。通过将预测的保水值与测得的保水值进行比较来评估PTF。通过相关系数(R),平均误差(ME)和均方根差(RMSD)的直接统计评估来量化准确性。另外,通过使用测得的和预测的土壤水力数据模拟水流,进行了基于过程的功能验证。 ROSETTA模型的RMSD值从0.068到0.202 cm3 / cm3 的保水量和0.450到0.579 log Ks (cm / day)的水力传导率(K s < / sub>)。 ME表示在高吸力和高有机含量的土壤中水含量低估。由于在分层PTF中使用了更多的输入数据,因此功能评估越好。 SOILPROP的RMSD的水含量为0.073 cm3 / cm3 ,水力传导率为0.718 log Ks (cm /天)。在沙质土壤中,中等吸力范围内的水含量被低估,而在低堆积密度的土壤中,其水含量被高估。当从文献中显示出其对水流建模的敏感性时,将预测的饱和电导率调整为更现实的值时,功能评估显示出更高的模型准确性。

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