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首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >Effect of agronomic treatments on the accuracy of soil moisture mapping by electromagnetic induction
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Effect of agronomic treatments on the accuracy of soil moisture mapping by electromagnetic induction

机译:农艺治疗对电磁诱导的土壤水分测绘精度的影响

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Electromagnetic induction (EMI) is an established method for mapping field-scale soil water content (SWC). However, the correlation between the recorded apparent electrical conductivity (ECa) and SWC is affected by several factors that can vary across test sites and with environmental conditions. As agricultural practices affect both, ECa and SWC, it is likely that the mismatch in SWC predictions using ECa can be directly or indirectly attributed to agronomic treatment effects. Hence, EMI based SWC predictions are often limited to sites with one soil amendment and strong ECa - SWC correlations. However, non-invasive SWC mapping is particularly desirable for larger agricultural fields, covering different soil amendments. We hypothesized that different agronomic treatments altered the ECa - SWC correlations and consequently the EMI based SWC prediction accuracy. We further hypothesized that a model established on areas with high positive ECa - SWC correlation could be used to predict SWC for areas with unsuitable ECa - SWC correlations. A field-scale experiment was conducted to investigate the effects of six agronomic treatments (including biochar, BC) on SWC, ECa, and ECa - SWC correlation in a silage corn field. We tested the accuracy of three models to predict the SWC of independent data sets using data from i) all treatments (Tan), ii) plots with lowest and iii) plots with highest ECa - SWC correlations. We found statistically significant treatment effects on both, ECa and SWC, although overlapping data ranges were given. Furthermore, the correlations between ECa and SWC were affected by the treatments. Correlations were found to be lowest on nutrient-rich dairy manure plots (T2) and highest on the control plots (T6), likely due to differences in the ionic strength of pore water. BC mitigated the effect of ionic strength for T2 while it showed no measurable effects on ECa on plots receiving inorganic fertilizers. Most accurate SWC predictions were reached by employing Tall data (RMSEP 1.40-3.13% vol.). However, models based on T6 data provided similar accuracies (RMSEP 1.46-3.96% vol.) using only 12.5% of the area. The T2 based model performance failed (RMSEP 3.02-7.21% vol.). Results suggest that ECa - SWC models established on non-manured areas could provide best possible SWC predictions and are recommended as training areas if soil texture and mineralogical composition can be expected to be relatively homogeneous.
机译:电磁感应(EMI)是用于映射场尺度土壤含水量(SWC)的建立方法。然而,记录的表观电导率(ECA)和SWC之间的相关性受到若干因素的影响,这些因素可以在测试部位和环境条件下变化。由于农业实践影响了ECA和SWC,因此使用ECA的SWC预测中的不匹配可能是直接或间接地归因于农艺治疗效果。因此,基于EMI的SWC预测通常限于具有一种土壤修正和强烈的ECA - SWC相关的网站。然而,对于较大的农业领域,覆盖不同的土壤修正案是特别理想的非侵入式SWC映射。我们假设不同的农艺处理改变了ECA - SWC相关性,从而改变了基于EMI的SWC预测精度。我们进一步假设了在具有高正式ECA - SWC相关的区域建立的模型可用于预测具有不合适的ECA - SWC相关性的区域的SWC。进行了现场规模的实验,以研究SIMAGE玉米场中SWC,ECA和ECA - SWC相关性的六种农学治疗(包括生物炭,BC)的影响。我们测试了三种模型的准确性,以使用来自i的数据来预测独立数据集的SWC)所有处理(TAN),II)绘图,具有最低和III的图表,具有最高的ECA - SWC相关性。我们发现对两者和SWC的统计上显着的治疗效果,尽管给出了重叠的数据范围。此外,ECA和SWC之间的相关性受到治疗的影响。发现相关性在营养素的乳制品粪便(T2)上最低,并且在控制图(T6)上最高,可能是由于孔隙水的离子强度的差异。 BC减轻了T2的离子强度的影响,同时它对接受无机肥料的图表对ECA没有可测量的影响。通过使用高数据(RMSEP 1.40-3.13%Vol.)来达到最精确的SWC预测。但是,基于T6数据的模型提供了类似的精度(RMSEP 1.46-3.96%Vol.),仅使用12.5%的区域。基于T2的模型性能失败(RMSEP 3.02-7.21%Vol.)。结果表明,在非调控地区建立的ECA - SWC模型可以提供最佳的SWC预测,并且如果预期土壤质地和矿物学组合物相对均匀,建议作为训练区域。

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