基于AFP工艺多目标优化的CFRP预浸料高质量铺层研究

Research on high-quality layering of CFRP prepreg based on multi-objective optimization of AFP process

  • 摘要: 自动纤维铺设(automated fiber placement, AFP)在制造高性能碳纤维增强聚合物(carbon fiber reinforced polymer, CFRP)复合材料产品中发挥着重要作用,其质量受到工艺参数的显著影响。探讨了由自建AFP机制造的CFRP复合材料预浸料的铺层质量,分析了工艺参数对其影响。通过单因素试验方法,分析了AFP性能(预浸料的贴合状态、变形及气泡数量)与工艺参数(工具温度、铺放速度和压实压力)之间的关系。在此基础上,使用人工神经网络(artificial neural network, ANN)建立回归模型,并通过粒子群优化(particle swarm optimization, PSO)确定最佳网络结构以提高预测精度。通过多目标粒子群优化(multi-objective particle swarm optimization, MOPSO)解决三目标优化问题,获得最优的Pareto解集。结合层次分析法(analytic hierarchy process, AHP)的复杂比例评估(complex proportional assessment, COPRAS)方法用于从备选解集中确定最佳参数组合。

     

    Abstract: Automated fiber placement (AFP) plays an important role in fabricating high-performance carbon fiber reinforced polymer (CFRP) composite products, whose quality is largely influenced by process parameters. The lay-up quality of CFRP composite prepregs manufactured by the self-built AFP machine was discussed, and the influence of process parameters on it was analyzed. The relationship between AFP properties (bonding condition between prepregs, deformation of prepregs, and number of bubbles) and process parameters (tool temperature, placement speed, and compaction pressure) were analyzed by single-factor experimental method. Based on this foundation, the regression model was then established using artificial neural network (ANN), whose optimal architecture was identified by particle swarm optimization (PSO) to improve predictive accuracy. The three-objective optimization problem was solved by multi-objective particle swarm optimization (MOPSO) to get the optimal Pareto set. Complex proportional assessment (COPRAS) combined with analytic hierarchy process (AHP) was applied to determine the best parameter combination from the alternative set.

     

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