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Effect of unrepresented model errors on estimated soil hydraulic material properties

机译:无代表性的模型误差对估算的土壤水硬性状的影响

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Unrepresented model errors influence the estimation of effective soil hydraulic material properties. As the required model complexity for a consistent description of the measurement data is application dependent and unknown a priori, we implemented a structural error analysis based on the inversion of increasingly complex models. We show that the method can indicate unrepresented model errors and quantify their effects on the resulting material properties. To this end, a complicated 2-D subsurface architecture (ASSESS) was forced with a fluctuating groundwater table while time domain reflectometry (TDR) and hydraulic potential measurement devices monitored the hydraulic state. In this work, we analyze the quantitative effect of unrepresented (i)?sensor position uncertainty, (ii)?small scale-heterogeneity, and (iii)?2-D flow phenomena on estimated soil hydraulic material properties with a 1-D and a 2-D study. The results of these studies demonstrate three main points: (i)?the fewer sensors are available per material, the larger is the effect of unrepresented model errors on the resulting material properties. (ii)?The 1-D study yields biased parameters due to unrepresented lateral flow. (iii)?Representing and estimating sensor positions as well as small-scale heterogeneity decreased the mean absolute error of the volumetric water content data by more than a factor of?2 to 0.?004.
机译:未表示的模型误差会影响土壤水硬性材料有效特性的估算。由于对测量数据进行一致描述所需的模型复杂性取决于应用程序,并且先验未知,因此,我们基于越来越复杂的模型的反演实现了结构误差分析。我们表明,该方法可以指示未表示的模型误差,并量化其对所得材料特性的影响。为此,在地下水位波动的情况下,迫使采用复杂的2D地下结构(ASSESS),而时域反射仪(TDR)和液压势能测量设备则对液压状态进行监测。在这项工作中,我们分析了无代表性的(i)?传感器位置不确定性,(ii)?小尺度异质性和(iii)?2-D流动现象对一维和二维土壤水力材料特性的定量影响。二维研究。这些研究的结果表明了三个要点:(i)每种材料可用的传感器越少,模型误差对所得材料性能的影响越大。 (ii)?一维研究由于无侧向流动而产生参数有偏差。 (iii)表示和估计传感器位置以及小范围的异质性将体积含水量数据的平均绝对误差减小了超过2倍至0.004倍。

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