Dynamic Mode Decomposition (DMD) is an unsupervised machine learning method that has attracted considerable attention in recent years owing to its equation-free structure, ability to easily identify coherent spatio-temporal structures in data, and effectiveness in providing reasonably accurate predictions for certain problems. Despite these successes, the application of DMD to certain problems featuring highly nonlinear transient dynamics remains challenging. In such cases, DMD may not only fail to provide acceptable predictions but may indeed fail to recreate the data in which it was trained, restricting its application to diagnostic purposes. For many problems in the biological and physical sciences, the structure of the system obeys a compartmental framework, in which the transfer of mass within the system moves within states. In these cases, the behavior of the system may not be accurately recreated by applying DMD to a single quantity within the system, as proper knowledge of the system dynamics, even for a single compartment, requires that the behavior of other compartments is taken into account in the DMD process. In this work, we demonstrate, theoretically and numerically, that, when performing DMD on a fully coupled PDE system with compartmental structure, one may recover useful predictive behavior, even when DMD performs poorly when acting compartment-wise. We also establish that important physical quantities, as mass conservation, are maintained in the coupled-DMD extrapolation. The mathematical and numerical analysis suggests that DMD may be a powerful tool when applied to this common class of problems. In particular, we show interesting numerical applications to a continuous delayed-SIRD model for Covid-19, and to a problem from additive manufacturing considering a nonlinear temperature field and the resulting change of material phase from powder, liquid, and solid states.
翻译:动态模式分解(DMD)是一种不受监督的机器学习方法,近年来因其无方程式结构、能够很容易地识别数据中连贯的时空结构、对一些问题提供合理准确的预测的有效性而引起人们相当重视,因此近年来,DMD是一种不受监督的数学学习方法,它引起了人们的极大关注。尽管取得了这些成功,但将DMD应用于具有高度非线性瞬时动态动态的某些问题仍然具有挑战性。在这种情况下,DMD可能不仅不能提供可接受的预测,而且可能确实未能重新生成它所接受培训的数据,将其应用限于诊断性粉饰目的。在生物和物理科学的许多问题中,系统的结构符合一个分层结构框架,在这个结构内进行质量转移,在这些情况下,系统的行为可能无法准确地通过将DMDD应用到系统内单一数量,因为对系统动态的正确了解,即使是在一个单独的区段,要求其他舱的行为模式在DMDMD进程中得到考虑,在理论上和数字上,对于这项工作,我们证明,即使将DMDD用于一个完全结合的PDE-MAD系统,在持续地进行一个稳定的连续的轨道分析时,也显示一个重要的数字结构。