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Perfect and ε-perfect simulation methods for the one-dimensional Kac equation

机译:一维Kac方程的完美和ε完美模拟方法

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摘要

We review the derivation of the Kac master equation model for random collisions of particles, its relationship to the Poisson process, and existing algorithms for simulating values from the marginal distribution of velocity for a single particle at any given time. We describe and implement a new algorithm that efficiently and more fully leverages properties of the Poisson process, show that it performs at least as well as existing methods, and give empirical evidence that it may perform better at capturing the tails of the single particle velocity distribution. Finally, we derive and implement a novel "£-perfect sampling" algorithm for the limiting marginal distribution as time goes to infinity. In this case the importance is a proof of concept that has the potential to be expanded to more interesting (DSMC) direct simulation Monte Carlo applications.
机译:我们回顾了粒子随机碰撞的Kac主方程模型的推导,其与泊松过程的关系以及现有的算法,该算法可在任何给定时间根据单个粒子的速度边际分布来模拟值。我们描述并实现了一种新算法,该算法可以有效,更充分地利用泊松过程的特性,表明它至少可以与现有方法相媲美,并提供经验证据表明它在捕获单个粒子速度分布的尾部方面可能表现更好。最后,我们推导并实现了一种新颖的“完美抽样”算法,用于随着时间的流逝限制无穷分布。在这种情况下,重要性是一种概念验证,有可能扩展到更有趣的(​​DSMC)直接模拟蒙特卡洛应用程序。

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