论文标题
使用高斯过程差异模型的贝叶斯结构识别
Bayesian Structural Identification using Gaussian Process Discrepancy Models
论文作者
论文摘要
近年来,基于高斯流程(GP)模型的贝叶斯模型更新已受到关注,该模型纳入了基于内核的GP,以提供增强的忠实响应预测。尽管大多数内核功能在训练数据集中都具有高拟合的精度,但它们的样本外预测可能是高度不准确的。本文通过在一致的概率基础上重新解决该问题,回顾了内核协方差函数的常见选择,并提出了新的贝叶斯模型选择内核功能选择,旨在在拟合准确性,推广性和模型偏见之间建立平衡。计算方面是通过拉普拉斯近似和采样技术来解决的,提供了详细的算法和策略。包括数值和实验示例,以证明所提出的框架的准确性和鲁棒性。结果,根据贝叶斯模型选择方法以及对响应差异的样本自相关函数的观察,对指数 - 三基因程协方差函数进行了表征和合理。
Bayesian model updating based on Gaussian Process (GP) models has received attention in recent years, which incorporates kernel-based GPs to provide enhanced fidelity response predictions. Although most kernel functions provide high fitting accuracy in the training data set, their out-of-sample predictions can be highly inaccurate. This paper investigates this problem by reformulating the problem on a consistent probabilistic foundation, reviewing common choices of kernel covariance functions, and proposing a new Bayesian model selection for kernel function selection, aiming to create a balance between fitting accuracy, generalizability, and model parsimony. Computational aspects are addressed via Laplace approximation and sampling techniques, providing detailed algorithms and strategies. Numerical and experimental examples are included to demonstrate the accuracy and robustness of the proposed framework. As a result, an exponential-trigonometric covariance function is characterized and justified based on the Bayesian model selection approach and observations of the sample autocorrelation function of the response discrepancies.