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Multi-Scale Entropy Analysis as a Method for Time-Series Analysis of Climate Data

机译:多尺度熵分析作为气候数据时间序列分析的一种方法

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摘要

Evidence is mounting that the temporal dynamics of the climate system are changing at the same time as the average global temperature is increasing due to multiple climate forcings. A large number of extreme weather events such as prolonged cold spells, heatwaves, droughts and floods have been recorded around the world in the past 10 years. Such changes in the temporal scaling behaviour of climate time-series data can be difficult to detect. While there are easy and direct ways of analysing climate data by calculating the means and variances for different levels of temporal aggregation, these methods can miss more subtle changes in their dynamics. This paper describes multi-scale entropy (MSE) analysis as a tool to study climate time-series data and to identify temporal scales of variability and their change over time in climate time-series. MSE estimates the sample entropy of the time-series after coarse-graining at different temporal scales. An application of MSE to Central European, variance-adjusted, mean monthly air temperature anomalies (CRUTEM4v) is provided. The results show that the temporal scales of the current climate (1960–2014) are different from the long-term average (1850–1960). For temporal scale factors longer than 12 months, the sample entropy increased markedly compared to the long-term record. Such an increase can be explained by systems theory with greater complexity in the regional temperature data. From 1961 the patterns of monthly air temperatures are less regular at time-scales greater than 12 months than in the earlier time period. This finding suggests that, at these inter-annual time scales, the temperature variability has become less predictable than in the past. It is possible that climate system feedbacks are expressed in altered temporal scales of the European temperature time-series data. A comparison with the variance and Shannon entropy shows that MSE analysis can provide additional information on the statistical properties of climate time-series data that can go undetected using traditional methods.
机译:越来越多的证据表明,由于多种气候强迫,随着全球平均温度的升高,气候系统的时间动态在变化。在过去的10年中,世界各地记录了许多极端天气事件,例如长时间的寒冷,热浪,干旱和洪水。气候时间序列数据的时间尺度行为的这种变化可能很难检测到。尽管有通过计算不同时间聚集程度的均值和方差的简单直接的方法来分析气候数据的方法,但这些方法可能会忽略其动力学方面的细微变化。本文将多尺度熵(MSE)分析描述为研究气候时间序列数据并识别气候时间序列随时间变化的时间尺度及其随时间变化的工具。 MSE估计了在不同时间尺度上进行粗粒度处理后的时间序列样本熵。提供了MSE在中欧,经方差调整的平均每月气温异常(CRUTEM4v)中的应用。结果表明,当前气候(1960–2014)的时间尺度与长期平均值(1850–1960)不同。对于超过12个月的时间尺度因子,与长期记录相比,样本熵显着增加。这种增加可以用系统理论来解释,该理论在区域温度数据中具有更大的复杂性。从1961年开始,在大于12个月的时间范围内,每月气温的变化规律比早期时期要少。这一发现表明,在这些年际时间尺度上,温度变化性已变得比过去难以预测。气候系统的反馈可能以欧洲温度时间序列数据的变化的时间尺度表示。与方差和香农熵的比较表明,MSE分析可以提供有关气候时间序列数据统计特性的其他信息,而这些信息可能无法使用传统方法检测到。

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