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通过实证信息论量化气候变化科学中的不确定性。

Quantifying uncertainty in climate change science through empirical information theory.

机构信息

Department of Mathematics and Center for Atmosphere Ocean Science, Courant Institute of Mathematical Sciences, New York University, New York, NY 10012, USA.

出版信息

Proc Natl Acad Sci U S A. 2010 Aug 24;107(34):14958-63. doi: 10.1073/pnas.1007009107. Epub 2010 Aug 9.

Abstract

Quantifying the uncertainty for the present climate and the predictions of climate change in the suite of imperfect Atmosphere Ocean Science (AOS) computer models is a central issue in climate change science. Here, a systematic approach to these issues with firm mathematical underpinning is developed through empirical information theory. An information metric to quantify AOS model errors in the climate is proposed here which incorporates both coarse-grained mean model errors as well as covariance ratios in a transformation invariant fashion. The subtle behavior of model errors with this information metric is quantified in an instructive statistically exactly solvable test model with direct relevance to climate change science including the prototype behavior of tracer gases such as CO(2). Formulas for identifying the most sensitive climate change directions using statistics of the present climate or an AOS model approximation are developed here; these formulas just involve finding the eigenvector associated with the largest eigenvalue of a quadratic form computed through suitable unperturbed climate statistics. These climate change concepts are illustrated on a statistically exactly solvable one-dimensional stochastic model with relevance for low frequency variability of the atmosphere. Viable algorithms for implementation of these concepts are discussed throughout the paper.

摘要

量化当前气候的不确定性以及一系列不完善的大气海洋科学(AOS)计算机模型对气候变化的预测,是气候变化科学的一个核心问题。在这里,通过经验信息论,开发了一种具有坚实数学基础的系统方法来解决这些问题。这里提出了一种量化 AOS 模型在气候中误差的信息度量方法,该方法以变换不变的方式将粗粒度的平均模型误差和协方差比结合在一起。使用该信息度量方法,对模型误差的微妙行为进行了量化,这种行为在一个具有直接相关性的统计上完全可解的测试模型中得到了量化,包括示踪气体(如 CO2)的原型行为。本文还开发了使用当前气候或 AOS 模型近似的统计数据来识别最敏感气候变化方向的公式;这些公式只涉及找到通过合适的未受干扰的气候统计数据计算出的二次型的最大特征值所对应的特征向量。这些气候变化概念在一个具有统计学意义的一维随机模型中得到了说明,该模型与大气低频变化有关。整篇论文讨论了实现这些概念的可行算法。

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