热塑性复合材料原位自动纤维放置热建模的理论指导机器学习

IF 8.3 1区 材料科学 Q1 MATERIALS SCIENCE, COMPOSITES
A. Fontes , N. Zobeiry , F. Shadmehri
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引用次数: 0

摘要

热塑性复合材料的原位自动纤维放置(AFP)与传统制造技术相比有几个优点,主要优点是消除了二次热处理。如果不进行二次热处理,原位热历史就成为决定键合发展、结晶动力学和残余应力发展的关键工艺参数。这项工作通过利用理论引导机器学习(TGML)改进了原位自动纤维放置(AFP)制造过程的热建模。基于理论的预层理论导向神经网络(TgNN)对原位AFP制造过程中的三维温度分布进行了建模。TgNN适用于各种热火炬温度和热源速度组合的实验测量温度。特征工程通过对输入特征时间、热电偶坐标、热气炬温度和热源速度进行基于理论的预层变换来实现。与理论不可知的神经网络相比,基于理论的预层变换的TgNN提高了预测能力,并且需要更少的训练数据来实现等效性能。训练后的模型计算效率高,可用于在线过程控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Theory-guided machine learning for thermal modeling of in-situ automated fiber placement of thermoplastic composites

Theory-guided machine learning for thermal modeling of in-situ automated fiber placement of thermoplastic composites
In-situ Automated Fiber Placement (AFP) of thermoplastic composites has several advantages over traditional manufacturing techniques, with the main benefit being eliminating secondary thermal processing. Without secondary heat treatment, the in-situ thermal history becomes the critical process parameter that governs bond development, crystallization kinetics, and the development of residual stresses. This work improves the thermal modeling of the in-situ Automated Fiber Placement (AFP) manufacturing process by leveraging Theory-Guided Machine Learning (TGML). A novel theory-guided neural network (TgNN) with theory-based pre-layer transforms models the three-dimensional temperature distribution during in-situ AFP manufacturing. The TgNN is fit on experimentally measured temperatures for various combinations of hot gas torch temperatures and heat source velocities. Feature engineering is implemented by applying theory-based pre-layer transforms to the input features time, the thermocouple coordinates, hot gas torch temperature, and heat source velocity. Compared to a theory-agnostic neural network, the TgNN with theory-based pre-layer transforms has improved predictive ability and requires fewer training data for equivalent performance. The trained model is computationally efficient and can be leveraged for online process control.
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来源期刊
Composites Science and Technology
Composites Science and Technology 工程技术-材料科学:复合
CiteScore
16.20
自引率
9.90%
发文量
611
审稿时长
33 days
期刊介绍: Composites Science and Technology publishes refereed original articles on the fundamental and applied science of engineering composites. The focus of this journal is on polymeric matrix composites with reinforcements/fillers ranging from nano- to macro-scale. CSTE encourages manuscripts reporting unique, innovative contributions to the physics, chemistry, materials science and applied mechanics aspects of advanced composites. Besides traditional fiber reinforced composites, novel composites with significant potential for engineering applications are encouraged.
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