法兰德斯农田稀疏原位土壤水分传感器测量的集合误差方差和协方差估计

IF 5.8 2区 农林科学 Q1 SOIL SCIENCE Soil Pub Date : 2024-10-22 DOI:10.5194/egusphere-2024-2943
Marit G. A. Hendrickx, Jan Vanderborght, Pieter Janssens, Sander Bombeke, Evi Matthyssen, Anne Waverijn, Jan Diels
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引用次数: 0

摘要

摘要准确量化固定位置原位传感器测量的土壤水分误差,对于在概率土壤水文模型中进行可靠的状态和参数估计至关重要。当每个田块或测量区域(MZ)的传感器数量有限时,这种量化工作就变得尤为困难。当无法直接计算某一测区传感器数据的误差时,我们建议将特定测量设置的土壤水分测量的系统误差和随机误差汇集起来,得出一个适用于不同田块和土壤类型的汇集误差协方差矩阵。在这项研究中,我们从土壤水分传感器测量结果和土壤水分取样活动中得出了一个集合误差协方差矩阵,这些测量和取样活动历时三个生长季,涵盖了比利时不同土壤质地农田的 93 个种植周期。从土壤样本中估算出的 MZ 土壤水分(标准误差很小(0.0038 m3 m-3))代表了 "真实的 "MZ 土壤水分,由于土壤样本是在不同地点采集的,因此不同采样活动之间不存在相关性。首先,我们对 TEROS 10(美国 Meter Group 公司)制造商的传感器校准功能进行了集合线性再校准。然后,针对每个传感器和每个 MZ,我们确定了校准传感器数据与采样数据之间的系统偏差和随时间变化的残余偏差。单个或多区划平均传感器测量误差的自方差由所有传感器或多区划的系统偏差方差表示,而随机误差方差则由汇总的残余偏差方差计算得出。总误差方差等于自方差和随机误差方差之和。由于传感器的空间相关性,无法从单个传感器的误差方差和协方差推导出 MZ 平均传感器测量误差的方差和自方差。由于系统误差标准偏差(σα- = 0.0327 m3 m-3)与随机误差标准偏差(σε- = 0.0316 m3 m-3)相似,因此 MZ 平均土壤水分测量误差协方差矩阵显示传感器误差自相关性为 0.518。这些结果表明,当使用稀疏的原位土壤水分传感器的测量结果对土壤水力模型进行参数化时,用不相关的随机误差来确定参数和模型预测不确定性的常见假设是无效的。需要开展进一步研究,以评估本研究发现的误差协方差在多大程度上可应用于其他领域,以及它们如何影响土壤水文模型的参数估计。
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Pooled Error Variance and Covariance Estimation of Sparse In Situ Soil Moisture Sensor Measurements in Agricultural Fields in Flanders
Abstract. Accurately quantifying errors in soil moisture measurements from in situ sensors at fixed locations is essential for reliable state and parameter estimation in probabilistic soil hydrological modeling. This quantification becomes particularly challenging when the number of sensors per field or measurement zone (MZ) is limited. When direct calculation of errors from sensor data in a certain MZ is not feasible, we propose to pool systematic and random errors of soil moisture measurements for a specific measurement setup to derive a pooled error covariance matrix that applies across different fields and soil types. In this study, a pooled error covariance matrix was derived from soil moisture sensor measurements and soil moisture sampling campaigns conducted over three growing seasons, covering 93 cropping cycles in agricultural fields with diverse soil textures in Belgium. The MZ soil moisture estimated from soil samples, which showed a small standard error (0.0038 m3 m‑3) and which was not correlated between different sampling campaigns since soil samples were taken at different locations, represented the ‘true’ MZ soil moisture. First, we established a pooled linear recalibration of the TEROS 10 (Meter Group, Inc., USA) manufacturer's sensor calibration function. Then, for each individual sensor as well as for each MZ, we identified systematic deviations and temporally varying residual deviations between the calibrated sensor data and sampling data. The autocovariance of the individual or the MZ-averaged sensor measurement errors was represented by the variance of the systematic deviations across all sensors or MZs whereas the random error variance was calculated from the variance of the pooled residual deviations. The total error variance was equal to the sum of the autocovariance and random error variance. Due to spatial sensor correlation, the variance and autocovariance of MZ-average sensor measurement errors could not be derived from the individual sensor error variances and covariances. The pooled error covariance matrix of the MZ-averaged soil moisture measurements indicated a significant sensor error autocorrelation of 0.518, as the systematic error standard deviation (σα- = 0.0327 m3 m‑3) was similar to the random error standard deviation (σε- = 0.0316 m3 m‑3). These results demonstrate that the common assumption of uncorrelated random errors to determine parameter and model prediction uncertainty is not valid when measurements from sparse in situ soil moisture sensors are used to parameterize soil hydraulic models. Further research is required to assess to what extent the error covariances found in this study can be transferred to other areas, and how they impact parameter estimation in soil hydrological modeling.
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来源期刊
Soil
Soil Agricultural and Biological Sciences-Soil Science
CiteScore
10.80
自引率
2.90%
发文量
44
审稿时长
30 weeks
期刊介绍: SOIL is an international scientific journal dedicated to the publication and discussion of high-quality research in the field of soil system sciences. SOIL is at the interface between the atmosphere, lithosphere, hydrosphere, and biosphere. SOIL publishes scientific research that contributes to understanding the soil system and its interaction with humans and the entire Earth system. The scope of the journal includes all topics that fall within the study of soil science as a discipline, with an emphasis on studies that integrate soil science with other sciences (hydrology, agronomy, socio-economics, health sciences, atmospheric sciences, etc.).
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