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Parameter Estimation of Partial Differential Equation Models

机译:偏微分方程模型的参数估计

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摘要

Partial differential equation (PDE) models are commonly used to model complex dynamic systems in applied sciences such as biology and finance. The forms of these PDE models are usually proposed by experts based on their prior knowledge and understanding of the dynamic system. Parameters in PDE models often have interesting scientific interpretations, but their values are often unknown, and need to be estimated from the measurements of the dynamic system in the present of measurement errors. Most PDEs used in practice have no analytic solutions, and can only be solved with numerical methods. Currently, methods for estimating PDE parameters require repeatedly solving PDEs numerically under thousands of candidate parameter values, and thus the computational load is high. In this article, we propose two methods to estimate parameters in PDE models: a parameter cascading method and a Bayesian approach. In both methods, the underlying dynamic process modeled with the PDE model is represented via basis function expansion. For the parameter cascading method, we develop two nested levels of optimization to estimate the PDE parameters. For the Bayesian method, we develop a joint model for data and the PDE, and develop a novel hierarchical model allowing us to employ Markov chain Monte Carlo (MCMC) techniques to make posterior inference. Simulation studies show that the Bayesian method and parameter cascading method are comparable, and both outperform other available methods in terms of estimation accuracy. The two methods are demonstrated by estimating parameters in a PDE model from LIDAR data.
机译:偏微分方程(PDE)模型通常用于对诸如生物学和金融学等应用科学中的复杂动态系统进行建模。这些PDE模型的形式通常由专家根据他们对动态系统的先验知识和理解而提出。 PDE模型中的参数通常具有有趣的科学解释,但是它们的值通常是未知的,在存在测量误差的情况下,需要根据动态系统的测量来估算它们。在实践中使用的大多数PDE都没有解析解,只能通过数值方法求解。当前,用于估计PDE参数的方法需要在数千个候选参数值下以数值方式反复求解PDE,因此计算量很大。在本文中,我们提出了两种估计PDE模型中参数的方法:参数级联方法和贝叶斯方法。在这两种方法中,用PDE模型建模的基础动态过程都是通过基函数扩展来表示的。对于参数级联方法,我们开发了两个嵌套的优化级别来估计PDE参数。对于贝叶斯方法,我们开发了数据和PDE的联合模型,并开发了一种新颖的层次模型,允许我们使用马尔可夫链蒙特卡洛(MCMC)技术进行后验推断。仿真研究表明,贝叶斯方法和参数级联方法具有可比性,并且在估计精度方面均优于其他可用方法。通过从LIDAR数据估计PDE模型中的参数来演示这两种方法。

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