Highly accurate simulations of complex phenomena governed by partial differential equations (PDEs) typically require intrusive methods and entail expensive computational costs, which might become prohibitive when approximating steady-state solutions of PDEs for multiple combinations of control parameters and initial conditions. Therefore, constructing efficient reduced order models (ROMs) that enable accurate but fast predictions, while retaining the dynamical characteristics of the physical phenomenon as parameters vary, is of paramount importance. In this work, a data-driven, non-intrusive framework which combines ROM construction with reduced dynamics identification, is presented. Starting from a limited amount of full order solutions, the proposed approach leverages autoencoder neural networks with parametric sparse identification of nonlinear dynamics (SINDy) to construct a low-dimensional dynamical model. This model can be queried to efficiently compute full-time solutions at new parameter instances, as well as directly fed to continuation algorithms. These aim at tracking the evolution of periodic steady-state responses as functions of system parameters, avoiding the computation of the transient phase, and allowing to detect instabilities and bifurcations. Featuring an explicit and parametrized modeling of the reduced dynamics, the proposed data-driven framework presents remarkable capabilities to generalize with respect to both time and parameters. Applications to structural mechanics and fluid dynamics problems illustrate the effectiveness and accuracy of the proposed method.
翻译:高精度模拟受偏微分方程(PDEs)支配的复杂现象通常需要侵入性方法并具有昂贵的计算成本,特别是在为多个控制参数和初始条件逼近PDE的稳态解时,成本可能会变得令人望而生畏。因此,构建高效的降阶模型(ROM),既能快速又准确地预测,同时保留物理现象随参数变化的动态特性,至关重要。本文提出了一种非侵入式的数据驱动框架,将ROM构建与约简动力学识别相结合。从有限数量的高阶解开始,该方法利用带有参数稀疏非线性动态(SINDy)的自动编码器神经网络构建低维动力学模型。该模型可以查询以有效计算新参数实例的完整时间解,也可以直接输入到连续算法中。这些算法旨在在系统参数函数中跟踪周期稳态响应的演变,避免计算瞬态相位,并允许检测不稳定性和分岔。提供了明确和参数化的约简动力学建模,所提出的数据驱动框架具有对时间和参数的广泛泛化能力。结构力学和流体力学问题的应用说明了所提出方法的有效性和准确性。