论文标题
复杂系统中极端和罕见事件的分析和模拟
Analysis and Simulation of Extremes and Rare Events in Complex Systems
论文作者
论文摘要
罕见的天气和气候事件,例如热浪和洪水,可以带来巨大的社会成本。气候数据通常在持续时间和空间覆盖范围内受到限制,气候预测通常转向了气候模型的模拟,以更好地预测罕见天气事件。然而,为了获得准确的概率估计,对复杂模型的长期模拟可能会慢慢放慢。这是一个重要的科学问题,是开发概率和动力学技术,以准确地从有限的数据中估算稀有事件的概率。在本文中,我们比较了估计罕见事件概率的四种现代方法:经典极端价值理论的广义极值(GEV)方法;两种重要的采样技术,谱系颗粒分析(GPA)和吉亚迪纳 - 凯尔坎 - 元素 - 核tailleur(GKLT)算法;以及蛮力蒙特卡洛(MC)。通过这些技术,我们在三个动态模型中估计了罕见事件的概率:Ornstein-Uhlenbeck过程,Lorenz '96系统和Plasim(气候模型)。我们保持计算工作不断的态度,并了解每种技术的罕见事件概率估计与长期控制相比提供的黄金标准相比。令人惊讶的是,我们发现经典的极值理论方法在估计罕见事件方面的表现优于GPA,GKLT和MC。
Rare weather and climate events, such as heat waves and floods, can bring tremendous social costs. Climate data is often limited in duration and spatial coverage, and climate forecasting has often turned to simulations of climate models to make better predictions of rare weather events. However very long simulations of complex models, in order to obtain accurate probability estimates, may be prohibitively slow. It is an important scientific problem to develop probabilistic and dynamical techniques to estimate the probabilities of rare events accurately from limited data. In this paper we compare four modern methods of estimating the probability of rare events: the generalized extreme value (GEV) method from classical extreme value theory; two importance sampling techniques, genealogical particle analysis (GPA) and the Giardina-Kurchan-Lecomte-Tailleur (GKLT) algorithm; as well as brute force Monte Carlo (MC). With these techniques we estimate the probabilities of rare events in three dynamical models: the Ornstein-Uhlenbeck process, the Lorenz '96 system and PlaSim (a climate model). We keep the computational effort constant and see how well the rare event probability estimation of each technique compares to a gold standard afforded by a very long run control. Somewhat surprisingly we find that classical extreme value theory methods outperform GPA, GKLT and MC at estimating rare events.