论文标题
模型检查参数普通微分方程系统
Model Checking for Parametric Ordinary Differential Equations System
论文作者
论文摘要
普通的微分方程已用于在广泛范围内建模动态系统。模型检查参数普通微分方程是检查假定模型是否合理的必要步骤。在本文中,我们出于不同的目的介绍了三个测试统计数据。我们首先为整个系统提供基于轨迹匹配的测试。为了进一步确定将错误建模的组件函数,我们介绍了两个基于积分匹配和梯度匹配的测试统计信息。我们研究了零,全球和局部替代假设下的三个测试统计数据的渐近性质。为了实现这些目的,我们还研究了零和替代方案下非线性最小二乘估计和两步搭配估计的渐近性。有关估计的结果在文献中也是新的。为了检查测试的性能,我们进行了几个数值模拟。分析了有关免疫细胞动力学和流感感染的运输的真实数据示例,以进行例证。
Ordinary differential equations have been used to model dynamical systems in a broad range. Model checking for parametric ordinary differential equations is a necessary step to check whether the assumed models are plausible. In this paper we introduce three test statistics for their different purposes. We first give a trajectory matching-based test for the whole system. To further identify which component function(s) would be wrongly modelled, we introduce two test statistics that are based on integral matching and gradient matching respectively. We investigate the asymptotic properties of the three test statistics under the null, global and local alternative hypothesis. To achieve these purposes, we also investigate the asymptotic properties of nonlinear least squares estimation and two-step collocation estimation under both the null and alternatives. The results about the estimations are also new in the literature. To examine the performances of the tests, we conduct several numerical simulations. A real data example about immune cell kinetics and trafficking for influenza infection is analyzed for illustration.