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Sourc.es of uncertainty in model predictions: lessons learned from the IAEA Forest and Fruit Working Group model intercomparisons

机译:模型预测的不确定性来源:从国际原子能机构森林和水果工作组模型比对中吸取的教训

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The International Atomic Energy Agency (IAEA), through the BIOMASS program, has provided a unique international forum for assessing the relative contribution of different sources of uncertainty associated with environmental modeling. The methodology and guidance for dealing with parameter uncertainty have been fairly well developed and quantitative tools such as Monte-Carlo modeling are often recommended. The issue of model uncertainty is still rarely addressed in practical applications and the use of several alternative models to derive a range of model outputs (similar to what was done in IAEA model inter-comparisons) is one of a few available techniques. This paper addresses the often overlooked issue of what we call 'modeler uncertainty,' i.e., differences in problem formulation, model implementation and parameter selection originating from subjective interpretation of the problem at hand. This study uses results from the Fruit and Forest Working Groups created under the BIOMASS program (BIOsphere Modeling and ASSessment). The greatest uncertainty was found to result from modelers' interpretation of scenarios and approximations made by modelers. In scenarios that were unclear for modelers, the initial differences in model predictions were as high as seven orders of magnitude. Only after several meetings and discussions about specific assumptions did the differences in predictions by various models merge. Our study shows that the parameter uncertainty (as evaluated by a probabilistic Monte-Carlo assessment) may have contributed over one order of magnitude to the overall modeling uncertainty. The final model predictions ranged between one and three orders of magnitude, depending on the specific scenario. This study illustrates the importance of problem formulation and implementation of an analytic—deliberative process in fate and transport modeling and risk characterization.
机译:国际原子能机构(IAEA)通过BIOMASS计划,提供了一个独特的国际论坛,用于评估与环境建模相关的各种不确定性来源的相对贡献。处理参数不确定性的方法和指导已经相当完善,经常推荐使用定量工具,例如蒙特卡洛模型。在实际应用中仍然很少解决模型不确定性的问题,使用几种替代模型来获得一系列模型输出(类似于IAEA模型内部比较的做法)是几种可用的技术之一。本文解决了通常被忽略的问题,即所谓的``建模者不确定性'',即问题的表述,模型实现和参数选择的差异源于对问题的主观解释。这项研究使用了在BIOMASS计划下建立的水果和森林工作组(BIOsphere建模与评估)的结果。发现最大的不确定性来自建模者对场景的建模和建模者做出的近似的解释。在建模人员不清楚的情况下,模型预测的初始差异高达七个数量级。只有经过几次会议和关于特定假设的讨论,各种模型的预测差异才合并。我们的研究表明,参数不确定性(通过概率蒙特卡洛评估评估)可能对整体建模不确定性造成了一个数量级的影响。最终模型的预测范围介于一到三个数量级之间,具体取决于具体情况。这项研究说明了在命运和运输模型以及风险特征描述中问题制定和分析-审议过程的实施的重要性。

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