复材站
工艺与制造英文2012被引 11

Optimization of CFRP Pultrusion Process with NSGA-II and ANN

Xing Kai Chen, Bing Yan Jiang, Zhou Zhou · Central South University
Ask AI about this
期刊 / 来源Advanced Materials Research
卷/期/页538-541 / 2705-2711
原文链接查看原文 ↗

摘要整理

The temperature and curing degree of carbon fiber reinforced plastic (CFRP) are coupled during pultrusion. In order to figure out the real-time temperature and curing degree of CFRP, the heat transfer model and curing model for resin were established on the basis of curing kinetics and heat transfer theory, and solved by the combination of finite element, finite different and indirect decoupling methods. The fiber Bragg grating (FBG) sensors were utilized to monitor the temperature of CFRP on real-time during pultrusion, while the curing degree of CFRP was measured through Sorbitic extraction. Experimental results show that the simulation method is effective and reliable. According to the simulated results, artificial neural network (ANN) combined with fast elitist non-dominated sorting genetic algorithm (NSGA-Ⅱ) to optimize die temperature and pull speed for pultrusion process, and significant improvements were achieved.

相关论文

← 返回论文库整理:复材站编辑部