Sobol序列
替代模型
残余物
人工神经网络
计算机科学
有限元法
自适应采样
冗余(工程)
双环戊二烯
算法
人工智能
灵敏度(控制系统)
机器学习
材料科学
聚合
数学
工程类
结构工程
统计
蒙特卡罗方法
聚合物
电子工程
操作系统
复合材料
作者
Qibang Liu,Diab Abueidda,Sagar Vyas,Yuan Gao,Seid Korić,Philippe H. Geubelle
标识
DOI:10.1021/acs.jpcb.3c07714
摘要
Frontal polymerization (FP) is a self-sustaining curing process that enables rapid and energy-efficient manufacturing of thermoset polymers and composites. Computational methods conventionally used to simulate the FP process are time-consuming, and repeating simulations are required for sensitivity analysis, uncertainty quantification, or optimization of the manufacturing process. In this work, we develop an adaptive surrogate deep-learning model for FP of dicyclopentadiene (DCPD), which predicts the evolution of temperature and degree of cure orders of magnitude faster than the finite-element method (FEM). The adaptive algorithm provides a strategy to select training samples efficiently and save computational costs by reducing the redundancy of FEM-based training samples. The adaptive algorithm calculates the residual error of the FP governing equations using automatic differentiation of the deep neural network. A probability density function expressed in terms of the residual error is used to select training samples from the Sobol sequence space. The temperature and degree of cure evolution of each training sample are obtained by a 2D FEM simulation. The adaptive method is more efficient and has a better prediction accuracy than the random sampling method. With the well-trained surrogate neural network, the FP characteristics (front speed, shape, and temperature) can be extracted quickly from the predicted temperature and degree-of-cure fields.
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