论文标题
物理信息的Koopman网络
Physics-Informed Koopman Network
论文作者
论文摘要
Koopman操作员理论由于其有望线性化非线性动力学的承诺而受到越来越多的关注。由于它们具有近似任意复杂功能的能力,开发出代表Koopman运营商的神经网络已取得了巨大的成功。但是,尽管具有很大的潜力,但通常需要大量的培训数据集,要么是从真实系统的测量或高保真模拟中进行的。在这项工作中,我们提出了一种受物理知识神经网络启发的新型架构,该架构利用自动差异来通过模型训练期间的软惩罚限制来强加潜在的物理定律。我们证明,它不仅减少了大型培训数据集的需求,而且还可以在近似Koopman本征函数方面保持较高的有效性。
Koopman operator theory is receiving increased attention due to its promise to linearize nonlinear dynamics. Neural networks that are developed to represent Koopman operators have shown great success thanks to their ability to approximate arbitrarily complex functions. However, despite their great potential, they typically require large training data-sets either from measurements of a real system or from high-fidelity simulations. In this work, we propose a novel architecture inspired by physics-informed neural networks, which leverage automatic differentiation to impose the underlying physical laws via soft penalty constraints during model training. We demonstrate that it not only reduces the need of large training data-sets, but also maintains high effectiveness in approximating Koopman eigenfunctions.