Straightness Prediction in CNC Turning Process for Carbon Steel and Aluminum Workpieces Applying Artificial Neural Networks

S. Tangjitsitcharoen, W. Laiwatthanapaisan
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Abstract

 Abstract —An intelligent machine and manufacturing system has a significant role in the near future, especially when the circumstance of manufacturing industries are seriously competitive. New technologies are continuously being developed to serve future manufacturing. CNC turning machine is widely utilized in various advanced manufacturing industries. Straightness is a critical parameter in CNC turning process, which affects the workpiece assembly directly. However, control of straightness of the workpieces during in-process turning is difficult to be measured. Moreover, CNC turning machine cannot be adjusted real-time without stopping the operation. Hence, the aim of this research is to develop the straightness prediction model in the CNC turning process under various cutting conditions for carbon steel and aluminum workpieces in order to improve in-process monitoring and control of straightness. The cutting forces ratio has been adopted to estimate straightness. The Daubechies wavelet transform is utilized to decompose the dynamic cutting forces to remove the noise signals for better prediction. The straightness is calculated by employing the two-layer feed forward neural network, which is trained with the Levenberg-Marquardt back-propagation algorithm. As a result, the in-process straightness could be predicted well with greater accuracy and reliability using the proposed straightness
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应用人工神经网络预测碳钢和铝工件数控车削过程中的直线度
摘要-智能机器和制造系统在不久的将来,特别是在制造业竞争激烈的情况下,具有重要的作用。新技术不断被开发以服务于未来的制造业。数控车床广泛应用于各种先进制造行业。直线度是数控车削加工的关键参数,它直接影响到工件的装配。然而,在车削过程中,工件的直线度控制是难以测量的。而且,不停止操作,数控车床无法实时调整。因此,本研究的目的是建立不同切削条件下碳钢和铝工件数控车削过程中的直线度预测模型,以提高对直线度的过程监测和控制。采用切削力比来估计直线度。利用Daubechies小波变换对动态切削力进行分解,去除噪声信号,提高预测精度。采用Levenberg-Marquardt反向传播算法训练的两层前馈神经网络计算直线度。结果表明,利用所提出的直线度可以较好地预测加工过程中的直线度,具有较高的精度和可靠性
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