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Heavy tailed probability distributions for non-Gaussian simulations with higher-order cumulant parameters predicted from sample data

机译:从样本数据预测具有高阶累积量参数的非高斯模拟的重尾概率分布

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摘要

Forecasting of extreme events and phenomena that respond to non-Gaussian heavy-tailed distributions (e.g., extreme environmental events, rock permeability, rock fracture intensity, earthquake magnitudes) is essential to environmental and geoscience risk analysis. In this paper, new parametric heavy-tailed distributions are devised starting from the exponential power probability density function (pdf) which is modified by explicitly including higher-order "cumulant parameters" into the pdf. Instead of dealing with whole power random variables, novel "residual" random variables are proposed to reconstruct the cumulant generating function. The expected value of a residual random variable with the corresponding pdf for order G, gives the input higher-order cumulant parameter. Thus, each parametric pdf is used to simulate a random variable containing residuals that yield, in average, the expected cumulant parameter. The cumulant parameters allow the formulation of heavy-tailed skewed pdfs beyond the lognormal to handle extreme events. Monte Carlo simulation of heavy-tailed distributions with higher-order parameters is demonstrated with a simple example for permeability.
机译:预测对非高斯重尾分布有响应的极端事件和现象(例如极端环境事件,岩石渗透率,岩石破裂强度,地震震级)对于环境和地球科学风险分析至关重要。在本文中,从指数幂概率密度函数(pdf)开始设计新的参数化重尾分布,该函数通过将更高阶的“累积量参数”明确包含在pdf中进行了修改。代替处理整体幂随机变量,提出了新颖的“残余”随机变量来重构累积量生成函数。残差随机变量的期望值以及对应于阶次G的pdf,给出了输入的高阶累积量参数。因此,每个参数pdf用于模拟一个随机变量,该变量包含平均产生期望的累积量参数的残差。累积量参数允许制定超出对数正态的重尾偏斜pdf,以处理极端事件。通过一个简单的渗透率示例,演示了具有高阶参数的重尾分布的蒙特卡罗模拟。

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