Although projection-based reduced-order models (ROMs) for parameterized nonlinear dynamical systems have demonstrated exciting results across a range of applications, their broad adoption has been limited by their intrusivity: implementing such a reduced-order model typically requires significant modifications to the underlying simulation code. To address this, we propose a method that enables traditionally intrusive reduced-order models to be accurately approximated in a non-intrusive manner. Specifically, the approach approximates the low-dimensional operators associated with projection-based reduced-order models (ROMs) using modern machine-learning regression techniques. The only requirement of the simulation code is the ability to export the velocity given the state and parameters as this functionality is used to train the approximated low-dimensional operators. In addition to enabling nonintrusivity, we demonstrate that the approach also leads to very low computational complexity, achieving up to $1000\times$ reduction in run time. We demonstrate the effectiveness of the proposed technique on two types of PDEs.
翻译:虽然参数化非线性动态系统的投影减序模型(ROMs)在一系列应用中显示出令人振奋的结果,但其广泛采用却受到其侵扰性的限制:实施这种减序模型通常要求对基本模拟代码进行重大修改。为了解决这一问题,我们提议一种方法,使传统上侵入性减序模型能够以非侵入方式准确估计出准确的不侵入性。具体地说,这种方法接近使用现代机器学习回归技术的投影减序模型(ROMs)相关低维操作员。模拟代码的唯一要求是,根据这种功能用于培训近似低维操作员的状态和参数,能够输出速度。除了使非侵入性功能发挥作用外,我们证明,该方法还导致极低的计算复杂性,在运行时达到1 000美元减幅。我们展示了两种PDE技术的拟议效果。