Machine Learning (ML) has widely been used for modeling and predicting physical systems. These techniques offer high expressive power and good generalizability for interpolation within observed data sets. However, the disadvantage of black-box models is that they underperform under blind conditions since no physical knowledge is incorporated. Physics-based ML aims to address this problem by retaining the mathematical flexibility of ML techniques while incorporating physics. In accord, this paper proposes to embed mechanics-based models into the mean function of a Gaussian Process (GP) model and characterize potential discrepancies through kernel machines. A specific class of kernel function is promoted, which has a connection with the gradient of the physics-based model with respect to the input and parameters and shares similarity with the exact Autocovariance function of linear dynamical systems. The spectral properties of the kernel function enable considering dominant periodic processes originating from physics misspecification. Nevertheless, the stationarity of the kernel function is a difficult hurdle in the sequential processing of long data sets, resolved through hierarchical Bayesian techniques. This implementation is also advantageous to mitigate computational costs, alleviating the scalability of GPs when dealing with sequential data. Using numerical and experimental examples, potential applications of the proposed method to structural dynamics inverse problems are demonstrated.
翻译:机械学习(ML)被广泛用于物理系统的建模和预测,这些技术在观测到的数据集内为内插提供了高清晰度和良好的通用性,但黑盒模型的缺点是,由于没有纳入物理知识,在盲情况下,它们没有在物理知识中发挥作用。基于物理的ML旨在通过保留ML技术的数学灵活性来解决这个问题。与此相关的是,本文件建议将基于机械的模型纳入高斯进程(GP)模型的平均值,并通过内核机器来辨别潜在的差异。促进一种特定的内核功能类别,这与基于物理的模型在输入和参数方面的梯度有关,并且与线性动态系统的确切自动变异功能有相似性。内核功能的光谱特性使得能够考虑到源自物理特性错误的占支配地位的周期过程。然而,内核功能的固定性是长期数据集的顺序处理中的一个困难障碍,通过级贝亚斯技术加以解决。实施这一功能还有利于降低计算成本,减轻基于物理的模型在输入和参数参数方面的梯度,并且与线形动态系统的精确应用中拟议的结构变的模型。</s>