论文标题
小型数据集的非线性部分微分方程约束的流形的概率学习
Probabilistic learning on manifolds constrained by nonlinear partial differential equations for small datasets
论文作者
论文摘要
提出了概率学习(PLOM)的新颖扩展。它使得可以将解决方案合成到由部分微分方程(PDE)所描述的各种非线性随机边界值问题,其随机计算模型(SCM)可用,并取决于矢量值随机控制参数。假定对该SCM进行单个数值评估的成本是如此,以至于只能计算有限数量来构建训练数据集(小数据)。训练数据集的每个点都是从矢量值随机过程(随机解决方案)及其依赖的相关随机控制参数的实现。由PDE约束的提出的PLOM允许生成大量的随机过程实现及其相应的随机控制参数。这些学到的实现是生成的,以最大程度地减少均值含义上PDE的矢量值随机残差。开发了适当的新方法来解决这个具有挑战性的问题。提出了三个申请。第一个是具有非平稳随机激发的简单不确定的非线性动力学系统。第二个涉及2D非线性不稳定的Navier-Stokes方程,以使Reynolds数字是随机控制参数的不可压缩流。最后一个处理3D弹性结构的非线性动力学,具有不确定性。获得的结果使得验证由随机PDE限制的PLOM成为可能,但也提供了无限制的PLOM的进一步验证。
A novel extension of the Probabilistic Learning on Manifolds (PLoM) is presented. It makes it possible to synthesize solutions to a wide range of nonlinear stochastic boundary value problems described by partial differential equations (PDEs) for which a stochastic computational model (SCM) is available and depends on a vector-valued random control parameter. The cost of a single numerical evaluation of this SCM is assumed to be such that only a limited number of points can be computed for constructing the training dataset (small data). Each point of the training dataset is made up realizations from a vector-valued stochastic process (the stochastic solution) and the associated random control parameter on which it depends. The presented PLoM constrained by PDE allows for generating a large number of learned realizations of the stochastic process and its corresponding random control parameter. These learned realizations are generated so as to minimize the vector-valued random residual of the PDE in the mean-square sense. Appropriate novel methods are developed to solve this challenging problem. Three applications are presented. The first one is a simple uncertain nonlinear dynamical system with a nonstationary stochastic excitation. The second one concerns the 2D nonlinear unsteady Navier-Stokes equations for incompressible flows in which the Reynolds number is the random control parameter. The last one deals with the nonlinear dynamics of a 3D elastic structure with uncertainties. The results obtained make it possible to validate the PLoM constrained by stochastic PDE but also provide further validation of the PLoM without constraint.