Physics-aware deep learning (PADL) has gained popularity for use in complex spatiotemporal dynamics (field evolution) simulations, such as those that arise frequently in computational modeling of energetic materials (EM). Here, we show that the challenge PADL methods face while learning complex field evolution problems can be simplified and accelerated by decoupling it into two tasks: learning complex geometric features in evolving fields and modeling dynamics over these features in a lower dimensional feature space. To accomplish this, we build upon our previous work on physics-aware recurrent convolutions (PARC). PARC embeds knowledge of underlying physics into its neural network architecture for more robust and accurate prediction of evolving physical fields. PARC was shown to effectively learn complex nonlinear features such as the formation of hotspots and coupled shock fronts in various initiation scenarios of EMs, as a function of microstructures, serving effectively as a microstructure-aware burn model. In this work, we further accelerate PARC and reduce its computational cost by projecting the original dynamics onto a lower-dimensional invariant manifold, or 'latent space.' The projected latent representation encodes the complex geometry of evolving fields (e.g. temperature and pressure) in a set of data-driven features. The reduced dimension of this latent space allows us to learn the dynamics during the initiation of EM with a lighter and more efficient model. We observe a significant decrease in training and inference time while maintaining results comparable to PARC at inference. This work takes steps towards enabling rapid prediction of EM thermomechanics at larger scales and characterization of EM structure-property-performance linkages at a full application scale.
翻译:物理感知深度学习(PADL)在复杂时空动力学(场演化)模拟中日益受到关注,例如含能材料(EM)计算建模中频繁出现的场景。本文研究表明,通过将复杂场演化问题的学习任务解耦为两个子任务——学习演化场中的复杂几何特征,以及在低维特征空间中基于这些特征建模动力学——可以简化和加速PADL方法面临的挑战。为实现这一目标,我们在先前提出的物理感知循环卷积(PARC)方法基础上进行拓展。PARC将底层物理知识嵌入神经网络架构,以实现对演化物理场更鲁棒、更精确的预测。研究表明,PARC能有效学习复杂非线性特征,例如含能材料在不同微结构条件下多种起爆场景中热点形成与耦合冲击波前沿的演化,实质上可作为微结构感知的燃烧模型。本工作中,我们通过将原始动力学投影至低维不变流形(即“潜在空间”)进一步加速PARC并降低其计算成本。投影后的潜在表示将演化场(如温度场与压力场)的复杂几何结构编码为一组数据驱动特征。潜在空间的降维特性使我们能够通过更轻量高效的模型学习含能材料起爆过程的动力学。实验表明,在保持推理结果与PARC相当的同时,训练与推理时间显著减少。本研究为大规模含能材料热力学快速预测及全应用尺度下含能材料结构-性能-效能关联表征提供了技术路径。