Estimating and modelling the risk of redox-sensitive phosphorus loss from saturated soils using different soil tests

Geoderma ◽  
2021 ◽  
Vol 398 ◽  
pp. 115094
Author(s):  
G.J. Smith ◽  
R.W. McDowell ◽  
K. Daly ◽  
D. Ó hUallacháin ◽  
L.M. Condron ◽  
...  
1984 ◽  
Author(s):  
R. S. Sandhu ◽  
S. J. Hong ◽  
B. L. Aboustit

2021 ◽  
Vol 190 ◽  
pp. 103110
Author(s):  
Zhaozhi Wang ◽  
T.Q. Zhang ◽  
C.S. Tan ◽  
Lulin Xue ◽  
Melissa Bukovsky ◽  
...  

Water ◽  
2019 ◽  
Vol 11 (7) ◽  
pp. 1520
Author(s):  
Zheng Jiang ◽  
Quanzhong Huang ◽  
Gendong Li ◽  
Guangyong Li

The parameters of water movement and solute transport models are essential for the accurate simulation of soil moisture and salinity, particularly for layered soils in field conditions. Parameter estimation can be achieved using the inverse modeling method. However, this type of method cannot fully consider the uncertainties of measurements, boundary conditions, and parameters, resulting in inaccurate estimations of parameters and predictions of state variables. The ensemble Kalman filter (EnKF) is well-suited to data assimilation and parameter prediction in Situations with large numbers of variables and uncertainties. Thus, in this study, the EnKF was used to estimate the parameters of water movement and solute transport in layered, variably saturated soils. Our results indicate that when used in conjunction with the HYDRUS-1D software (University of California Riverside, California, CA, USA) the EnKF effectively estimates parameters and predicts state variables for layered, variably saturated soils. The assimilation of factors such as the initial perturbation and ensemble size significantly affected in the simulated results. A proposed ensemble size range of 50–100 was used when applying the EnKF to the highly nonlinear hydrological models of the present study. Although the simulation results for moisture did not exhibit substantial improvement with the assimilation, the simulation of the salinity was significantly improved through the assimilation of the salinity and relative solutetransport parameters. Reducing the uncertainties in measured data can improve the goodness-of-fit in the application of the EnKF method. Sparse field condition observation data also benefited from the accurate measurement of state variables in the case of EnKF assimilation. However, the application of the EnKF algorithm for layered, variably saturated soils with hydrological models requires further study, because it is a challenging and highly nonlinear problem.


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