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Assimilation of Remote Sensing and Crop Model for LAI Estimation Based on Ensemble Kalman Filter
Authors:LI Rui  LI Cun-jun  DONG Ying-ying  LIU Feng  WANG Ji-hua  YANG Xiao-dong  PAN Yu-chun
Institution:1. Beijing Research Center for Information Technology in Agriculture, Beijing 100097, PR.China;Information Engineering Institute, Capital Normal University, Beijing 100048, P.R.China;Chengdu Dawan High School, Chengdu 610300, P.R.China
2. Beijing Research Center for Information Technology in Agriculture, Beijing 100097, PR.China
Abstract:Data assimilation in agricultural remote sensing research is of great significance to integrate with remote sensing observations and model simulations for parameters estimation.The present investigation not only designed and realized the Ensemble Kaiman Filtering algorithm (EnKF) assimilation by combing the crop growth model (CERES-Wheat) with remote sensing data,but also optimized and updated the key parameters (LAI) of winter wheat by using remote sensing data.Results showed that the assimilation LAI and the observation ones agreed with each other,and the R2 reached 0.8315.So assimilation remote sensing and crop model could provide reference data for the agricultural production.
Keywords:crop model  assimilation  Ensemble Kalman Filter algorithm  leaf area index
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