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Uncertainty analysis in carbon cycle models of forest ecosystems: Research needs and development of a theoretical framework to estimate error propagation

机译:森林生态系统碳循环模型中的不确定性分析:研究需求和建立估计误差传播的理论框架

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摘要

Few process-based models of the carbon (C) cycle of forest ecosystems integrate uncertainty analysis into their predictions. There are two explanations as to why uncertainty estimates in the predictions of these models have seldom been provided. First, as the development of forest ecosystem process-based models has begun only recently, research efforts have focused on theoretical development to improve realism rather than reducing the amplitude of variation of the predictions. Second, there is still little information on uncertainty estimates in parameters and key variables for forest ecosystem models. As process-based models usually contain several complex nonlinear relationships, the Monte Carlo method is most commonly used to facilitate uncertainty analysis. However, its full potential for error propagation analysis in process-based models of the C cycle of forest ecosystems remains to be developed. In this paper, commonly used methods to address uncertainty in C cycle forest ecosystem models are discussed and directions for further research are presented. Realizing the full potential of uncertainty analysis for these model types will require obtaining better estimates of the errors and distributions of key parameters for complex relationships in ecophysiological processes by increasing sampling intensity and testing different sampling designs. As the level of complexity of the type of relationships used in forest ecosystem models varies substantially, the application of uncertainty analysis methods can be further facilitated by developing a model-driven decision support system based on different analytical applications to derive optimum and efficient uncertainty analysis pathways.
机译:很少有基于过程的森林生态系统碳(C)周期模型将不确定性分析纳入其预测。关于为什么很少提供这些模型的预测中的不确定性估计有两种解释。首先,由于基于森林生态系统过程模型的开发只是在最近才开始,因此研究工作集中在理论发展上,以提高真实性而不是减小预测变化幅度。其次,关于森林生态系统模型的参数和关键变量的不确定性估计信息仍然很少。由于基于过程的模型通常包含多个复杂的非线性关系,因此蒙特卡罗方法最常用于促进不确定性分析。但是,其在森林生态系统C周期的基于过程的模型中进行错误传播分析的全部潜力仍有待开发。本文讨论了解决C循环森林生态系统模型中不确定性的常用方法,并提出了进一步研究的方向。要实现这些模型类型的不确定性分析的全部潜力,将需要通过增加采样强度和测试不同的采样设计来更好地估计误差以及关键参数在生态生理过程中的复杂关系的分布。随着森林生态系统模型中使用的关系类型的复杂性水平发生很大变化,不确定性分析方法的应用可以通过基于不同分析应用程序开发模型驱动的决策支持系统来进一步推导,以得出最佳和有效的不确定性分析路径。

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