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Prediction of Manufacturing Quality of Holes Based on a BP Neural Network

机译:基于BP神经网络的孔的制造质量预测

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摘要

In order to improve the manufacturing quality of holes (Φ3−Φ8 mm) and to optimize the hole drilling process in T300 carbon fiber-reinforced plastic (CFRP) and 7050-T7 Al alloy stacks, a prediction model of multiple objective parameter optimization was proposed based on a back propagation (BP) neural network algorithm. Four parameters of feed rate, spindle speed, drilling diameter, and cushion plate were taken as the input layer parameters to study the manufacturing quality of holes in four stack types: CFRP/Al, Al/CFRP, Al/CFRP/Al, and CFRP/Al/CFRP. Delamination and tearing defects often appear in the drilling process; thus, a certain degree of defects in CFRP was selected as the output parameter, in an effort to build a prediction model of drilling quality. After the neural network model of the optimized hole-making process of an 8−14−1 three-layer topology was corrected by 170 steps, the error was reduced to 0.00016882, the regression fitting was 0.99978, and the fitting error of training samples was 10−2~10−5. The prediction model of the number of defective holes provided basically similar results to the experimental data. This indicates that the prediction model based on a BP neural network has good prediction ability. Based on the prediction of parameters, verification tests were performed, and the number of defective holes in CFRP was reduced while the manufacturing quality of the holes was improved significantly; the qualified rate of manufactured holes reached 97%.
机译:为了提高孔的制造质量(φ3-φ8mm)并优化T300碳纤维增强塑料(CFRP)和7050-T7 Al合金堆叠中的空穴钻井过程,提出了多目标参数优化的预测模型基于反向传播(BP)神经网络算法。进料速率,主轴速度,钻孔直径和垫板的四个参数作为输入层参数,以研究四种堆叠类型的孔的制造质量:CFRP / Al,Al / CFRP,Al / CFRP / Al和CFRP / al / cfrp。分层和撕裂缺陷通常出现在钻井过程中;因此,选择CFRP中的一定程度的缺陷作为输出参数,以构建钻井质量的预测模型。通过170步校正8-14-1三层拓扑的优化空穴制造过程的神经网络模型,误差减少到0.00016882,回归配件为0.99978,训练样本的拟合误差是10-2〜10-5。提供的缺陷孔数量的预测模型基本上与实验数据类似的结果。这表明基于BP神经网络的预测模型具有良好的预测能力。基于参数的预测,进行了验证测试,并且CFRP中的缺陷孔的数量减少,而孔的制造质量显着提高;制造孔的合格率达到97%。

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