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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Detecting abrupt change on the basis of skewness: Numerical tests and applications
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Detecting abrupt change on the basis of skewness: Numerical tests and applications

机译:基于偏度检测突变:数值测试和应用

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摘要

An abrupt change occasionally occurs when the dynamical system suddenly shifts from one stable state to a new state, which can take place in many complex systems, such as climate, ecosystem, social system, and so on. In order to detect abrupt change, this article presents a novel method - sliding transformation parameter (STP) on the basis of skewness change and the Box-Cox transformation. Tests on model time series and 1000 simulated daily precipitation data show the ability of the present method to identify and detect abrupt change of probability density function. The applications of STP in daily precipitation data show that there is an abrupt climate change between 1979 and 1980 in the selected observational stations, which is almost the same with the result obtained by approximate entropy (ApEn). Furthermore, it is found that the sample sizes of sliding windows have some influence on the Lambda parameter of the Box-Cox transformation, but it does not significantly affect the varying trend of the parameter and the identification of the change point in annual or interannual time scale. Comparing STP with the coefficient of skewness and kurtosis, ApEn, and some statistics approaches (e.g. percentiles and annual maxima), we find that the performance of the present method is much better than that of these methods.
机译:当动力学系统突然从一种稳定状态转变为一种新状态时,有时会发生突然的变化,这种变化可以发生在许多复杂的系统中,例如气候,生态系统,社会系统等。为了检测突变,本文提出了一种新方法-基于偏度变化和Box-Cox变换的滑动变换参数(STP)。对模型时间序列和1000个模拟日降水量数据的测试表明,本方法能够识别和检测概率密度函数的突变。 STP在日降水量数据中的应用表明,选定的观测站在1979年至1980年之间出现了突然的气候变化,这与通过近似熵(ApEn)获得的结果几乎相同。此外,还发现滑动窗口的样本大小对Box-Cox变换的Lambda参数有一定影响,但对参数的变化趋势以及年度或年际变化点的识别没有明显影响。规模。将STP与偏度和峰度系数,ApEn和某些统计方法(例如百分位数和年度最大值)进行比较,我们发现本方法的性能远优于这些方法。

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