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首页> 外文期刊>Ecological Modelling >Uncertainty assessment of soil water content spatial patterns using geostatistical simulations: An empirical comparison of a simulation accounting for single attribute and a simulation accounting for secondary information
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Uncertainty assessment of soil water content spatial patterns using geostatistical simulations: An empirical comparison of a simulation accounting for single attribute and a simulation accounting for secondary information

机译:使用地统计模拟对土壤水分空间格局的不确定性评估:单一属性模拟和辅助信息模拟的经验比较

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This study compares sequential Gaussian simulation (sGs), and collocated cokriging simulation (CCS) algorithms with respect to their success in modeling prediction uncertainty, and their accuracy in making point predictions of water content (w) in the soil cores of a 10 ha area located in the Picardie region (Northern of France). The ability of sGs, and CCS in modeling uncertainty, and making point predictions was confronted with results achieved by ordinary kriging (OK), and collocated cokriging (CC) interpolation methods. A set of 81w samples was collected at the first 0.6 m of soil. A first set of 51 measurements achieved through stratified random sampling was used for simulations, and interpolations. Thus, the remainder set of 30 measurements was kept for the validation. Electrical resistivity (ER1) of the first depth (0.5 m) of investigation, which is linearly related to w and exhaustively sampled over the whole study area, was used as exhaustively sampled secondary information in the predictions, and the modeling of local, and spatial uncertainties of the target variable w using CCS and CC algorithms. In terms of the accuracy in making point predictions by simulation, and interpolation approaches, the results have shown that the approaches accounting for secondary exhaustive information (CCS and CC) are the more accurate. However, the difference between CCS and CC was not statistically significant stressing thus the convergence between a mean realization of a simulation algorithm, when the number of realizations is large enough, and the predicted map of an interpolation algorithm. As regards the modeling local uncertainty using accuracy plots, and goodness statistic (G), results have shown that CCS performed better the modeling prediction uncertainty than sGs that ignores the secondary exhaustive information in modeling uncertainty, and an improvement of local certainty on w was observed, through small values of standard deviations of the whole realizations at validation sites, for CCS compared to sGs. Regarding the spatial uncertainty, results revealed that the assessment of spatial uncertainty using simulation algorithms (sGs or CCS) were more revealing and more realistic than spatial uncertainty assessment using interpolation algorithms (OK or CC). The standard deviations varied much less across the study area for OK and CC compared to standard deviations across the study area for sGs and CCS highlighting that for interpolation algorithms, the variance of the errors is independent of the actual data values, and depends only on the data configurations.
机译:这项研究比较了顺序高斯模拟(sGs)和并置协同克里格模拟(CCS)算法在建模预测不确定性方面的成功以及在进行10公顷地区土壤核心含水量(w)的点预测方面的准确性位于法国北部的皮卡第(Picardie)地区。 sGs和CCS在建模不确定性以及进行点预测方面的能力面临着普通克里金法(OK)和并置共克里金法(CC)插值方法获得的结果。在前0.6 m的土壤中收集了81份样品。通过分层随机抽样获得的第一组51个测量值用于模拟和插值。因此,保留其余的30个测量值用于验证。第一个深度(0.5 m)的电阻率(ER1)与w线性相关,并在整个研究区域中进行了详尽的采样,在预测以及局部和空间建模中,将其用作详尽采样的次要信息使用CCS和CC算法确定目标变量w的不确定性。在通过仿真和插值方法进行点预测的准确性方面,结果表明,考虑次要穷举信息(CCS和CC)的方法更为准确。但是,CCS和CC之间的差异在统计上并不显着,因此,当实现的数量足够大时,模拟算法的平均实现与插值算法的预测图之间的收敛。关于使用精度图和优度统计量(G)建模局部不确定性的结果,结果表明CCS的建模预测不确定性要好于在建模不确定性中忽略次要穷举信息的sGs,并且观察到w的局部确定性得到了改善,通过CCS与sG相比,验证站点上整个实现的标准偏差值较小。关于空间不确定性,结果表明,与使用插值算法(OK或CC)进行空间不确定性评估相比,使用模拟算法(sGs或CCS)进行空间不确定性评估更具启发性和现实性。与sGs和CCS的研究区域的标准偏差相比,OK和CC的研究区域的标准偏差变化小得多,这突出表明对于插值算法,误差的方差与实际数据值无关,并且仅取决于数据配置。

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