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A structure-preserving method for the distribution of the first hitting time to a moving boundary for some Gaussian processes

机译:对于某些高斯过程,将首次命中时间分配到移动边界的一种保留结构的方法

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In this work, we consider a model for the first hitting time of a moving boundary problem associated to some stochastic processes. In addition to a Gaussian component, the model investigated in this manuscript includes a general deterministic source. In either case, the coefficients of the deterministic and the stochastic terms are general functions with suitable analytical properties that guarantee that the process under investigation possesses continuous paths. As the cornerstone of this manuscript, we establish that the cumulative distribution of probability of the first hitting time is governed by a deterministic advection diffusion partial differential equation subject to initial boundary data, for which the exact solution is known only in certain specific scenarios. Motivated by these limitations, we propose a Crank Nicolson discretization of the deterministic model which is capable of preserving the main structural features of probability distributions, namely, the non-negativity, the boundedness from above by 1 and the monotonicity. To guarantee the preservation of those properties, relatively flexible conditions on the parameters need to be imposed. Additionally, we also prove that our scheme is a consistent, and unconditionally stable and convergent technique which has second order of convergence. Some illustrative simulations demonstrate that the order of convergence is indeed quadratic, and the comparisons against the known exact solutions establish that the method preserves the same structural properties of the relevant solutions. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在这项工作中,我们考虑了与某些随机过程相关的移动边界问题的首次命中时间模型。除了高斯分量外,本手稿中研究的模型还包括一般的确定性来源。在这两种情况下,确定性和随机项的系数都是具有适当分析属性的一般函数,从而确保所研究的过程具有连续的路径。作为该手稿的基石,我们建立了第一次命中时间概率的累积分布受确定性对流扩散偏微分方程的控制,该方程取决于初始边界数据,其精确解仅在某些特定情况下才知道。受这些限制的影响,我们提出了确定性模型的Crank Nicolson离散化方法,该模型能够保留概率分布的主要结构特征,即非负性,从上到下的有界性和单调性。为了保证保留这些特性,需要对参数施加相对灵活的条件。此外,我们还证明了我们的方案是一种具有二阶收敛性的一致,无条件稳定和收敛的技术。一些说明性的仿真表明,收敛的顺序确实是二次的,并且与已知精确解的比较确定该方法保留了相关解的相同结构性质。 (C)2017 Elsevier Ltd.保留所有权利。

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