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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Pattern hunting in climate: a new method for finding trends in gridded climate data
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Pattern hunting in climate: a new method for finding trends in gridded climate data

机译:气候模式搜寻:寻找网格气候数据趋势的新方法

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摘要

Trends are very important in climate research and are ubiquitous in the climate system. Trends are usually estimated using simple linear regression. Given the complexity of the system, trends are expected to have various features such as global and local characters. It is therefore important to develop methods that permit a systematic decomposition of climate data into different trend patterns and remaining no-trend patterns. Empirical orthogonal functions and closely related methods, widely used in atmospheric science, are unable in general to capture trends because they are not devised for that purpose. The present paper presents a novel method capable of systematically capturing trend patterns from gridded data. The method is based on an eigenanalysis of the covariance/correlation matrix obtained using correlations between time positions of the sorted data, and trends are associated with the leading nondegenerate eigenvalues. Application to simple low-dimensional time series models and reanalyses data are presented and discussed. Copyright (c) 2006 Royal Meteorological Society.
机译:趋势在气候研究中非常重要,并且在气候系统中无处不在。通常使用简单的线性回归来估计趋势。考虑到系统的复杂性,预计趋势将具有各种功能,例如全局和局部特征。因此,重要的是要开发出能够将气候数据系统分解为不同趋势模式和保持无趋势模式的方法。在大气科学中广泛使用的经验正交函数和紧密相关的方法通常无法捕获趋势,因为它们不是为此目的而设计的。本文提出了一种能够从网格数据中系统捕获趋势模式的新颖方法。该方法基于使用排序数据的时间位置之间的相关性获得的协方差/相关矩阵的特征分析,并且趋势与领先的未退化特征值相关联。提出并讨论了在简单的低维时间序列模型和重新分析数据上的应用。版权所有(c)2006皇家气象学会。

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