论文标题
物理信息的多LSTM网络,用于非线性结构的元建模
Physics-Informed Multi-LSTM Networks for Metamodeling of Nonlinear Structures
论文作者
论文摘要
本文介绍了一个创新的物理学深度学习框架,用于对非线性结构系统的元模型,而数据稀缺。基本概念是将物理知识(例如物理法,科学原理定律)纳入深度长期记忆(LSTM)网络,从而促进了可行的解决方案空间中的学习。物理限制嵌入了损失功能中,以强制执行模型训练,该模型训练即使使用非常有限的可用培训数据集也可以准确捕获潜在系统的非线性。专门针对动态结构,运动方程,状态依赖性和滞后构的物理定律被认为可以构建物理损失。特别是,提出了两个具有物理信息的多LSTM网络架构用于结构元模型。通过两个说明性示例成功证明了所提出框架的令人满意的性能(例如,受到地面运动激发的非线性结构)。事实证明,嵌入式物理学可以减轻过度拟合的问题,减少大型培训数据集的需求,并提高受过训练的模型的鲁棒性,以进行更可靠的预测。结果,物理知识的深度学习范式优于经典的非物理引导的数据驱动的神经网络。
This paper introduces an innovative physics-informed deep learning framework for metamodeling of nonlinear structural systems with scarce data. The basic concept is to incorporate physics knowledge (e.g., laws of physics, scientific principles) into deep long short-term memory (LSTM) networks, which boosts the learning within a feasible solution space. The physics constraints are embedded in the loss function to enforce the model training which can accurately capture latent system nonlinearity even with very limited available training datasets. Specifically for dynamic structures, physical laws of equation of motion, state dependency and hysteretic constitutive relationship are considered to construct the physics loss. In particular, two physics-informed multi-LSTM network architectures are proposed for structural metamodeling. The satisfactory performance of the proposed framework is successfully demonstrated through two illustrative examples (e.g., nonlinear structures subjected to ground motion excitation). It turns out that the embedded physics can alleviate overfitting issues, reduce the need of big training datasets, and improve the robustness of the trained model for more reliable prediction. As a result, the physics-informed deep learning paradigm outperforms classical non-physics-guided data-driven neural networks.