This paper considers Bayesian parameter estimation of dynamic systems using a Markov Chain Monte Carlo (MCMC) approach. The Metroplis-Hastings (MH) algorithm is employed, and the main contribution of the paper is to examine and illustrate the efficacy of a particular proposal density based on energy preserving Hamiltonian dynamics, which results in what is known in the statistics literature as ``Hamiltonian Monte--Carlo'' (HMC). The very significant utility of this approach is that, as will be illustrated, it greatly reduces (almost to the point of elimination) the typically very high correlation in the Metropolis--Hastings chain which has been observed by several authors to restrict the application of the MH approach to only very low dimension model structures. The paper illustrates how the HMC approach may be applied to both significant dimension linear and nonlinear model structures, even when the system order is unknown, and using both simulated and real data.
翻译:本文件考虑了使用马克夫链链-蒙特卡洛(MCMC)方法对动态系统进行Bayesian参数估计的情况。采用了Metroplis-Hastings(MH)算法,该文件的主要贡献是研究和说明基于节能的汉密尔顿动力学的特定提议密度的有效性,这导致统计文献中称为“Hamiltonian Monte-Carlo'(HMC)” (HMC)的所谓“Hamiltonian Monte-Carlo' (HMC) ” (HMMC) 。这一方法的非常重要的效用是,正如人们将要说明的那样,它大大减少(几乎是消除点)Metropolis-Hastings 链中典型的非常高的关联性,一些作者已经观察到这一点,即将MH方法的应用限制在非常低的维度模型结构中。该文件说明了HMC方法如何适用于重要的维度线性和非线性模型结构,即使系统秩序不明,并且使用模拟数据和真实数据。