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Estimating first-passage time distributions from weighted ensemble simulations and non-Markovian analyses

机译:从加权总体模拟和非马尔可夫分析估计首次通过时间分布

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摘要

First-passage times (FPTs) are widely used to characterize stochastic processes such as chemical reactions, protein folding, diffusion processes or triggering a stock option. In previous work (Suarez et al., JCTC 2014;10:2658-2667), we demonstrated a non-Markovian analysis approach that, with a sufficient subset of history information, yields unbiased mean first-passage times from weighted-ensemble (WE) simulations. The estimation of the distribution of the first-passage times is, however, a more ambitious goal since it cannot be obtained by direct observation in WE trajectories. Likewise, a large number of events would be required to make a good estimation of the distribution from a regular "brute force" simulation. Here, we show how the previously developed non-Markovian analysis can generate approximate, but highly accurate, FPT distributions from WE data. The analysis can also be applied to any other unbiased trajectories, such as from standard molecular dynamics simulations. The present study employs a range of systems with independent verification of the distributions to demonstrate the success and limitations of the approach. By comparison to a standard Markov analysis, the non-Markovian approach is less sensitive to the user-defined discretization of configuration space.
机译:首次通过时间(FPT)被广泛用于表征随机过程,例如化学反应,蛋白质折叠,扩散过程或触发股票期权。在先前的工作中(Suarez et al。,JCTC 2014; 10:2658-2667),我们展示了一种非马尔可夫分析方法,该方法具有足够的历史信息子集,可从加权集合(WE )模拟。然而,首次通过时间分布的估计是一个更加雄心勃勃的目标,因为无法通过直接观察WE轨迹来获得它。同样,将需要大量事件来从常规“蛮力”模拟中很好地估计分布。在这里,我们展示了先前开发的非马尔可夫分析如何能够从WE数据生成近似但高度准确的FPT分布。该分析还可以应用于任何其他无偏航迹,例如来自标准分子动力学模拟的航迹。本研究采用了一系列具有独立验证分布的系统,以证明该方法的成功和局限性。与标准的马尔可夫分析相比,非马尔可夫方法对用户定义的配置空间离散化不太敏感。

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