Oryza2000模型在江苏单作水稻适应性初探

B. Lu, Kun Yu, Zhiming Wang, Jing Wang, Liangjun Mao
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引用次数: 1

摘要

ORYZA2000水稻模型是目前由国际水稻研究所(IRRI)和荷兰瓦赫宁根大学联合开发的最通用的水稻生长模拟模型。本文以素有“天衣之乡”之誉的江苏省为研究区,利用相同(相近)品种在直播和移栽条件下的数据集,对ORYZA2000进行评价,验证模型在相同标定参数集下再现不同建立方式对苏中地区单季水稻生长发育影响的能力和适应性。野外试验于2016年进行。将江苏中部9个野外试验点的观测数据分为校准数据集和验证数据集。总体而言,通过参数调整和模型定位,ORYZA2000模型具有较强的适应性,可以应用于江苏省的情景分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preliminary Approach on Adaptability of Oryza2000 Model for Single Cropping Rice in Jiangsu Province (China)
The ORYZA2000 rice model is currently the most versatile rice growth simulation model jointly developed by the International Rice Research Institute (IRRI) and the Wageningen University. In this paper, Jiangsu province, well known as land of plenty, was chosen as a study area to evaluate ORYZA2000 using datasets where the same (similar) varieties were grown under both direct sowing and transplanting conditions, in order to verify the capability and adaptability of model to reproduce the effect of different establishing methods on single-cropping rice growth and development in the middle region of Jiangsu province with the same calibrated parameter set. The field experiments were carried out in 2016. All the available observation data, collected at nine field experimental sites located in the middle region of Jiangsu province, was split into calibration and validation datasets. In the general, it is concluded that the ORYZA2000 model was adaptable and could be applied in scenarios analysis in Jiangsu province with the parameters adjustment and the model localization.
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