We introduce a novel hybrid methodology combining classical finite element methods (FEM) with neural networks to create a well-performing and generalizable surrogate model for forward and inverse problems. The residual from finite element methods and custom loss functions from neural networks are merged to form the algorithm. The Finite Element Method-enhanced Neural Network hybrid model (FEM-NN hybrid) is data-efficient and physics conforming. The proposed methodology can be used for surrogate models in real-time simulation, uncertainty quantification, and optimization in the case of forward problems. It can be used for updating the models in the case of inverse problems. The method is demonstrated with examples, and the accuracy of the results and performance is compared against the conventional way of network training and the classical finite element method. An application of the forward-solving algorithm is demonstrated for the uncertainty quantification of wind effects on a high-rise buildings. The inverse algorithm is demonstrated in the speed-dependent bearing coefficient identification of fluid bearings. The hybrid methodology of this kind will serve as a paradigm shift in the simulation methods currently used.
翻译:我们引入了一种新型混合方法,将典型的有限元素方法(FEM)与神经网络结合起来,为前方和反面问题创建一种良好和可通用的替代模型;将有限元素方法的剩余部分和神经网络的定制损失功能合并成算法;将增强的精度方法增强神经网络混合模型(FEM-NNN混合体)的数据效率和物理兼容性;拟议方法可用于实时模拟替代模型、不确定性量化和前方问题情况下的优化;在反面问题的情况下,可用于更新模型;该方法以实例的形式展示,并将结果和性能的准确性与传统的网络培训方式和典型的有限要素方法进行比较;将前方消化算法的应用用于对高楼的风效应进行不确定性的量化;反向算法表现为对含液体的速依赖的系数识别。这种混合法将在目前使用的模拟方法中起到示范性转变作用。