Majda Andrew J, Franzke Christian, Crommelin Daan
Department of Mathematics and Climate, Atmosphere, Ocean Science, Courant Institute of Mathematical Sciences, New York University, NY, USA.
Proc Natl Acad Sci U S A. 2009 Mar 10;106(10):3649-53. doi: 10.1073/pnas.0900173106. Epub 2009 Feb 19.
The systematic development of reduced low-dimensional stochastic climate models from observations or comprehensive high-dimensional climate models is an important topic for atmospheric low-frequency variability, climate sensitivity, and improved extended range forecasting. Here techniques from applied mathematics are utilized to systematically derive normal forms for reduced stochastic climate models for low-frequency variables. The use of a few Empirical Orthogonal Functions (EOFs) (also known as Principal Component Analysis, Karhunen-Loéve and Proper Orthogonal Decomposition) depending on observational data to span the low-frequency subspace requires the assessment of dyad interactions besides the more familiar triads in the interaction between the low- and high-frequency subspaces of the dynamics. It is shown below that the dyad and multiplicative triad interactions combine with the climatological linear operator interactions to simultaneously produce both strong nonlinear dissipation and Correlated Additive and Multiplicative (CAM) stochastic noise. For a single low-frequency variable the dyad interactions and climatological linear operator alone produce a normal form with CAM noise from advection of the large scales by the small scales and simultaneously strong cubic damping. These normal forms should prove useful for developing systematic strategies for the estimation of stochastic models from climate data. As an illustrative example the one-dimensional normal form is applied below to low-frequency patterns such as the North Atlantic Oscillation (NAO) in a climate model. The results here also illustrate the short comings of a recent linear scalar CAM noise model proposed elsewhere for low-frequency variability.
从观测数据或全面的高维气候模型系统地开发简化的低维随机气候模型,是大气低频变化、气候敏感性以及改进的延伸期预报方面的一个重要课题。这里运用应用数学技术,系统地推导低频变量简化随机气候模型的范式。利用少数依赖观测数据的经验正交函数(EOF,也称为主成分分析、卡尔胡宁-勒夫变换和本征正交分解)来跨越低频子空间,除了动力学低频和高频子空间相互作用中更常见的三重态之外,还需要评估二元相互作用。如下所示,二元和乘法三重态相互作用与气候学线性算子相互作用相结合,同时产生强非线性耗散以及相关加性和乘性(CAM)随机噪声。对于单个低频变量,仅二元相互作用和气候学线性算子就会产生一种范式,该范式具有由小尺度对大尺度的平流产生的CAM噪声以及同时存在的强立方阻尼。这些范式应有助于制定从气候数据估计随机模型的系统策略。作为一个示例,下面将一维范式应用于气候模型中的低频模式,如北大西洋涛动(NAO)。这里的结果还说明了其他地方最近提出的用于低频变化的线性标量CAM噪声模型的不足之处。