...
首页> 外文期刊>Tellus. A >Evaluation of downscaled DEMETER multi-model ensemble seasonal hindcasts in a northern Italy location by means of a model of wheat growth and soil water balance
【24h】

Evaluation of downscaled DEMETER multi-model ensemble seasonal hindcasts in a northern Italy location by means of a model of wheat growth and soil water balance

机译:利用小麦生长和土壤水分平衡模型评估意大利北部地区的DEMETER多模式总体季节性后遗症

获取原文
获取原文并翻译 | 示例

摘要

In this paper we explore the new possibilities for early crop yield assessment at the local scale arising from the availability of dynamic crop growth models and of downscaled multi-model ensemble seasonal forecasts. We compare the use of the latter with other methods, based on crop growth models driven by observed climatic data only. The soil water balance model developed and used at ARPA Emilia-Romagna (CRITERIA) was integrated with crop growth routines from the model WOFOST 7.1. Some validation runs were first carried out and we verified with independent field data that the new integrated model satisfactorily simulated above-ground biomass and leaf area index. The model was then used to test the feasibility of using downscaled multi-model ensemble seasonal hindcasts, coming from the DEMETER European research project, in order to obtain early (i.e. 90, 60 and 30 d before harvest) yield assessments for winter wheat in northern Italy. For comparison, similar runs with climatology instead of hindcasts were also carried out. For the same purpose, we also produced six simple linear regression models of final Crop yields on within season (end of March, April and May) storage organs and above-ground biomass values. Median yields obtained using downscaled DEMETER hindcasts always outperformed the simple regression models and were substantially equivalent to the climatology runs, with the exception of the June experiment, where the downscaled seasonal hindcasts were clearly better than all other methods in reproducing the winter wheat yields simulated with observed weather data. The crop growth model output dispersion was almost always significantly lower than the dispersion of the downscaled ensemble seasonal hindcast used as input for crop simulations.
机译:在本文中,我们探索了由于动态作物生长模型和缩减的多模型总体季节性预报的可用性而在当地进行早期作物产量评估的新可能性。我们仅基于观察到的气候数据驱动的作物生长模型,将后者与其他方法的使用进行了比较。在ARPA Emilia-Romagna(CRITERIA)开发和使用的土壤水分平衡模型已与模型WOFOST 7.1的农作物生长程序整合在一起。首先进行了一些验证,并通过独立的田间数据验证了新的集成模型可以令人满意地模拟地上生物量和叶面积指数。然后,使用该模型测试来自DEMETER欧洲研究项目的缩小规模的多模式集合季节性后遗症的可行性,以便获得北部北部冬小麦的早期(即收获前90、60和30 d)单产评估意大利。为了进行比较,还进行了类似的气候运行,而不是后预报。出于相同的目的,我们还生成了六个简单的线性回归模型,用于确定季节(3月,4月和5月底)存储器官和地上生物量的最终作物产量。使用缩减后的DEMETER后代获得的中位产量始终胜过简单的回归模型,并且与气候运行基本相同,但六月试验除外,在该试验中,缩减后的季节性后代明显优于所有其他方法来重现模拟的冬小麦产量。观测到的天气数据。作物生长模型的输出离散度几乎总是总是比用作作物模拟输入的缩小规模的总体季节性后遗症的离散度低。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号