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Optimization of fiber-orientation distribution in fiber-reinforced composite injection molding by Taguchi, back propagation neural network, and genetic algorithm–particle swarm optimization:

机译:Taguchi,反向传播神经网络和遗传算法-粒子群算法优化了纤维增强复合材料注射成型中的纤维取向分布:

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Fiber orientation induced by injection molding of short-fiber-reinforced composites causes anisotropy in material properties and produces warping. Fiber-orientation distribution is very important to research for mold design and quality to produce sound molded parts. In this study, three kinds of methods are used to solve the optimization problem. Fiber-orientation distribution is described by fiber-orientation tensor variation. The objective function is a minimum problem of the fiber-orientation tensor variation. Parameters such as fiber content, fiber aspect ratio, melting temperature, injection pressure, holding pressure, and filling time are considered as design variables. Based on orthogonal experiment design, Moldflow software is used in the fiber-reinforced acrylonitrile butadiene styrene composite injection molding. The effects of process parameters for the plastic part are studied using the signal-to-noise ratio. The most important design parameter influencing fiber-orientation tensor variation is...
机译:短纤维增强复合材料的注塑成型引起的纤维取向会引起材料性能的各向异性并产生翘曲。纤维取向分布对于研究模具设计和质量以生产出良好的成型零件非常重要。在这项研究中,使用三种方法来解决优化问题。纤维取向分布通过纤维取向张量变化来描述。目标函数是纤维取向张量变化的最小问题。诸如纤维含量,纤维长径比,熔融温度,注射压力,保持压力和填充时间等参数被视为设计变量。基于正交试验设计,将Moldflow软件用于纤维增强的丙烯腈丁二烯苯乙烯复合材料的注塑成型。使用信噪比研究了塑料零件的工艺参数的影响。影响纤维取向张量变化的最重要的设计参数是...

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