论文标题

从数据中深入学习热力学意识到的减少订购模型

Deep learning of thermodynamics-aware reduced-order models from data

论文作者

Hernandez, Quercus, Badias, Alberto, Gonzalez, David, Chinesta, Francisco, Cueto, Elias

论文摘要

我们提出了一种算法,以了解大规模离散物理系统的相关潜在变量,并使用热力学上一致的深神经网络预测其时间的演变。我们的方法依赖于稀疏的自动编码器,这些自动编码器将完整模型的维度降低到一组稀疏的潜在变量,而没有对编码空间维度的事先了解。然后,对第二个神经网络进行了训练,以了解那些减少物理变量的元学结构,并通过所谓的具有结构的神经网络来预测其时间演变。该基于数据的集成器可以保证保留系统的总能量和熵不平等,并且可以应用于保守和耗散系统。然后可以将集成的路径解码为原始的全维歧管,并与地面真相解决方案进行比较。该方法通过两个示例用于流体和固体力学。

We present an algorithm to learn the relevant latent variables of a large-scale discretized physical system and predict its time evolution using thermodynamically-consistent deep neural networks. Our method relies on sparse autoencoders, which reduce the dimensionality of the full order model to a set of sparse latent variables with no prior knowledge of the coded space dimensionality. Then, a second neural network is trained to learn the metriplectic structure of those reduced physical variables and predict its time evolution with a so-called structure-preserving neural network. This data-based integrator is guaranteed to conserve the total energy of the system and the entropy inequality, and can be applied to both conservative and dissipative systems. The integrated paths can then be decoded to the original full-dimensional manifold and be compared to the ground truth solution. This method is tested with two examples applied to fluid and solid mechanics.

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