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A New Inverse Modeling Approach for Hydraulic Conductivity Estimation Based on Gaussian Mixtures

机译:基于高斯混合的液压导电性估计的一种新的逆建模方法

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This study proposes a new inverse algorithm to estimate the hydraulic conductivity (K) distribution based on a Gaussian Mixture Model that significantly reduces the number of parameters to be estimated during the inversion process. Moreover, a new objective function that increases the sensitivity of parameters using the spatial derivatives of hydraulic heads is introduced, and the algorithm is further improved by including a Bayes estimator that takes advantage of different possible solutions. The developed approach is tested through multiple synthetic experiments consisting of 250 randomly generatedKfields resulting in different levels of heterogeneity and the use of different number of pumping tests, with a total of 1,000 cases of two-dimensional configuration. A large number of cases are considered to ensure that our findings and conclusions are not based on a single realization. Results revealed significant improvements toKestimates, computational time, and predictions of independently conducted tests not used in the calibration effort when compared to a geostatistical inverse approach. Overall, our results reveal that the Gaussian Mixture inversion approach is able to achieve similar or higher levels of accuracy using half of the pumping tests and 20% of the computational time compared to a geostatistical inversion approach.
机译:本研究提出了一种新的逆算法来估计基于高斯混合模型的液压导电性(k)分布,从而显着减少了在反转过程中估计的参数的数量。此外,介绍了使用液压头的空间衍生物增加参数灵敏度的新客观函数,并且通过包括利用不同可能的解决方案的贝叶斯估计器进一步提高了算法。通过由250个随机生成的Kfields组成的多个合成实验来测试开发的方法,导致不同级别的异质性和使用不同数量的泵送测试,共有1,000例二维配置。考虑了大量案件,以确保我们的发现和结论不是基于单一的实现。结果显示,与地统计逆方法相比,在校准工作中未使用的独立进行测试的显着改进,计算时间和预测。总体而言,我们的结果表明,与地质统计反转方法相比,高斯混合反转方法能够使用一半的泵送测试和20%的计算时间来实现类似的或更高的精度。

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