Optimal estimation of irrigation schedule – An example of quantifying human interferences to hydrologic processes |
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Authors: | Dingbao Wang Ximing Cai |
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Institution: | Ven Te Chow Hydrosystems Laboratory, Civil and Environmental Engineering, University of Illinois at Urbana-Champaign, Urbana 61801, IL, United States |
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Abstract: | Reliable records of water use for irrigation are often lacking. This presents a difficulty for a qualified water use and water availability assessment. Quantification of the hydrologic cycle processes in regions of intensive agricultural practice requires irrigation as an input to hydrologic models. This paper presents a coupled forward-inverse framework to estimate irrigation schedule using remote-sensed data and data assimilation and optimization techniques. Irrigation schedule is treated as an unknown input to a hydro-agronomic simulation model. Remote-sensed data is used to assess actual crop evapotranspiration, which is used as the “observation” of the computed crop evapotranspiration from the simulation model. To handle the impact of model and observation error and the unknown biased error with irrigation inputs, a coupled forward-inverse approach is proposed, implemented and tested. The coupled approach is realized by an integrated ensemble Kalman filter (EnKF) and genetic algorithm (GA). The result from a case study demonstrates that the forward and inverse procedures in the coupled framework are complementary to each other. Further analysis is provided on the impact of model and observation errors on the non-uniqueness problem with inverse modeling and on the exactness of irrigation estimates. |
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Keywords: | Human interferences Irrigation Evapotranspiration Data assimilation Genetic algorithm Uncertainties |
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