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Estimating uncertainty in crop model predictions: Current situation and future prospects

机译:估计作物模型预测中的不确定性:当前的情况和未来的前景

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In this introductory paper to the special issue on crop model prediction uncertainty, we present and compare the methodological choices in the studies included in this issue, and highlight some remaining challenges. As a common framework for all studies, we define prediction uncertainty as the distribution of prediction error, which can be written as the sum of a bias plus a predictor uncertainty term that represents the random variation due to uncertainty in model structure, model parameters or model inputs. Several themes recur in many of the studies: Use of multi-model ensembles (MMEs) to quantify model structural uncertainty; Emphasis on uncertainty in those inputs related to prediction of regional results or climate change impact assessment; Simultaneous consideration of multiple sources of uncertainty; Emphasis on exploring the variability of uncertainty over space or time; Use of sensitivity analysis techniques to disaggregate the separate contributions to prediction uncertainty. Relatively new approaches include the estimation of both the bias and predictor uncertainty terms of prediction error, the construction of MMEs specifically designed to explore the uncertainty in model structure, the use of emulators for sensitivity analysis and the exploration of ways to reduce prediction uncertainty other than through model improvement. Major remaining challenges are standardization of approaches to quantifying uncertainty in model structure, parameters and inputs, going beyond studies of specific sources of uncertainty to estimation of overall prediction uncertainty, comparing and combining validation and uncertainty studies, and evaluation of uncertainty estimates. Looking forward, we suggest that assessment of prediction uncertainty should be a standard part of any modelling project. The studies here will contribute toward that goal.
机译:在这篇介绍论文中,对作物模型预测不确定性的特殊问题,我们在本问题中展示和比较了研究中的研究中的方法,并突出了一些仍然存在挑战。作为所有研究的常见框架,我们将预测不确定性定义为预测误差的分布,这可以被写入偏差的总和加上代表模型结构,模型参数或模型中的不确定性导致随机变化的预测不确定性术语输入。许多研究中的几个主题重复:使用多模型集合(MME)来量化模型结构不确定性;强调与预测区域结果或气候变化影响评估相关的投入的不确定性;同时考虑多种不确定性来源;强调探索空间或时间不确定性的变化;使用灵敏度分析技术将单独的贡献分解以预测不确定性。相对较新的方法包括估计预测误差的偏差和预测性不确定性术语,MME的构造专门设计用于探讨模型结构的不确定性,使用仿真器进行敏感性分析和探索以外的方式探索以外的预测不确定性通过模型改进。主要剩余挑战是在模型结构,参数和投入中量化不确定性的方法的标准化,超越对整体预测不确定性,比较和结合验证和不确定性研究的特定不确定性的研究以及对不确定性估算的评估。期待着,我们建议对预测不确定性的评估应该是任何建模项目的标准部分。这里的研究将有助于这种目标。

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