利用神经网络建立碳纤维增强聚合物激光加工质量的高精度预测模型

Guanghui Zhang, Ze Lin, Xueqian Qin, Changlong Wei, Zhen Zhao, Yao Wang, Liao Zhou, Jia Zhou, Yuhong Long
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摘要

为了解决碳纤维增强聚合物(CFRP)激光加工引起的热损伤问题,研究人员对碳纤维增强聚合物激光加工过程中的工艺参数进行了优化研究。他们的目的是阐明工艺参数与加工质量之间的关系,以尽量减少热损伤。然而,在激光加工过程中,工艺参数与加工质量之间存在着复杂的非线性关系,这使得建立高精度预测模型具有挑战性,而这两方面之间的内在联系仍未完全揭示。有鉴于此,本研究提出利用机器学习技术探索工艺参数与加工质量之间的内在联系,并建立了 5-13-5 型反向传播(BP)神经网络预测模型。随后,利用遗传算法优化 BP 神经网络的权重和阈值,并对模型进行验证。结果表明,BP 神经网络预测模型对表面热影响区(HAZ)产生的平均误差为 5%,对沟槽宽度产生的平均误差为 2.9%,对横截面 HAZ 产生的平均误差为 5.9%,对沟槽深度产生的平均误差为 1.8%,对纵横比产生的平均误差为 4.5%。GA-BP 模型在预测表面 HAZ 和沟槽宽度时,误差分别为 4.5% 和 2.7%,与 BP 模型相比误差较小,表明预测精度较高。本研究建立的 GA-BP 模型揭示了工艺参数与加工质量之间的内在联系,为有效预测 CFRP 加工质量提供了一种新方法。
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High-accuracy predictive model for carbon fiber reinforced polymer laser machining quality using neural networks
In order to address the issue of thermal damage induced by laser processing of carbon fiber reinforced polymer (CFRP), researchers have conducted an optimization study of process parameters in the laser processing of CFRP. Their aim is to elucidate the relationship between process parameters and processing quality to minimize thermal damage. However, during laser processing, there exists a complex nonlinear relationship between process parameters and processing quality, making it challenging to establish high-precision predictive models, while the intrinsic connection between these two aspects remains incompletely revealed. In light of this, this study proposes utilization of machine learning techniques to explore the inherent relationship between process parameters and processing quality and establishes a 5-13-5 type back-propagation (BP) neural network predictive model. Subsequently, genetic algorithms are employed to optimize the weights and thresholds of the BP neural network, and the model is then subjected to validation. The results indicate that the BP neural network predictive model yields average errors of 5% for surface heat-affected zone (HAZ), 2.9% for groove width, 5.9% for cross-sectional HAZ, 1.8% for groove depth, and 4.5% for aspect ratio, demonstrating a relatively high level of accuracy but with notable fluctuations. The GA-BP model, when predicting the surface HAZ and the groove width, achieves errors of 4.5% and 2.7%, respectively, which are lower when compared to the BP model, indicating a higher predictive accuracy. The GA-BP model established in this study unveils the intrinsic connection between process parameters and processing quality, providing a novel means for an effective quality prediction in the processing of CFRP.
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