David Julien, Gilles Ardourel, Guillaume Cantin, Benoît Delahaye
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引用次数: 0
摘要
我们提出了一种基于模拟的参数化技术和参数常微分方程稳定性分析技术。这种技术是统计模型检查(Statistical Model Checking)的一种改良,通常用于验证生物模型的有效性,也适用于常微分方程系统。我们的技术旨在估算在常微分方程参数或初始条件变化的情况下,满足给定属性的概率。为此,我们对数值空间进行离散化处理,并使用统计模型检查来根据所提供的数据评估每个单独的数值。与其他现有方法不同的是,我们对结果提供统计保证,其中考虑到了模拟时通过对 ODE 系统进行数值积分而引入的不可避免的近似误差。为了展示我们技术的潜力,我们将其应用于文献中的两个案例研究,一个与水母种群的增长有关,另一个与著名的振荡器模型有关。
End-to-End Statistical Model Checking for Parameterization and Stability Analysis of ODE Models
We propose a simulation-based technique for the parameterization and the stability analysis of parametric Ordinary Differential Equations. This technique is an adaptation of Statistical Model Checking, often used to verify the validity of biological models, to the setting of Ordinary Differential Equations systems. The aim of our technique is to estimate the probability of satisfying a given property under the variability of the parameter or initial condition of the ODE, with any metrics of choice. To do so, we discretize the values space and use statistical model checking to evaluate each individual value w.r.t. provided data. Contrary to other existing methods, we provide statistical guarantees regarding our results that take into account the unavoidable approximation errors introduced through the numerical integration of the ODE system performed while simulating. In order to show the potential of our technique, we present its application to two case studies taken from the literature, one relative to the growth of a jellyfish population, and the other concerning a well-known oscillator model.
期刊介绍:
The ACM Transactions on Modeling and Computer Simulation (TOMACS) provides a single archival source for the publication of high-quality research and developmental results referring to all phases of the modeling and simulation life cycle. The subjects of emphasis are discrete event simulation, combined discrete and continuous simulation, as well as Monte Carlo methods.
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