Micro-Electro-Mechanical-Systems are complex structures, often involving nonlinearites of geometric and multiphysics nature, that are used as sensors and actuators in countless applications. Starting from full-order representations, we apply deep learning techniques to generate accurate, efficient and real-time reduced order models to be used as virtual twin for the simulation and optimization of higher-level complex systems. We extensively test the reliability of the proposed procedures on micromirrors, arches and gyroscopes, also displaying intricate dynamical evolutions like internal resonances. In particular, we discuss the accuracy of the deep learning technique and its ability to replicate and converge to the invariant manifolds predicted using the recently developed direct parametrization approach that allows extracting the nonlinear normal modes of large finite element models. Finally, by addressing an electromechanical gyroscope, we show that the non-intrusive deep learning approach generalizes easily to complex multiphysics problems
翻译:微电子-机械-机械-系统系统是复杂的结构,往往涉及非线性几何和多物理学的非线性元素,在无数的应用中用作传感器和导动器。我们从全序演示开始,运用深学习技术来生成准确、高效和实时减少的顺序模型,作为模拟和优化高层次复杂系统的虚拟双胞胎。我们广泛测试微镜、拱门和陀螺仪的拟议程序的可靠性,并展示复杂的动态进化,如内部共振。特别是,我们讨论了深学习技术的准确性及其利用最近开发的直接对称法复制和汇合预测的变量元体的能力,这种方法可以提取大型有限元素模型的非线性正常模式。最后,通过处理电子机械陀螺仪,我们表明,非侵入性的深学习方法很容易被复杂的多物理问题所利用。