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On the trend, detrending, and variability of nonlinear and nonstationary time series

机译:非线性和非平稳时间序列的趋势,趋势和变异性

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Determining trend and implementing detrending operations are important steps in data analysis. Yet there is no precise definition of "trend" nor any logical algorithm for extracting it. As a result, various ad hoc extrinsic methods have been used to determine trend and to facilitate a detrending operation. In this article, a simple and logical definition of trend is given for any nonlinear and nonstationary time series as an intrinsically determined monotonic function within a certain temporal span (most often that of the data span), or a function in which there can be at most one extremum within that temporal span. Being intrinsic, the method to derive the trend has to be adaptive. This definition of trend also presumes the existence of a natural time scale. All these requirements suggest the Empirical Mode Decomposition (EMD) method as the logical choice of algorithm for extracting various trends from a data set. Once the trend is determined, the corresponding detrending operation can be implemented. With this definition of trend, the variability of the data on various time scales also can be derived naturally. Climate data are used to illustrate the determination of the intrinsic trend and natural variability.
机译:确定趋势并实施趋势消除操作是数据分析中的重要步骤。但是,没有“趋势”的精确定义,也没有提取它的逻辑算法。结果,已经使用了各种临时的外部方法来确定趋势并促进去趋势操作。在本文中,对任何非线性和非平稳时间序列给出了趋势的简单逻辑定义,作为在某个时间范围(通常是数据范围的时间范围内)内在确定的单调函数,或一个可以在在那个时间跨度内,最大的一个极值。作为内在的,得出趋势的方法必须是自适应的。趋势的定义还假定存在自然时标。所有这些要求建议将经验模式分解(EMD)方法作为从数据集中提取各种趋势的算法的逻辑选择。一旦确定趋势,就可以执行相应的去趋势操作。使用趋势定义,还可以自然地得出各种时间范围内数据的可变性。气候数据用于说明内在趋势和自然变异性的确定。

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