International Rice Research Institute, Los Baños, Philippines.
Glob Chang Biol. 2015 Mar;21(3):1328-41. doi: 10.1111/gcb.12758. Epub 2014 Dec 17.
Predicting rice (Oryza sativa) productivity under future climates is important for global food security. Ecophysiological crop models in combination with climate model outputs are commonly used in yield prediction, but uncertainties associated with crop models remain largely unquantified. We evaluated 13 rice models against multi-year experimental yield data at four sites with diverse climatic conditions in Asia and examined whether different modeling approaches on major physiological processes attribute to the uncertainties of prediction to field measured yields and to the uncertainties of sensitivity to changes in temperature and CO2 concentration [CO2 ]. We also examined whether a use of an ensemble of crop models can reduce the uncertainties. Individual models did not consistently reproduce both experimental and regional yields well, and uncertainty was larger at the warmest and coolest sites. The variation in yield projections was larger among crop models than variation resulting from 16 global climate model-based scenarios. However, the mean of predictions of all crop models reproduced experimental data, with an uncertainty of less than 10% of measured yields. Using an ensemble of eight models calibrated only for phenology or five models calibrated in detail resulted in the uncertainty equivalent to that of the measured yield in well-controlled agronomic field experiments. Sensitivity analysis indicates the necessity to improve the accuracy in predicting both biomass and harvest index in response to increasing [CO2 ] and temperature.
预测未来气候下的水稻(Oryza sativa)生产力对于全球粮食安全至关重要。生态生理作物模型与气候模型输出相结合,通常用于产量预测,但与作物模型相关的不确定性在很大程度上仍未得到量化。我们评估了 13 个水稻模型在亚洲四个具有不同气候条件的地点的多年实验产量数据中的表现,并研究了主要生理过程的不同建模方法是否会导致预测田间实测产量的不确定性以及对温度和 CO2 浓度[CO2]变化的敏感性的不确定性。我们还研究了使用作物模型集合是否可以降低不确定性。个别模型并不能始终很好地重现实验和区域产量,在最温暖和最凉爽的地点不确定性更大。与基于 16 个全球气候模型的情景导致的变化相比,作物模型之间的产量预测变化更大。然而,所有作物模型的预测平均值都复制了实验数据,不确定性低于实测产量的 10%。仅对物候学进行校准的八个模型或对详细情况进行校准的五个模型的集合使用导致的不确定性与在良好控制的农业田间试验中测量的产量的不确定性相当。敏感性分析表明,有必要提高预测生物量和收获指数对增加[CO2]和温度的响应的准确性。