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Estimating Topsoil Water Content of Clay Soils With Data From Time-Lapse Electrical Conductivity Surveys

机译:利用时移电导率调查数据估算粘土土壤表层水分

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摘要

Spatial estimation of soil-water content (theta) at the field, hillslope, or catchment scale is required in numerous applications. Time-lapse electrical resistivity and apparent electrical conductivity (ECa) surveys are recognized as a useful source of information about both spatial variations in theta and spatial differences in soil properties. The objective of this work was to test the hypothesis that the accuracy of the regression relationships between theta and collocated ECa survey data can be improved for any given time if several time-lapse ECa surveys rather than a single ECa survey are used. Vertisol plots under conventional tillage and direct drilling were surveyed for gravimetric theta (theta(g)) in the top 0.3-m layer at 17 times and for topsoil ECa at 13 times in 2008 through 2010. Both dry and wet periods were covered by the surveys. On four occasions, theta(g) and ECa surveys were done on the same day. Only weak correlations (with R-2 < 0.21) were found between ECa and theta(g) measured on the same day. The accuracy of regression predictions of theta(g) substantially improved when data of several ECa surveys, rather than a single survey, were used. Therefore, the knowledge about the temporal variability in soil properties, as captured by the time-lapse ECa data, can improve the estimation of spatial variability in soil properties affecting soil-water content.
机译:在许多应用中,都需要在田野,山坡或集水区尺度上对土壤水含量(θ)进行空间估算。随时间推移的电阻率和表观电导率(ECa)调查被认为是有关theta空间变化和土壤性质空间差异的有用信息来源。这项工作的目的是检验以下假设:如果使用多个延时ECa调查而不是单个ECa调查,则可以在任意给定时间内提高theta和并置ECa调查数据之间的回归关系的准确性。在2008年至2010年期间,对传统耕作和直接钻井条件下的Vertisol样地进行了测量,测量了0.3米最上层的重量θ(theta(g))分别为17倍和表土ECa的13倍。调查。有四次是在同一天进行theta(g)和ECa调查。在同一天测得的ECa与theta(g)之间只有微弱的相关性(R-2 <0.21)。当使用多个ECa调查而不是单个调查的数据时,theta(g)回归预测的准确性大大提高。因此,通过延时ECa数据获取的关于土壤特性的时间变异性的知识可以改善对影响土壤含水量的土壤特性的空间变异性的估计。

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