This work proposes a Bayesian inference method for the reduced-order modeling of time-dependent systems. Informed by the structure of the governing equations, the task of learning a reduced-order model from data is posed as a Bayesian inverse problem with Gaussian prior and likelihood. The resulting posterior distribution characterizes the operators defining the reduced-order model, hence the predictions subsequently issued by the reduced-order model are endowed with uncertainty. The statistical moments of these predictions are estimated via a Monte Carlo sampling of the posterior distribution. Since the reduced models are fast to solve, this sampling is computationally efficient. Furthermore, the proposed Bayesian framework provides a statistical interpretation of the regularization term that is present in the deterministic operator inference problem, and the empirical Bayes approach of maximum marginal likelihood suggests a selection algorithm for the regularization hyperparameters. The proposed method is demonstrated on two examples: the compressible Euler equations with noise-corrupted observations, and a single-injector combustion process.
翻译:这项工作为时间依赖系统的减序建模提出了一种贝叶斯推论方法。根据管理方程的结构,从数据中学习减序模型的任务被作为贝叶斯对高斯先前和可能性的反问题提出。由此产生的后部分布特征是操作者界定减序模型的特征,因此,减少型号随后发布的预测具有不确定性。这些预测的统计时间是通过蒙特卡洛对后部分布的抽样估计的。由于减少型号快速解决,这一抽样是计算效率高的。此外,拟议的贝叶斯框架对确定型操作者推断问题中存在的正规化术语提供了统计解释,而实验性边缘可能性最大的海湾方法则为规范化超参数提供了选择算法。拟议方法在两个例子中得到了证明:用噪音干扰观测器进行压缩的欧尔方方程和单导点燃烧过程。