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Soil electrical conductivity estimated by time domain reflectometry and electromagnetic induction sensors: Accounting for the different sensor observation volumes

机译:通过时域反射仪和电磁感应传感器估算土壤电导率:考虑到不同的传感器观测量

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摘要

This paper dealt with the calibration of an EMI sensor for monitoring the time dynamics of root zone salinity under irrigation with saline water. Calibration was based on an empirical multiple regression approach largely adopted in the past and still applied in practice for its relative simplicity. Compared to the more complex inversion approaches, it requires an independent dataset of local Ï\u83bmeasured within discrete depth intervals, to be compared to horizontal and vertical electrical conductivity (ECaH and ECaV) readings for estimating the parameters of the empirical regression equations. In this paper, we used time domain reflectometry (TDR) readings to replace direct sampling for these local Ï\u83bmeasurements. When using this approach, there is the important issue of taking into account the effect of the different sensor observation volumes, making the readings not immediately comparable for empirical calibration. Accordingly, a classical Fourierâ\u80\u99s filtering technique was applied to remove the high frequency part (at small spatial scale) of the original data variability, which, due to the different observation volume, was the main source of dissimilarity between the two datasets. Thus, calibration focused only on the lower frequency information, that is, the information at a spatial scale larger than the observation volume of the sensors. By this analysis, we showed and quantified the degree to which the information of the set of TDR readings came from a combination of local and larger scale heterogeneities and how they have to be manipulated for use in EMI electromagnetic induction sensor calibration.
机译:本文讨论了用于监测盐水灌溉下根区盐度时间动态的EMI传感器的校准。校准基于过去广泛采用的经验多元回归方法,并且由于其相对简单而仍在实践中应用。与更复杂的反演方法相比,它需要在离散的深度间隔内测量的独立局部数据集,以与水平和垂直电导率(ECaH和ECaV)读数进行比较,以估算经验回归方程的参数。在本文中,我们使用时域反射法(TDR)读数来代替这些局部测量的直接采样。使用这种方法时,存在一个重要的问题,即要考虑到不同传感器观测体积的影响,使得读数不能立即用于经验校准。因此,采用了经典的傅里叶滤波技术来去除原始数据变异性的高频部分(在较小的空间尺度上),由于观察量的不同,这是两个数据集之间差异的主要来源。因此,校准仅集中于低频信息,即,在空间尺度上大于传感器的观察体积的信息。通过此分析,我们显示并量化了TDR读数集的信息来自局部和较大规模异质性的组合的程度,以及在EMI电磁感应传感器校准中必须如何操纵它们。

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