首页> 外文期刊>European Journal of Soil Science >Calibration of an electromagnetic induction sensor with time-domain reflectometry data to monitor rootzone electrical conductivity under saline water irrigation
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Calibration of an electromagnetic induction sensor with time-domain reflectometry data to monitor rootzone electrical conductivity under saline water irrigation

机译:使用时域反射仪数据校准电磁感应传感器,以监测盐水灌溉下的根区电导率

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摘要

Management of saline water irrigation at the field scale requires electrical conductivity to be monitored regularly in the generally shallow soil layer explored by plant roots. Non-invasive electromagnetic induction (EMI) sensors might be valuable for evaluating large-scale soil salinity. However, obtaining information on soil surface salinity from depth-integrated EMI measurements requires either an inversion of the electromagnetic signal or an empirical calibration. We opted for an empirical calibration of an EM38 sensor, which requires a reference dataset of local bulk electrical conductivity, sigma(b), for comparison with EMI readings for estimating regression coefficients. We used time-domain reflectometry (TDR) to replace direct sampling for local sigma(b) measurements. With empirical approaches, the different soil volumes involved with the EMI and TDR sensors become problematic. We resolved this issue by analysing large EMI and TDR datasets recorded at several times along three transects irrigated with water at 1, 3 and 6dSm(-1) degrees of salinity. A Fourier filtering technique was applied to remove the high frequency part (at small spatial scales) of the variation in the original data, which was the main source of dissimilarity between the two datasets. Therefore, calibration focused on the lower frequency information only; that is, information at a spatial scale larger than the observation volume of the sensors. We show that information from the TDR observations derives from a combination of local and larger scale heterogeneities, and how it should be managed for calibration of the EMI sensor. Analysis enabled us to identify characteristics of the calibration data that should be included to improve prediction.
机译:在田间规模的盐水灌溉管理中,需要定期对植物根部探索的通常较浅的土壤层中的电导率进行监测。非侵入性电磁感应(EMI)传感器对于评估大规模土壤盐度可能很有价值。但是,要从深度积分EMI测量中获得土壤表面盐分的信息,需要对电磁信号进行反演或根据经验进行校准。我们选择对EM38传感器进行经验校准,该校准需要本地整体电导率sigma(b)的参考数据集,以便与EMI读数进行比较以估计回归系数。我们使用时域反射仪(TDR)代替了用于局部sigma(b)测量的直接采样。通过经验方法,EMI和TDR传感器所涉及的不同土壤体积成为问题。我们通过分析分别在盐度分别为1、3和6dSm(-1)的三个灌溉样带上多次记录的大型EMI和TDR数据集来解决此问题。应用傅立叶滤波技术去除原始数据变化的高频部分(小空间尺度),这是两个数据集之间差异的主要来源。因此,校准仅集中在低频信息上。也就是说,信息的空间尺度大于传感器的观测体积。我们表明,来自TDR观测的信息来自局部和大规模异质性的结合,以及应如何管理EMI传感器的校准。通过分析,我们可以确定应包含的校准数据的特征以改善预测。

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