Department of Mathematics and Center for Atmosphere Ocean Science, Courant Institute of Mathematical Sciences, New York University, New York, NY 10012, USA.
Proc Natl Acad Sci U S A. 2010 Jan 12;107(2):581-6. doi: 10.1073/pnas.0912997107. Epub 2009 Dec 22.
Climate change science focuses on predicting the coarse-grained, planetary-scale, longtime changes in the climate system due to either changes in external forcing or internal variability, such as the impact of increased carbon dioxide. The predictions of climate change science are carried out through comprehensive, computational atmospheric, and oceanic simulation models, which necessarily parameterize physical features such as clouds, sea ice cover, etc. Recently, it has been suggested that there is irreducible imprecision in such climate models that manifests itself as structural instability in climate statistics and which can significantly hamper the skill of computer models for climate change. A systematic approach to deal with this irreducible imprecision is advocated through algorithms based on the Fluctuation Dissipation Theorem (FDT). There are important practical and computational advantages for climate change science when a skillful FDT algorithm is established. The FDT response operator can be utilized directly for multiple climate change scenarios, multiple changes in forcing, and other parameters, such as damping and inverse modelling directly without the need of running the complex climate model in each individual case. The high skill of FDT in predicting climate change, despite structural instability, is developed in an unambiguous fashion using mathematical theory as guidelines in three different test models: a generic class of analytical models mimicking the dynamical core of the computer climate models, reduced stochastic models for low-frequency variability, and models with a significant new type of irreducible imprecision involving many fast, unstable modes.
气候变化科学主要关注预测气候系统由于外部强迫或内部变率(如二氧化碳增加的影响)而产生的粗粒度、行星尺度、长时间的变化。气候变化科学的预测是通过综合的、计算的大气和海洋模拟模型进行的,这些模型必然会参数化云、海冰覆盖等物理特征。最近,有人提出,这些气候模型存在不可避免的不精确性,表现为气候统计中的结构不稳定性,这可能会严重阻碍气候变化计算机模型的技能。通过基于涨落耗散定理(FDT)的算法,提倡采用一种系统的方法来处理这种不可避免的不精确性。当建立了一个熟练的 FDT 算法时,气候变化科学具有重要的实际和计算优势。FDT 响应算子可以直接用于多个气候变化情景、多个强迫变化和其他参数,例如阻尼和直接反向建模,而无需在每个单独情况下运行复杂的气候模型。尽管存在结构不稳定性,FDT 在预测气候变化方面的高技能仍然以明确的方式使用数学理论作为指南,在三个不同的测试模型中进行开发:一类模拟计算机气候模型动力核心的通用分析模型、低频可变性的简化随机模型以及涉及许多快速、不稳定模式的新型不可避免不精确性的模型。