Extracting fiber paths from the optimized lamination parameters of variable-stiffness laminated shells based on physic-informed neural network

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING Computer-Aided Design Pub Date : 2024-11-01 DOI:10.1016/j.cad.2024.103821
Xinming Li, Lujie Ma, Bowen Ji, Kuan Fan, Zhengdong Huang
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Abstract

This paper presents a novel approach for extracting fiber paths from the optimized lamination parameters (LPs) of variable stiffness laminated shells, utilizing the framework of physics-informed neural network (PINN). In this methodology, each fiber layer is associated with a specific stream function, which is approximated by an independent neural network. The stream function is governed by a partial differential equation (PDE) derived from the fiber orientation field in the parameter space. Moreover, the isocontours of the stream function are transformed into the actual fiber paths in the physical space. To account for manufacturing constraints, Riemannian geometry serves as a computational tool to determine the intrinsic distance between adjacent fiber paths and the geodesic curvature of the isocontours. By incorporating regularization terms into the loss function based on the physical relationships, the constrained optimization problem is converted into an unconstrained one, making it more suitable for neural network training. Meanwhile, a fiber path extraction (FPE) algorithm is used to minimize the loss function at randomly sampled points through gradient descent. The numerical results suggest that the extraction of fiber paths using PINN can achieve satisfactory levels of accuracy while effectively satisfying the imposed constraints.
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基于物理信息神经网络从可变刚度层压壳的优化层压参数中提取纤维路径
本文提出了一种新方法,利用物理信息神经网络(PINN)框架,从可变刚度层压壳的优化层压参数(LP)中提取纤维路径。在这种方法中,每个纤维层都与一个特定的流函数相关联,该流函数由一个独立的神经网络来近似。流函数受参数空间中纤维定向场衍生的偏微分方程(PDE)控制。此外,流函数的等值线被转换为物理空间中的实际纤维路径。为了考虑制造限制,黎曼几何是一种计算工具,用于确定相邻光纤路径之间的固有距离和等值线的大地曲率。通过在基于物理关系的损失函数中加入正则化项,有约束优化问题被转换为无约束优化问题,使其更适合神经网络训练。同时,采用光纤路径提取(FPE)算法,通过梯度下降法使随机采样点的损失函数最小化。数值结果表明,使用 PINN 提取光纤路径可以达到令人满意的精度水平,同时有效地满足所施加的约束条件。
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来源期刊
Computer-Aided Design
Computer-Aided Design 工程技术-计算机:软件工程
CiteScore
5.50
自引率
4.70%
发文量
117
审稿时长
4.2 months
期刊介绍: Computer-Aided Design is a leading international journal that provides academia and industry with key papers on research and developments in the application of computers to design. Computer-Aided Design invites papers reporting new research, as well as novel or particularly significant applications, within a wide range of topics, spanning all stages of design process from concept creation to manufacture and beyond.
期刊最新文献
Extracting fiber paths from the optimized lamination parameters of variable-stiffness laminated shells based on physic-informed neural network A Hybrid Recognition Framework for Highly Interacting Machining Features Based on Primitive Decomposition, Learning and Reconstruction Editorial Board SITF: A Self-Supervised Iterative Training Framework for Point Cloud Denoising Two-Level High-Resolution Structural Topology Optimization with Equilibrated Cells
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