A comparison of measured and estimated saturated hydraulic conductivity of various soils in the Czech Republic

IF 2.3 3区 农林科学 Q1 AGRONOMY
K. Báťková, S. Matula, Eva Hrúzová, M. Miháliková, R. Kara, Cansu Almaz
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Abstract

The study aims to indirectly determine the saturated hydraulic conductivity (Ks). The applicability of recently-published pedotransfer functions (PTFs) based on a machine learning approach has been tested, and their performance has been compared with well-known hierarchical PTFs (computer software Rosetta) for 126 soil data sets in the Czech Republic. The quality of estimates has been statistically evaluated in comparison with the measured Ks values; the root mean squared error (RMSE), the mean error (ME) and the coefficient of determination (R2) were considered. The eight tested models of PTFs were ranked according to the RMSE values. The measured results reflected high Ks variability between and within the study areas, especially for those areas where preferential flow occurred. In most cases, the tested PTFs overestimated the measured Ks values, which is documented by positive ME values. The RMSE values of the Ks estimate ranged on average from 0.5 (coarse-textured soils) to 1.3 (medium to fine-textured soils) for log-transformed Ks in cm/day. Generally, the models based on Random Forest performed better than those based on Boosted Regression Trees. However, the best estimates were obtained by Neural Network analysis PTFs in Rosetta, which scored for four best rankings out of five.
捷克共和国各种土壤的测量和估计的饱和水力导电性的比较
本研究旨在间接确定饱和水导率(Ks)。最近发表的基于机器学习方法的土壤传递函数(ptf)的适用性已经进行了测试,并将其性能与捷克共和国126个土壤数据集的知名分层ptf(计算机软件Rosetta)进行了比较。与测量的k值进行比较,对估计的质量进行了统计评估;考虑均方根误差(RMSE)、平均误差(ME)和决定系数(R2)。根据RMSE值对8种ptf模型进行排序。测量结果反映了研究区域之间和研究区域内的高Ks变异性,特别是在发生优先流动的区域。在大多数情况下,测试的ptf高估了测量的k值,这是由阳性ME值记录的。以cm/d为单位,对数变换k值的RMSE值平均在0.5(粗质土壤)到1.3(中、细质土壤)之间。一般来说,基于随机森林的模型比基于增强回归树的模型性能更好。然而,Rosetta的神经网络分析ptf获得了最好的估计,它在5个最佳排名中获得了4个最佳排名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Plant, Soil and Environment
Plant, Soil and Environment Agronomy, Soil Science-农艺学
CiteScore
4.80
自引率
4.20%
发文量
61
审稿时长
2.4 months
期刊介绍: Experimental biology, agronomy, natural resources, and the environment; plant development, growth and productivity, breeding and seed production, growing of crops and their quality, soil care, conservation and productivity; agriculture and environment interactions from the perspective of sustainable development. Articles are published in English.
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