This work presents a non-intrusive surrogate modeling scheme based on machine learning technology for predictive modeling of complex systems, described by parametrized time-dependent PDEs. For these problems, typical finite element approaches involve the spatiotemporal discretization of the PDE and the solution of the corresponding linear system of equations at each time step. Instead, the proposed method utilizes a convolutional autoencoder in conjunction with a feed forward neural network to establish a low-cost and accurate mapping from the problem's parametric space to its solution space. For this purpose, time history response data are collected by solving the high-fidelity model via FEM for a reduced set of parameter values. Then, by applying the convolutional autoencoder to this data set, a low-dimensional representation of the high-dimensional solution matrices is provided by the encoder, while the reconstruction map is obtained by the decoder. Using the latent representation given by the encoder, a feed-forward neural network is efficiently trained to map points from the problem's parametric space to the compressed version of the respective solution matrices. This way, the encoded response of the system at new parameter values is given by the neural network, while the entire response is delivered by the decoder. This approach effectively bypasses the need to serially formulate and solve the system's governing equations at each time increment, thus resulting in a significant cost reduction and rendering the method ideal for problems requiring repeated model evaluations or 'real-time' computations. The elaborated methodology is demonstrated on the stochastic analysis of time-dependent PDEs solved with the Monte Carlo method, however, it can be straightforwardly applied to other similar-type problems, such as sensitivity analysis, design optimization, etc.
翻译:这项工作展示了一种非侵入性的替代模型模型, 其基础是机器学习技术, 用于预测复杂系统的模型, 其模型的模型由基于时间的 PDE 来描述。 对于这些问题, 典型的有限元素方法涉及PDE 的瞬时分离和对应的线性方程系统的解决方案。 相反, 拟议的方法使用一个连接的自动解析器, 与一个前向神经网络连接, 以建立一个低成本和准确的图解, 从问题的偏移空间到其解决方案空间。 为此, 时间响应数据是通过通过 FEM 解决高偏移的模型来收集的, 以降低参数值值。 然后, 通过对这个数据集应用同级自动解析器, 高维度解析器由编码提供低维度的表示, 而重建图则由解析器获取。 利用编码显示的潜伏图, 电传前向神经神经网络的图被高效地训练到地图点点, 需要从问题模型的偏移空间到精确度系统, 将结果的精确度分析结果的精确度解解路路路路路段 。