Within-season crop yield prediction by a multi-model ensemble with integrated data assimilation

被引:6
|
作者
Zare, Hossein [1 ]
Weber, Tobias K. D. [2 ]
Ingwersen, Joachim [1 ]
Nowak, Wolfgang [3 ]
Gayler, Sebastian [1 ]
Streck, Thilo [1 ]
机构
[1] Univ Hohenheim, Inst Soil Sci & Land Evaluat, Emil Wolff Str 27, D-70599 Stuttgart, Germany
[2] Univ Kassel, Fac Organ Agr Sci, Soil Sci Sect, Nordbahnhofstr 1A, D-37213 Witzenhausen, Germany
[3] Univ Stuttgart, Inst Modelling Hydraul & Environm Syst, Pfaffenwaldring 5A, D-70569 Stuttgart, Germany
关键词
LAI assimilation; Particle filtering; Process-based crop model; Uncertainty analysis; Yield forecast; Multi-model ensemble; LEAF-AREA INDEX; HYDRAULIC PEDOTRANSFER FUNCTIONS; SIMULATION-MODEL; SOIL-MOISTURE; UNCERTAINTY; VEGETATION; CONDUCTIVITY; VARIABILITY; IMPACT; GROWTH;
D O I
10.1016/j.fcr.2024.109293
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Improving crop yield prediction accuracy is crucial for sustainable agriculture. One approach is to use data assimilation (DA) techniques based on satellite remote sensing, which can help improve predictions at the regional to national scale. However, the interaction between uncertain crop model inputs and DA, as well as the impact of crop model structure on DA results, have received little attention to date. In this work, we assimilated leaf area index (LAI) data into three single crop models (CERES, GECROS, and SPASS) as well as into their multimodel ensemble (MME) using a particle filtering (PF) algorithm. Mimicking the common lack of information at a large scale, we considered nitrogen fertilization, sowing date, soil hydraulic parameters, and weather data as the sources of uncertainties. In a case study, we applied this setup to six winter wheat site years in southwestern Germany. Before applying DA, all models were calibrated and validated using in-situ measured data from a multi-site, multi-year independent data set. The model performance in the calibration was used to assign weights to the models of the MME. Results show that weather data and soil hydraulic parameters had the highest impact on all model predictions. DA substantially improved the accuracy and precision of LAI simulation in all models. Moreover, DA enhanced grain yield prediction by GECROS, SPASS, and the multi-model ensemble, but had no considerable effect on CERES. Specifically, the bias in yield prediction decreased from 25% to 15% in the case of GECROS, from 26% to 15% in SPASS, and from 19% to 7% in the MME. In contrast, even without DA, the yield prediction error in CERES was below 5%. The correlation between LAI errors and yield errors was a key factor indicating how DA can be effective on a specific model. When the correlation analysis is unavailable, the multimodel ensemble is a promising approach for data assimilation. Further investigations on regional model calibration, input uncertainty, MME size, and model weighting scheme are necessary to improve the performance of data assimilation applications.
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页数:16
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