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Improving parameter estimation for column experiments by multi-model evaluation and comparison

机译:通过多模型评估和比较改进柱实验的参数估计

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摘要

The equilibrium convection dispersion equation model is often unable to accurately simulate breakthrough curves from column experiments. While the non-equilibrium convection dispersion equation model may match the data well, uncertainty in parameter estimates is often large. In this work we investigate approaches to improve match for the equilibrium model and reduce parameter estimate uncertainty for the non-equilibrium model. Four column experiment data sets are selected from the literature for the illustration. For the equilibrium convection dispersion equation model, we show that measurement error, presence of immobile water, and other mechanisms can cause mismatch between model predictions and observations because the model is sensitive to water content. The mismatch may be overcome by calibrating the effective water content. For the non-equilibrium convection dispersion equation model, simultaneous fitting of multiple tracers with reduced number of calibration parameters (e.g., assuming the dispersivity and mobile water fraction to be identical for different tracers, the mass transfer coefficient to be proportional to tracer molecular diffusion coefficient) can reduce the uncertainty in parameter estimate and better identify/quantify the non-equilibrium processes. By evaluating and comparing the multiple estimates obtained with different choices of calibration parameters (e.g., fixing or estimating water content), parameterizations and models (e.g., equilibrium or non-equilibrium), the reliability of the data interpretation can be improved by quantifying uncertainty in the experiment, considering alternative transport processes, and following the principle of parsimony. Published by Elsevier B.V.
机译:平衡对流弥散方程模型通常无法准确地通过柱实验模拟突破曲线。尽管非平衡对流弥散方程模型可以很好地匹配数据,但参数估计的不确定性通常很大。在这项工作中,我们研究了提高平衡模型匹配度并减少非平衡模型参数估计不确定性的方法。从文献中选择了四列实验数据集进行说明。对于平衡对流弥散方程模型,我们表明测量误差,固定水的存在以及其他机制会导致模型预测和观测值之间的不匹配,因为该模型对水分敏感。失配可以通过校准有效水含量来克服。对于非平衡对流扩散方程模型,同时拟合具有减少的校准参数数量的多个示踪剂(例如,假设不同示踪剂的分散度和流动水分数相同,传质系数与示踪剂分子扩散系数成正比)可以减少参数估计中的不确定性,并更好地识别/量化非平衡过程。通过评估和比较使用不同选择的校准参数(例如,固定或估计水含量),参数化和模型(例如,平衡或非平衡)获得的多个估计,可以通过量化不确定性来提高数据解释的可靠性。在实验中,考虑了替代运输过程,并遵循了简约原则。由Elsevier B.V.发布

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