Title :
Application of Crop Model Data Assimilation With a Particle Filter for Estimating Regional Winter Wheat Yields
Author :
Zhiwei Jiang ; Zhongxin Chen ; Jin Chen ; Jia Liu ; Jianqiang Ren ; Zongnan Li ; Liang Sun ; He Li
Author_Institution :
State Key Lab. of Earth Surface Processes & Resource Ecology, Beijing Normal Univ., Beijing, China
Abstract :
To improve the performance of crop models for regional crop yield estimates, a particle filter (PF) was introduced to develop a data assimilation strategy using the Crop Environment Resource Synthesis (CERES)-Wheat model. Two experiments involving winter wheat yield estimations were conducted at a field plot and on a regional scale to test the feasibility of the PF-based data assimilation strategy and to analyze the effects of the PF parameters and spatiotemporal scales of assimilating observations on the performance of the crop model data assimilation. The significant improvements in the yield estimation suggest that PF-based crop model data assimilation is feasible. Winter wheat yields from the field plots were forecasted with a determination coefficient (R2) of 0.87, a root-mean-square error (RMSE) of 251 kg/ha, and a relative error (RE) of 2.95%. An acceptable yield at the county scale was estimated with a R2 of 0.998, a RMSE of 9734 t, and a RE of 4.29%. The optimal yield estimates may be highly dependent on the reasonable spatiotemporal resolution of assimilating observations. A configuration using a particle size of 50, LAI maps with a moderate spatial resolution (e.g., 1 km), and an assimilation interval of 20 d results in a reasonable tradeoff between accuracy and effectiveness in regional applications.
Keywords :
crops; data assimilation; CERES-wheat model; PF parameter effect analysis; PF-based crop model data assimilation; PF-based data assimilation strategy; RMSE; assimilating observation spatiotemporal resolution; assimilating observation spatiotemporal scale; assimilation interval; county scale acceptable yield; crop environment resource synthesis; crop model data assimilation application; crop model data assimilation performance; crop model performance; data assimilation strategy; determination coefficient forecast; moderate spatial resolution; particle filter; particle size configuration; regional application accuracy; regional application effectiveness; regional crop yield estimation; regional scale; regional winter wheat yield estimation; root-mean-square error; yield estimation improvement; Agriculture; Biological system modeling; Data assimilation; Data models; Remote sensing; Soil; Yield estimation; Crop model; data assimilation; leaf area index; particle filter (PF); remote sensing; yield estimation;
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
DOI :
10.1109/JSTARS.2014.2316012