Comparing climate time series – Part 3: Discriminant analysis

Q1 Mathematics
T. DelSole, M. Tippett
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引用次数: 1

Abstract

Abstract. In parts I and II of this paper series, rigorous tests for equality of stochastic processes were proposed. These tests provide objective criteria for deciding whether two processes differ, but they provide no information about the nature of those differences. This paper develops a systematic and optimal approach to diagnosing differences between multivariate stochastic processes. Like the tests, the diagnostics are framed in terms of vector autoregressive (VAR) models, which can be viewed as a dynamical system forced by random noise. The tests depend on two statistics, one that measures dissimilarity in dynamical operators and another that measures dissimilarity in noise covariances. Under suitable assumptions, these statistics are independent and can be tested separately for significance. If a term is significant, then the linear combination of variables that maximizes that term is obtained. The resulting indices contain all relevant information about differences between data sets. These techniques are applied to diagnose how the variability of annual-mean North Atlantic sea surface temperature differs between climate models and observations. For most models, differences in both noise processes and dynamics are important. Over 40 % of the differences in noise statistics can be explained by one or two discriminant components, though these components can be model dependent. Maximizing dissimilarity in dynamical operators identifies situations in which some climate models predict large-scale anomalies with the wrong sign.
气候时间序列比较。第3部分:判别分析
摘要在本论文系列的第一部分和第二部分中,提出了随机过程相等性的严格检验。这些测试提供了确定两个过程是否不同的客观标准,但它们没有提供关于这些差异本质的信息。本文提出了一种系统的、最优的方法来诊断多元随机过程之间的差异。与测试一样,诊断是根据向量自回归(VAR)模型构建的,可以将其视为受随机噪声影响的动态系统。测试依赖于两个统计量,一个测量动态算子的不相似性,另一个测量噪声协方差的不相似性。在适当的假设下,这些统计数据是独立的,可以单独检验显著性。如果一项是显著的,则得到使该项最大化的变量的线性组合。结果索引包含数据集之间差异的所有相关信息。这些技术被用于诊断气候模式和观测值之间的年平均北大西洋海面温度变异性的差异。对于大多数模型,噪声过程和动力学的差异都很重要。噪声统计中超过40%的差异可以用一个或两个判别成分来解释,尽管这些成分可能依赖于模型。在动力学算子中最大限度地提高差异性可以识别某些气候模式用错误的符号预测大尺度异常的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in Statistical Climatology, Meteorology and Oceanography
Advances in Statistical Climatology, Meteorology and Oceanography Earth and Planetary Sciences-Atmospheric Science
CiteScore
4.80
自引率
0.00%
发文量
9
审稿时长
26 weeks
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