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Modeling and optimization of joint quality for laser transmission joint of thermoplastic using an artificial neural network and a genetic algorithm

机译:基于人工神经网络和遗传算法的热塑性激光传输接头接头质量建模与优化。

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摘要

A central composite rotatable experimental design(CCRD) is conducted to design experiments for laser transmission joining of thermoplastic-Polycarbonate (PC). The artificial neural network was used to establish the relationships between laser transmission joining process parameters (the laser power, velocity, clamp pressure, scanning number) and joint strength and joint seam width. The developed mathematical models are tested by analysis of variance (ANOVA) method to check their adequacy and the effects of process parameters on the responses and the interaction effects of key process parameters on the quality are analyzed and discussed. Finally, the desirability function coupled with genetic algorithm is used to carry out the optimization of the joint strength and joint width. The results show that the predicted results of the optimization are in good agreement with the experimental results, so this study provides an effective method to enhance the joint quality.
机译:进行了中心复合材料可旋转实验设计(CCRD),以设计用于热塑性聚碳酸酯(PC)激光透射接合的设计实验。人工神经网络用于建立激光传输连接工艺参数(激光功率,速度,夹持压力,扫描次数)与连接强度和接缝宽度之间的关系。通过方差分析(ANOVA)方法对建立的数学模型进行检验,以检验其是否足够,并分析和讨论过程参数对响应的影响,并讨论和讨论关键过程参数对质量的相互作用。最后,将期望函数与遗传算法相结合,对接缝强度和接缝宽度进行优化。结果表明,优化后的预测结果与实验结果吻合良好,为提高接头质量提供了有效的手段。

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