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Optimization of mechanical characteristics of short glass fiber and polytetrafluoroethylene reinforced polycarbonate composites using the neural network approach

机译:使用神经网络方法优化短玻璃纤维和聚四氟乙烯增强聚碳酸酯复合材料的机械性能

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摘要

This study analyzed variations in mechanical properties that depend on the injection molding process during the blending of short glass fiber (SGF) and polytetrafluoroethylene (PTFE) reinforced polycarbonate (PC) composites. Experiments were planned according to a D-optimal mixture design (DMD) method. A hybrid method integrating back-propagation neural networking (BPNN), genetic algorithm (CA), and simulated annealing algorithm (SAA) is proposed for use in determining the optimal mixture ratio settings. The results of a DMD experimental run were used to train the BPNN in predicting mechanical properties and then the GA and SAA approaches were applied to individual searches to find the optimal mixture ratio settings. In addition, analysis of variance (ANOVA) was applied to identify the effect of mixture ratio of SGF and PTFE reinforced PC composites for the ultimate strength, flexural strength and impact resistance. The results show that the combinations of BPNN/GA and BPNN/SAA methods are effective tools for the optimization of the reinforced process.
机译:这项研究分析了短玻璃纤维(SGF)和聚四氟乙烯(PTFE)增强聚碳酸酯(PC)复合材料共混期间机械性能的变化,这些变化取决于注塑工艺。根据D最佳混合设计(DMD)方法计划了实验。提出了一种结合了反向传播神经网络(BPNN),遗传算法(CA)和模拟退火算法(SAA)的混合方法,用于确定最佳混合比设置。 DMD实验运行的结果用于训练BPNN预测机械性能,然后将GA和SAA方法应用于单个搜索以找到最佳混合比设置。此外,应用方差分析(ANOVA)来确定SGF和PTFE增强PC复合材料的混合比对极限强度,抗弯强度和抗冲击性的影响。结果表明,BPNN / GA和BPNN / SAA方法的组合是优化强化过程的有效工具。

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