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Comparative Regression and Neural Network Modeling of Roughness and Kerf Width in CO2 Laser Cutting of Aluminium

机译:二氧化硅激光切割中粗糙度和Kerf宽度的比较回归和神经网络建模

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Laser cutting is the most promising thermal-based unconventional manufacturing process which can cut complex shapes on different materials. Surface roughness and kerf width are the important characteristics that determine the product quality and rely on the rational selection of the input parameters. The present work focuses on comparing surface roughness and the kerf width predicted using regression and artificial neural network model intended for cutting aluminium by CO2 laser. The independent parameters like laser power, assist gas pressure and cutting speed are varied up to three levels and the proposed Box-Behnken design constitutes 17 experiment runs for data acquisition and further modeling. The coefficient of correlation and the absolute mean error percentage are used for the study and comparison of regression and artificial network models. The artificial neural network has a lower mean absolute percentage error (MAPE) than the regression models. In addition, the R-value of the artificial neural network is greater than those of the regression models. The regression modeling methodology has been shown to be inadequate in predicting desired parameters while more reliable results have been obtained with the use of artificial neural network.
机译:激光切割是最有前途的热基非传统制造过程,可以在不同材料上切割复杂的形状。表面粗糙度和Kerf宽度是确定产品质量的重要特征,并依赖于输入参数的合理选择。本工作侧重于使用CO2激光切割铝的回归和人工神经网络模型来比较比较表面粗糙度和预测的Kerf宽度。独立参数,如激光功率,辅助气体压力和切割速度,最多可改变三个级别,所提出的Bod-Behnken设计构成了17个实验,用于数据采集和进一步的建模。相关系数和绝对均值误差百分比用于回归和人工网络模型的研究和比较。人工神经网络具有比回归模型的较低平均绝对百分比误差(MAPE)。另外,人工神经网络的R值大于回归模型的R值。在预测期望参数中,回归建模方法已经不足,而使用人工神经网络已经获得了更可靠的结果。

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