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首页> 外文期刊>Pure and Applied Geophysics >Universal Inverse Power-Law Distribution for Fractal Fluctuations in Dynamical Systems: Applications for Predictability of Inter-Annual Variability of Indian and USA Region Rainfall
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Universal Inverse Power-Law Distribution for Fractal Fluctuations in Dynamical Systems: Applications for Predictability of Inter-Annual Variability of Indian and USA Region Rainfall

机译:动力系统中分形波动的普遍逆幂律分布:印度和美国地区降雨量年际变化的可预测性应用

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摘要

Dynamical systems in nature exhibit self-similar fractal space-time fluctuations on all scales indicating long-range correlations and, therefore, the statistical normal distribution with implicit assumption of independence, fixed mean and standard deviation cannot be used for description and quantification of fractal data sets. The author has developed a general systems theory based on classical statistical physics for fractal fluctuations which predicts the following. (1) The fractal fluctuations signify an underlying eddy continuum, the larger eddies being the integrated mean of enclosed smaller-scale fluctuations. (2) The probability distribution of eddy amplitudes and the variance (square of eddy amplitude) spectrum of fractal fluctuations follow the universal Boltzmann inverse power law expressed as a function of the golden mean. (3) Fractal fluctuations are signatures of quantum-like chaos since the additive amplitudes of eddies when squared represent probability densities analogous to the sub-atomic dynamics of quantum systems such as the photon or electron. (4) The model predicted distribution is very close to statistical normal distribution for moderate events within two standard deviations from the mean but exhibits a fat long tail that are associated with hazardous extreme events. Continuous periodogram power spectral analyses of available GHCN annual total rainfall time series for the period 1900-2008 for Indian and USA stations show that the power spectra and the corresponding probability distributions follow model predicted universal inverse power law form signifying an eddy continuum structure underlying the observed inter-annual variability of rainfall. On a global scale, man-made greenhouse gas related atmospheric warming would result in intensification of natural climate variability, seen immediately in high frequency fluctuations such as QBO and ENSO and even shorter timescales. Model concepts and results of analyses are discussed with reference to possible prediction of climate change. Model concepts, if correct, rule out unambiguously, linear trends in climate. Climate change will only be manifested as increase or decrease in the natural variability. However, more stringent tests of model concepts and predictions are required before applications to such an important issue as climate change. Observations and simulations with climate models show that precipitation extremes intensify in response to a warming climate (O'Gorman in Curr Clim Change Rep 1:49-59, 2015).
机译:自然界中的动力系统在所有尺度上都表现出自相似的分形时空波动,表明了长程相关性,因此,隐含独立性、固定均值和标准差的统计正态分布不能用于分形数据集的描述和量化。作者在经典统计物理学的基础上发展了一种关于分形涨落的一般系统理论,该理论预测了以下内容。(1)分形涨落表示一个潜在的涡流连续体,较大的涡流是封闭的较小尺度涨落的积分平均值。(2)涡幅的概率分布和分形涨落的方差(涡幅的平方)谱遵循普遍玻尔兹曼逆幂定律,用中庸之道表示。(3)分形涨落是类量子混沌的特征,因为涡旋的加性振幅在平方时表示类似于量子系统(如光子或电子)的亚原子动力学的概率密度。(4)模型预测分布非常接近中等事件的统计正态分布,与平均值有2个标准差以内,但表现出与危险极端事件相关的长尾。对1900-2008年期间印度和美国站的GHCN年总降雨量时间序列进行连续周期图功率谱分析表明,功率谱和相应的概率分布遵循模型预测的普遍逆幂律形式,表明观测到的年际降雨量变化背后的涡流连续体结构。在全球范围内,与温室气体有关的人为温室气体变暖将导致自然气候变率的加剧,这在QBO和ENSO等高频波动中立即可见,甚至在更短的时间尺度上。参考对气候变化的可能预测,讨论了模型概念和分析结果。如果模型概念正确,则明确排除了气候的线性趋势。气候变化只会表现为自然变率的增加或减少。然而,在应用于气候变化这样一个重要问题之前,需要对模型概念和预测进行更严格的测试。气候模型的观测和模拟表明,极端降水会随着气候变暖而加剧(O'Gorman in Curr Clim Change Rep 1:49-59, 2015)。

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