Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of Data

In the past few decades, different data assimilation methods have been proposed to estimate soil parameters. It is not clear whether a straightforward sampling approach is sufficient or whether a linear filter or even an advanced nonlinear filter is needed to interpret the potential information carr...

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Main Authors: Yuanyuan Zha, Penghui Zhu, Qiuru Zhang, Wei Mao, Liangsheng Shi
Format: Article
Language:English
Published: Wiley 2019-09-01
Series:Vadose Zone Journal
Online Access:https://dl.sciencesocieties.org/publications/vzj/articles/18/1/190013
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spelling doaj-2f7bba33ad9040b1a388523f163708d62020-11-25T01:29:41ZengWileyVadose Zone Journal1539-16632019-09-0118110.2136/vzj2019.01.0013Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of DataYuanyuan ZhaPenghui ZhuQiuru ZhangWei MaoLiangsheng ShiIn the past few decades, different data assimilation methods have been proposed to estimate soil parameters. It is not clear whether a straightforward sampling approach is sufficient or whether a linear filter or even an advanced nonlinear filter is needed to interpret the potential information carried by different data types (e.g., pressure head and water content data from multiple depths, easily available surface soil moisture data, and groundwater level data). In this study, three classical data assimilation methods, i.e., the ensemble Kalman filter (EnKF), the ensemble randomized maximum likelihood filter (EnRML), and the Markov chain Monte Carlo (MCMC), were investigated numerically in terms of the utility to cope with three different types of observations. Results show that, compared with the EnKF approach, EnRML is a superior method to extract the parameter information from observations. The MCMC approach performs well in homogeneous soil but not in heterogeneous soil. Regardless of the data assimilation methods and the soil heterogeneity, point-scale soil water pressure head data are the most valuable in terms of soil parameter estimation, followed by groundwater level data, which require a nonlinear filter to interpret. A smaller observation error for groundwater level data leads to obviously improved parameter estimates by using EnRML with a slight improvement by using EnKF. The stable performance of the EnKF method relies more heavily on a relatively large number of ensembles than the EnRML method, whereas only a few ensemble members are needed for EnRML in a homogeneous soil column.https://dl.sciencesocieties.org/publications/vzj/articles/18/1/190013
collection DOAJ
language English
format Article
sources DOAJ
author Yuanyuan Zha
Penghui Zhu
Qiuru Zhang
Wei Mao
Liangsheng Shi
spellingShingle Yuanyuan Zha
Penghui Zhu
Qiuru Zhang
Wei Mao
Liangsheng Shi
Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of Data
Vadose Zone Journal
author_facet Yuanyuan Zha
Penghui Zhu
Qiuru Zhang
Wei Mao
Liangsheng Shi
author_sort Yuanyuan Zha
title Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of Data
title_short Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of Data
title_full Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of Data
title_fullStr Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of Data
title_full_unstemmed Investigation of Data Assimilation Methods for Soil Parameter Estimation with Different Types of Data
title_sort investigation of data assimilation methods for soil parameter estimation with different types of data
publisher Wiley
series Vadose Zone Journal
issn 1539-1663
publishDate 2019-09-01
description In the past few decades, different data assimilation methods have been proposed to estimate soil parameters. It is not clear whether a straightforward sampling approach is sufficient or whether a linear filter or even an advanced nonlinear filter is needed to interpret the potential information carried by different data types (e.g., pressure head and water content data from multiple depths, easily available surface soil moisture data, and groundwater level data). In this study, three classical data assimilation methods, i.e., the ensemble Kalman filter (EnKF), the ensemble randomized maximum likelihood filter (EnRML), and the Markov chain Monte Carlo (MCMC), were investigated numerically in terms of the utility to cope with three different types of observations. Results show that, compared with the EnKF approach, EnRML is a superior method to extract the parameter information from observations. The MCMC approach performs well in homogeneous soil but not in heterogeneous soil. Regardless of the data assimilation methods and the soil heterogeneity, point-scale soil water pressure head data are the most valuable in terms of soil parameter estimation, followed by groundwater level data, which require a nonlinear filter to interpret. A smaller observation error for groundwater level data leads to obviously improved parameter estimates by using EnRML with a slight improvement by using EnKF. The stable performance of the EnKF method relies more heavily on a relatively large number of ensembles than the EnRML method, whereas only a few ensemble members are needed for EnRML in a homogeneous soil column.
url https://dl.sciencesocieties.org/publications/vzj/articles/18/1/190013
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