State and parameter estimation of two land surface models using the ensemble Kalman filter and the particle filter

Abstract. Land surface models (LSMs) use a large cohort of parameters and state variables to simulate the water and energy balance at the soil–atmosphere interface. Many of these model parameters cannot be measured directly in the field, and require calibration against measured fluxes of carbon dioxide, sensible and/or latent heat, and/or observations of the thermal and/or moisture state of the soil. Here, we evaluate the usefulness and applicability of four different data assimilation methods for joint parameter and state estimation of the Variable Infiltration Capacity Model (VIC-3L) and the Community Land Model (CLM) using a 5-month calibration (assimilation) period (March–July 2012) of areal-averaged SPADE soil moisture measurements at 5, 20, and 50 cm depths in the Rollesbroich experimental test site in the Eifel mountain range in western Germany. We used the EnKF with state augmentation or dual estimation, respectively, and the residual resampling PF with a simple, statistically deficient, or more sophisticated, MCMC-based parameter resampling method. The performance of the calibrated LSM models was investigated using SPADE water content measurements of a 5-month evaluation period (August–December 2012). As expected, all DA methods enhance the ability of the VIC and CLM models to describe spatiotemporal patterns of moisture storage within the vadose zone of the Rollesbroich site, particularly if the maximum baseflow velocity (VIC) or fractions of sand, clay, and organic matter of each layer (CLM) are estimated jointly with the model states of each soil layer. The differences between the soil moisture simulations of VIC-3L and CLM are much larger than the discrepancies among the four data assimilation methods. The EnKF with state augmentation or dual estimation yields the best performance of VIC-3L and CLM during the calibration and evaluation period, yet results are in close agreement with the PF using MCMC resampling. Overall, CLM demonstrated the best performance for the Rollesbroich site. The large systematic underestimation of water storage at 50 cm depth by VIC-3L during the first few months of the evaluation period questions, in part, the validity of its fixed water table depth at the bottom of the modeled soil domain.

[1]  J. Vrugt,et al.  On the value of soil moisture measurements in vadose zone hydrology: A review , 2008 .

[2]  Kuolin Hsu,et al.  Uncertainty assessment of hydrologic model states and parameters: Sequential data assimilation using the particle filter , 2005 .

[3]  Yan Chen,et al.  Data assimilation for transient flow in geologic formations via ensemble Kalman filter , 2006 .

[4]  P. Milly,et al.  Global Modeling of Land Water and Energy Balances. Part II: Land-Characteristic Contributions to Spatial Variability , 2002 .

[5]  Henrik Madsen,et al.  Generalized likelihood uncertainty estimation (GLUE) using adaptive Markov Chain Monte Carlo sampling , 2008 .

[6]  M. Williams,et al.  Improving land surface models with FLUXNET data , 2009 .

[7]  Gift Dumedah,et al.  Evaluating forecasting performance for data assimilation methods: The ensemble Kalman filter, the particle filter, and the evolutionary-based assimilation , 2013 .

[8]  Soroosh Sorooshian,et al.  Evolution of ensemble data assimilation for uncertainty quantification using the particle filter‐Markov chain Monte Carlo method , 2012 .

[9]  Nunzio Romano,et al.  Parameterization of a bucket model for soil-vegetation-atmosphere modeling under seasonal climatic regimes , 2011 .

[10]  M. Drusch,et al.  Estimation of Radiative Transfer Parameters from L‐Band Passive Microwave Brightness Temperatures Using Advanced Data Assimilation , 2013 .

[11]  Ibrahim Hoteit,et al.  Dual states estimation of a subsurface flow-transport coupled model using ensemble Kalman filtering , 2013 .

[12]  Robert E. Dickinson,et al.  Modeling Evapotranspiration for Three‐Dimensional Global Climate Models , 2013 .

[13]  Zhao Ren-jun,et al.  The Xinanjiang model applied in China , 1992 .

[14]  P. Fearnhead,et al.  Improved particle filter for nonlinear problems , 1999 .

[15]  N. Gordon,et al.  Novel approach to nonlinear/non-Gaussian Bayesian state estimation , 1993 .

[16]  T. Başar,et al.  A New Approach to Linear Filtering and Prediction Problems , 2001 .

[17]  Bart Nijssen,et al.  Monte Carlo sensitivity analysis of land surface parameters using the Variable Infiltration Capacity model , 2007 .

[18]  Hamid Moradkhani,et al.  Examining the effectiveness and robustness of sequential data assimilation methods for quantification of uncertainty in hydrologic forecasting , 2012 .

[19]  M. Wigmosta,et al.  A distributed hydrology-vegetation model for complex terrain , 1994 .

[20]  Peter K. Kitanidis,et al.  Real‐time forecasting with a conceptual hydrologic model: 1. Analysis of uncertainty , 1980 .

[21]  G. Bonan Forests and Climate Change: Forcings, Feedbacks, and the Climate Benefits of Forests , 2008, Science.

[22]  Liangsheng Shi,et al.  Numerical Comparison of Iterative Ensemble Kalman Filters for Unsaturated Flow Inverse Modeling , 2014 .

[23]  Zong-Liang Yang,et al.  A simple TOPMODEL-based runoff parameterization (SIMTOP) for use in global climate models , 2005 .

[24]  H. Vereecken,et al.  Potential of Wireless Sensor Networks for Measuring Soil Water Content Variability , 2010 .

[25]  Cajo J. F. ter Braak,et al.  Treatment of input uncertainty in hydrologic modeling: Doing hydrology backward with Markov chain Monte Carlo simulation , 2008 .

[26]  Hongxiang Yan,et al.  Improving Soil Moisture Profile Prediction With the Particle Filter-Markov Chain Monte Carlo Method , 2015, IEEE Transactions on Geoscience and Remote Sensing.

[27]  Zhongbo Yu,et al.  Dual state-parameter estimation of root zone soil moisture by optimal parameter estimation and extended Kalman filter data assimilation , 2011 .

[28]  Neil J. Gordon,et al.  A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking , 2002, IEEE Trans. Signal Process..

[29]  Chunlin Huang,et al.  Comparison of ensemble-based state and parameter estimation methods for soil moisture data assimilation , 2015 .

[30]  D. Pasetto,et al.  Ensemble Kalman filter versus particle filter for a physically-based coupled surface-subsurface model , 2012 .

[31]  R. H. Brooks,et al.  Hydraulic properties of porous media , 1963 .

[32]  Stefan Kollet,et al.  Sensitivity of Latent Heat Fluxes to Initial Values and Parameters of a Land‐Surface Model , 2010 .

[33]  Jasper A. Vrugt,et al.  Markov chain Monte Carlo simulation using the DREAM software package: Theory, concepts, and MATLAB implementation , 2016, Environ. Model. Softw..

[34]  Jasper A. Vrugt,et al.  Hydrologic data assimilation using particle Markov chain Monte Carlo simulation: Theory, concepts and applications (online first) , 2012 .

[35]  J. Whitaker,et al.  Evaluating Methods to Account for System Errors in Ensemble Data Assimilation , 2012 .

[36]  Rachel Cardell-Oliver,et al.  Wireless soil moisture sensor networks for environmental monitoring and vineyard irrigation , 2009 .

[37]  C. Diks,et al.  Improved treatment of uncertainty in hydrologic modeling: Combining the strengths of global optimization and data assimilation , 2005 .

[38]  G. Evensen,et al.  Analysis Scheme in the Ensemble Kalman Filter , 1998 .

[39]  Harrie-Jan Hendricks Franssen,et al.  Identification of time‐variant river bed properties with the ensemble Kalman filter , 2012 .

[40]  Zong-Liang Yang,et al.  Development of a simple groundwater model for use in climate models and evaluation with Gravity Recovery and Climate Experiment data , 2007 .

[41]  G. Hornberger,et al.  Empirical equations for some soil hydraulic properties , 1978 .

[42]  Harrie-Jan Hendricks Franssen,et al.  Characterisation of river–aquifer exchange fluxes: The role of spatial patterns of riverbed hydraulic conductivities , 2015 .

[43]  Jeffrey L. Anderson,et al.  An adaptive covariance inflation error correction algorithm for ensemble filters , 2007 .

[44]  Evaluation of Tipping Bucket Rain Gauge Performance and Data Quality , 2004 .

[45]  Yuqiong Liu,et al.  Uncertainty in hydrologic modeling: Toward an integrated data assimilation framework , 2007 .

[46]  Harrie-Jan Hendricks Franssen,et al.  Soil moisture and soil properties estimation in the Community Land Model with synthetic brightness temperature observations , 2014 .

[47]  M. Franchini,et al.  Comparative analysis of several conceptual rainfall-runoff models , 1991 .

[48]  Eric Moulines,et al.  Comparison of resampling schemes for particle filtering , 2005, ISPA 2005. Proceedings of the 4th International Symposium on Image and Signal Processing and Analysis, 2005..

[49]  Soroosh Sorooshian,et al.  Dual state-parameter estimation of hydrological models using ensemble Kalman filter , 2005 .

[50]  D. Lettenmaier,et al.  A simple hydrologically based model of land surface water and energy fluxes for general circulation models , 1994 .

[51]  Dennis P. Lettenmaier,et al.  Hydrologic effects of frozen soils in the upper Mississippi River basin , 1999 .

[52]  Xubin Zeng,et al.  Improving the Numerical Solution of Soil Moisture-Based Richards Equation for Land Models with a Deep or Shallow Water Table , 2009 .

[53]  A. Perrier,et al.  SECHIBA : a new set of parameterizations of the hydrologic exchanges at the land-atmosphere interface within the LMD atmospheric general circulation model , 1993 .

[54]  Christopher J. Duffy,et al.  Parameter estimation of a physically based land surface hydrologic model using the ensemble Kalman filter: A synthetic experiment , 2014 .

[55]  Zhenghui Xie,et al.  A new parameterization for surface and groundwater interactions and its impact on water budgets with the variable infiltration capacity (VIC) land surface model , 2003 .

[56]  G. Evensen Sequential data assimilation with a nonlinear quasi‐geostrophic model using Monte Carlo methods to forecast error statistics , 1994 .

[57]  D. Higdon,et al.  Accelerating Markov Chain Monte Carlo Simulation by Differential Evolution with Self-Adaptive Randomized Subspace Sampling , 2009 .

[58]  Christian Blondin,et al.  Parameterization of Land-Surface Processes in Numerical Weather Prediction , 1991 .

[59]  Ju Hyoung Lee Spatial‐Scale Prediction of the SVAT Soil Hydraulic Variables Characterizing Stratified Soils on the Tibetan Plateau from an EnKF Analysis of SAR Soil Moisture , 2014 .

[60]  D. Lettenmaier,et al.  Surface soil moisture parameterization of the VIC-2L model: Evaluation and modification , 1996 .

[61]  Zong-Liang Yang,et al.  Technical description of version 4.5 of the Community Land Model (CLM) , 2013 .

[62]  D. Lettenmaier,et al.  Water budget record from variable infiltration capacity (VIC) model , 2010 .

[63]  Gordon B. Bonan,et al.  Benefits of Forests Forests and Climate Change: Forcings, Feedbacks, and the Climate , 2014 .

[64]  David M. Lawrence,et al.  Incorporating organic soil into a global climate model , 2008 .

[65]  Niko E. C. Verhoest,et al.  Optimization of Soil Hydraulic Model Parameters Using Synthetic Aperture Radar Data: An Integrated Multidisciplinary Approach , 2009, IEEE Transactions on Geoscience and Remote Sensing.

[66]  Henrik Madsen,et al.  Data assimilation in integrated hydrological modeling using ensemble Kalman filtering: evaluating the effect of ensemble size and localization on filter performance , 2015 .

[67]  Harrie-Jan Hendricks Franssen,et al.  Joint assimilation of piezometric heads and groundwater temperatures for improved modeling of river‐aquifer interactions , 2013 .

[68]  M. Canty,et al.  Hydraulic parameter estimation by remotely-sensed top soil moisture observations with the particle filter , 2011 .

[69]  A. Weerts,et al.  Particle filtering and ensemble Kalman filtering for state updating with hydrological conceptual rainfall‐runoff models , 2006 .

[70]  Zhenghui Xie,et al.  Regional Parameter Estimation of the VIC Land Surface Model: Methodology and Application to River Basins in China , 2007 .

[71]  G. Hornberger,et al.  A Statistical Exploration of the Relationships of Soil Moisture Characteristics to the Physical Properties of Soils , 1984 .

[72]  Ronggao Liu,et al.  Simultaneous estimation of both soil moisture and model parameters using particle filtering method through the assimilation of microwave signal , 2009 .

[73]  Velimir V. Vesselinov,et al.  Improved inverse modeling for flow and transport in subsurface media: Combined parameter and state estimation , 2005 .

[74]  G. Lannoy,et al.  The importance of parameter resampling for soil moisture data assimilation into hydrologic models using the particle filter , 2011 .

[75]  Insa Neuweiler,et al.  Using a bias aware EnKF to account for unresolved structure in an unsaturated zone model , 2014 .

[76]  Eric F. Wood,et al.  An efficient calibration method for continental‐scale land surface modeling , 2008 .

[77]  Jeffrey P. Walker,et al.  Hydrologic Data Assimilation , 2012 .

[78]  Domenico Baù,et al.  Estimating geostatistical parameters and spatially-variable hydraulic conductivity within a catchment system using an ensemble smoother , 2011 .

[79]  Hans-Jörg Vogel,et al.  Modeling Soil Processes: Review, Key Challenges, and New Perspectives , 2016 .

[80]  Steven A. Margulis,et al.  Real‐Time Soil Moisture and Salinity Profile Estimation Using Assimilation of Embedded Sensor Datastreams , 2013 .

[81]  Jun S. Liu,et al.  Sequential Monte Carlo methods for dynamic systems , 1997 .

[82]  Steven A. Margulis,et al.  Feasibility of real-time soil state and flux characterization for wastewater reuse using an embedded sensor network data assimilation approach , 2011 .

[83]  K. Mitchell,et al.  Simple water balance model for estimating runoff at different spatial and temporal scales , 1996 .

[84]  Christopher J. Duffy,et al.  Parameter estimation of a physically-based land surface hydrologic model using an ensemble Kalman filter: A multivariate real-data experiment , 2015 .

[85]  H. Vereecken,et al.  Effects of Soil Hydraulic Properties on the Spatial Variability of Soil Water Content: Evidence from Sensor Network Data and Inverse Modeling , 2014 .

[86]  D. Entekhabi,et al.  Surface heat flux estimation with the ensemble Kalman smoother: Joint estimation of state and parameters , 2012 .

[87]  W. Kinzelbach,et al.  Real‐time groundwater flow modeling with the Ensemble Kalman Filter: Joint estimation of states and parameters and the filter inbreeding problem , 2008 .

[88]  W. J. Shuttleworth,et al.  Putting the "vap" into evaporation , 2007 .

[89]  Damiano Pasetto,et al.  Impact of sensor failure on the observability of flow dynamics at the Biosphere 2 LEO hillslopes. , 2015 .

[90]  J. Monteith CHAPTER 7 – Gas Exchange in Plant Communities , 1963 .