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On spike-and-slab priors for Bayesian equation discovery of nonlinear dynamical systems via sparse linear regression

机译:通过稀疏线性回归对非线性动力系统的飙升和平板电视峰值

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摘要

This paper presents the use of spike-and-slab (SS) priors for discovering governing differential equations of motion of nonlinear structural dynamic systems. The problem of discovering governing equations is cast as that of selecting relevant variables from a predetermined dictionary of basis functions and solved via sparse Bayesian linear regression. The SS priors, which belong to a class of discrete-mixture priors and are known for their strong sparsifying (or shrinkage) properties, are employed to induce sparse solutions and select relevant variables. Three different variants of SS priors are explored for performing Bayesian equation discovery. As the posteriors with SS priors are analytically intractable, a Markov chain Monte Carlo (MCMC)-based Gibbs sampler is employed for drawing posterior samples of the model parameters; the posterior samples are used for basis function selection and parameter estimation in equation discovery. The proposed algorithm has been applied to four systems of engineering interest, which include a baseline linear system, and systems with cubic stiffness, quadratic viscous damping, and Coulomb damping. The results demonstrate the effectiveness of the SS priors in identifying the presence and type of nonlinearity in the system. Additionally, comparisons with the Sparse Bayesian (SBL) - that uses a Student's-t prior - indicate that the SS priors can achieve better model selection consistency, reduce false discoveries, and derive models that have superior predictive accuracy. Finally, the Silverbox experimental benchmark is used to validate the proposed methodology.
机译:本文介绍了使用Spike和Slab(SS)前沿用于发现非线性结构动态系统运动的控制微分方程。发现管理方程的问题是从基本函数的基础函数词典中选择相关变量并通过稀疏贝叶斯线性回归解决的问题。属于一类离散混合前的SS前导者并以其强烈的稀疏(或收缩)属性已知,用于诱导稀疏解决方案并选择相关变量。探讨了贝叶斯方程发现的三种不同的SS前瞻型。由于SS Provers的后索犬是棘手的,基于Markov链Monte Carlo(MCMC)的GIBBS采样器用于绘制模型参数的后验样;后部样本用于等式发现中的基函数选择和参数估计。所提出的算法已应用于四种工程兴趣系统,包括基线线性系统,以及具有立方刚度,二次粘性阻尼和库仑阻尼的系统。结果证明了SS Priors在识别系统中非线性的存在和类型的有效性。此外,与稀疏贝叶斯(SBL)的比较 - 使用学生-T的比较 - 表明SS Priors可以实现更好的模型选择一致性,减少虚假发现,以及具有卓越预测精度的衍生模型。最后,Silverbox实验基准用于验证所提出的方法。

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