Kleeman Richard, Majda Andrew J, Timofeyev Ilya
Courant Institute of Mathematical Sciences and Center for Atmosphere and Ocean Sciences, New York University, New York 10012, USA.
Proc Natl Acad Sci U S A. 2002 Nov 26;99(24):15291-6. doi: 10.1073/pnas.192583699. Epub 2002 Nov 12.
The Galerkin truncated inviscid Burgers equation has recently been shown by the authors to be a simple model with many degrees of freedom, with many statistical properties similar to those occurring in dynamical systems relevant to the atmosphere. These properties include long time-correlated, large-scale modes of low frequency variability and short time-correlated "weather modes" at smaller scales. The correlation scaling in the model extends over several decades and may be explained by a simple theory. Here a thorough analysis of the nature of predictability in the idealized system is developed by using a theoretical framework developed by R.K. This analysis is based on a relative entropy functional that has been shown elsewhere by one of the authors to measure the utility of statistical predictions precisely. The analysis is facilitated by the fact that most relevant probability distributions are approximately Gaussian if the initial conditions are assumed to be so. Rather surprisingly this holds for both the equilibrium (climatological) and nonequilibrium (prediction) distributions. We find that in most cases the absolute difference in the first moments of these two distributions (the "signal" component) is the main determinant of predictive utility variations. Contrary to conventional belief in the ensemble prediction area, the dispersion of prediction ensembles is generally of secondary importance in accounting for variations in utility associated with different initial conditions. This conclusion has potentially important implications for practical weather prediction, where traditionally most attention has focused on dispersion and its variability.
作者最近证明,伽辽金截断无粘伯格斯方程是一个具有许多自由度的简单模型,具有许多与大气相关动力系统中出现的统计特性。这些特性包括长时间相关的低频变化大尺度模式以及小尺度上短时间相关的“天气模式”。该模型中的相关性标度跨越几十年,并且可以用一个简单理论来解释。在这里,通过使用R.K. 开发的理论框架,对理想化系统中的可预测性本质进行了深入分析。这种分析基于一种相对熵泛函,其中一位作者已在其他地方表明该泛函可精确测量统计预测的效用。如果假设初始条件是这样,那么大多数相关概率分布近似为高斯分布这一事实有助于分析。相当令人惊讶的是,这对于平衡(气候学)分布和非平衡(预测)分布都成立。我们发现,在大多数情况下,这两种分布一阶矩的绝对差值(“信号”分量)是预测效用变化的主要决定因素。与集合预测领域的传统观念相反,在解释与不同初始条件相关的效用变化时,预测集合的离散度通常是次要的。这一结论对实际天气预报可能具有重要意义,在传统上,大多数注意力都集中在离散度及其变化上。