2007
DOI: 10.1016/j.physa.2007.04.059
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Temporal–spatial diversities of long-range correlation for relative humidity over China

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Cited by 48 publications
(28 citation statements)
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“…According to recent studies (Koscielny-Bunde et al 1998;Fraedrich and Blender 2003;Eichner et al 2003;Kantelhardt et al 2006;Lin et al 2007;Chen et al 2007;Vyushin and Kushner 2009;Yuan et al 2010;Dangendorf et al 2014;Jiang et al 2017), this research idea is possible, as for many climate variables it has been found that the variability on different time scales is not arbitrary, but follows a scaling manner as shown below, where s represents the time scale and H is the Hurst exponent (Hurst 1951). This scaling behavior indicates that the knowledge of high-frequency variability allows one to predict the low-frequency variability of a given process.…”
Section: Introductionmentioning
confidence: 99%
“…According to recent studies (Koscielny-Bunde et al 1998;Fraedrich and Blender 2003;Eichner et al 2003;Kantelhardt et al 2006;Lin et al 2007;Chen et al 2007;Vyushin and Kushner 2009;Yuan et al 2010;Dangendorf et al 2014;Jiang et al 2017), this research idea is possible, as for many climate variables it has been found that the variability on different time scales is not arbitrary, but follows a scaling manner as shown below, where s represents the time scale and H is the Hurst exponent (Hurst 1951). This scaling behavior indicates that the knowledge of high-frequency variability allows one to predict the low-frequency variability of a given process.…”
Section: Introductionmentioning
confidence: 99%
“…DFA stems from random walk theory and has been effectively used to explore the scaling behavior of natural process time series in diverse fields, such as weather records [25,35], tree-ring width [50], intervention time series of forest fires [31,46], groundwater systems [51], and features of atmosphere [52,53]. DFA provides a simple quantitative parameter to represent the properties of the scaling behavior of complex systems [54].…”
Section: Detrended Fluctuation Analysis (Dfa)mentioning
confidence: 99%
“…Different exponents represent different types of scaling behavior in the original series. When α is less than 0.5, the time series exhibits short-range correlation or anti-correlation behavior [25,29,31,46] suggesting that the fluctuation of the series at different times are oppositely correlated and the opposite correlation is the strongest when α closes to 0; when α is around 0.5, the series corresponds to white noise (there is no correlation in the series), i.e., it is a random series; if a long-range correlation exists in the series, α is between 0.5 and 1 [29,31,34,36,46], and the series exhibits power-law behavior meaning that the fluctuation of the series at different times are positively correlated and the positive correlation is the strongest when α closes to 1; when α is equal to 1, the series exhibits characteristics of 1/f noise [31,46], thereby indicating that the series shows a self-organized criticality [55]; and when α is bigger than 1, long-range correlation exists in the series, although it does not obey a power-law relationship [31].…”
Section: Detrended Fluctuation Analysis (Dfa)mentioning
confidence: 99%
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“…Temperature and precipitation have characteristic values of H (Koscielny- Bunde et al, 1998; although some claim that the scaling exponent is not universal for temperature data (Király & Jánosi, 2005;Rybski et al 2008). Relative humidity shows stronger persistence Lin et al, 2007), and wind speed also exhibit behaviour with long-range correlation (Govindan & Kantz, 2004;Kavasseri & Nagarajan, 2005;Koçak, 2009;Feng et al, 2009). One can be sure of the universality of the correlations in climatological time series but its exponents can be related to local patterns.…”
Section: Introductionmentioning
confidence: 99%