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Prediction of quality characteristics of laser drilled holes using artificial intelligence techniques

机译:使用人工智能技术预测激光钻孔的质量特性

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摘要

Micro-drilling using lasers finds widespread industrial applications in aerospace, automobile, and bio-medical sectors for obtaining holes of precise geometric quality with crack-free surfaces. In order to achieve holes of desired quality on hard-to-machine materials in an economical manner, computational intelligence approaches are being used for accurate prediction of performance measures in drilling process. In the present study, pulsed millisecond Nd:YAG laser is used for micro drilling of titanium alloy and stainless steel under identical machining conditions by varying the process parameters such as current, pulse width, pulse frequency, and gas pressure at different levels. Artificial intelligence techniques such as adaptive neuro-fuzzy inference system (ANFIS) and multi gene genetic programming (MGGP) are used to predict the performance measures, e.g. circularity at entry and exit, heat affected zone, spatter area and taper. Seventy percent of the experimental data constitutes the training set whereas remaining thirty percent data is used as testing set. The results indicate that root mean square error (RMSE) for testing data set lies in the range of 8.17-24.17% and 4.04-18.34% for ANFIS model MGGP model, respectively, when drilling is carried out on titanium alloy work piece. Similarly, RMSE for testing data set lies in the range of 13.08-20.45% and 6.35-10.74% for ANFIS and MGGP model, respectively, for stainless steel work piece. Comparative analysis of both ANFIS and MGGP models suggests that MGGP predicts the performance measures in a superior manner in laser drilling operation and can be potentially applied for accurate prediction of machining output.
机译:使用激光器微钻在航空航天,汽车和生物医疗领域中找到了广泛的工业应用,以利用无裂缝表面获得精确的几何质量的孔。为了以经济的方式在难以对机器材料上实现所需质量的孔,正在使用计算智能方法来准确预测钻井过程中的性能措施。在本研究中,通过改变不同水平的电流,脉冲宽度,脉冲频率和气体压力,在相同的加工条件下,脉冲毫秒Nd:YAG激光器用于在相同的加工条件下进行钛合金和不锈钢的微观钻孔。诸如自适应神经模糊推理系统(ANFIS)和多基因遗传编程(MGGP)的人工智能技术用于预测性能措施,例如,进入和出口,热影响区域,飞溅区和锥度的圆形度。 70%的实验数据构成训练集,而剩余的30%的数据被用作测试集。结果表明,在钛合金工件上进行钻井时,测试数据集的根均方误差(RMSE)分别位于8.17-24.17%和4.04-18.34%的范围内。类似地,用于测试数据集的RMSE分别位于不锈钢工件的ANFIS和MGGP模型的13.08-20.45%和6.35-10.74%。 ANFIS和MGGP模型的比较分析表明,MGGP以激光钻孔操作的优异方式预测性能测量,并且可以潜在地应用于精确预测加工输出。

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