Shuiwen dizhi gongcheng dizhi (May 2024)

A novel approach for estimating hydraulic conductivity of non-Gaussian aquifer

  • Meng SUN,
  • Qiankun LUO,
  • Zhiwei KONG,
  • Ming GUO,
  • Mingli LIU,
  • Jiazhong QIAN

DOI
https://doi.org/10.16030/j.cnki.issn.1000-3665.202308022
Journal volume & issue
Vol. 51, no. 3
pp. 23 – 33

Abstract

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The ensemble Kalman filter (EnKF) is one of the most widely used data assimilation methods. However, it exhibits limitations in handling non-Gaussian problems. To effectively address such issues and accurately describe the connectivity of aquifers, a novel approach named NS-ES-MDA is developed in this study. The proposed NS-ES-MDA synergistically combines the normal-score transformation (NST) with ensemble smoother with multiple data assimilation (ES-MDA). Through comparative experiments, the efficacy of NS-ES-MDA in estimating the hydraulic conductivity of non-Gaussian distributed aquifers is demonstrated. By assimilating the same dataset, NS-ES-MDA exhibits approximately 34% improvement in parameter estimation accuracy and about 35% enhancement in computational efficiency compared to the restart normal-score ensemble Kalman filter (rNS-EnKF). Furthermore, the NS-ES-MDA shows case robustness against the “equifinality” and displays remarkable updating capabilities, which leads to more precise parameter estimates. This study provides an effective solution for parameter estimation in non-Gaussian distributed aquifers.

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