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Risk assessment using suprema data

机译:使用最高数据进行风险评估

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摘要

This paper proposes a stochastic approach to model temperature dynamic and study related risk measures. The dynamic of temperatures can be modelled by a mean-reverting process such as an Ornstein-Uhlenbeck one. In this study, we estimate the parameters of this process thanks to daily observed suprema of temperatures, which are the only data gathered by some weather stations. The expression of the cumulative distribution function of the supremum is obtained thanks to the law of the hitting time. The parameters are estimated by a least square method quantiles based on this function. Theoretical results, including mixing property and consistency of model parameters estimation, are provided. The parameters estimation is assessed on simulated data and performed on real ones. Numerical illustrations are given for both data. This estimation will allow us to estimate risk measures, such as the probability of heat wave and the mean duration of an heat wave.
机译:本文提出了一种随机方法来模拟温度动态并研究相关的风险度量。温度的动态可以通过均值恢复过程(例如Ornstein-Uhlenbeck回归模型)来建模。在这项研究中,由于每天观测到的温度最高值是某些气象站收集到的唯一数据,因此我们估计了该过程的参数。得益于击球时间定律,获得了最高累积分布函数的表达式。基于该函数,通过最小二乘方法分位数来估计参数。提供了包括混合特性和模型参数估计一致性的理论结果。参数估计是在模拟数据上评估并在真实数据上执行的。给出了两个数据的数字说明。这种估计将使我们能够估计风险度量,例如热浪的概率和热浪的平均持续时间。

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