首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Prediction of surface roughness in CNC end milling by machine vision system using artificial neural network based on 2D Fourier transform
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Prediction of surface roughness in CNC end milling by machine vision system using artificial neural network based on 2D Fourier transform

机译:基于2D傅里叶变换的人工神经网络机器视觉系统预测数控立铣中的表面粗糙度。

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This paper presents a system for automated, non-contact, and flexible prediction of surface roughness of end-milled parts through a machine vision system which is integrated with an artificial neural network (ANN). The images of milled surface grabbed by the machine vision system could be extracted using the algorithm developed in this work, in the spatial frequency domain using a two-dimensional Fourier transform to get the features of image texture (major peak frequency F_1, principal component magnitude squared value F_2, and the average gray level G_a). Since F1 is the distance between the major peak and the origin, it is a robust measure to overcome the effect of lighting of the environment. The periodically occurring features such as feed marks and tool marks present in the gray-level image can be easily observed from the principal component magnitude squared value F_2. The experimental machining variables speed S, feedrate F, depth of cut D, and the response extracted image variables F_1, F_2, and G_a could be used as input data, and the response surface roughness R_a measured by Surfcorder SE-1100 (traditional stylus method) could be used as output data of an ANN ability to construct the relationships between input and output variables. The ANN was trained using the back-propagation algorithm developed in this work due to its superior strength in pattern recognition and reasonable speed. Using the trained ANN, the experimental result had shown that the surface roughness of milled parts predicted by machine vision system over a wide range of machining conditions could be got with a reasonable accuracy compared with those measured by traditional stylus method. Compared with the stylus method, the constructed machine vision system is a useful method for prediction of the surface roughness faster, with a lower price, and lower environment noise in manufacturing process. Experimental results have shown that the proposed machine vision system can be implemented for automated prediction of surface roughness with accuracy of 97.53%. The results are encouraging that machine vision system can be extended to many real-time industrial prediction applications.
机译:本文提出了一种通过与人工神经网络(ANN)集成的机器视觉系统,自动,非接触式,灵活地预测端铣零件表面粗糙度的系统。机器视觉系统抓取的铣削表面图像可以使用本文开发的算法提取,在空间频域中使用二维傅立叶变换获得图像纹理特征(主要峰值频率F_1,主成分幅值)平方值F_2和平均灰度级G_a)。由于F1是主峰与原点之间的距离,因此它是克服环境光照影响的有效措施。从主成分幅度平方值F_2可以容易地观察到在灰度图像中存在的周期性出现的特征,例如进给标记和工具标记。实验加工变量速度S,进给率F,切削深度D和响应提取的图像变量F_1,F_2和G_a可用作输入数据,并且通过Surfcorder SE-1100(传统测针法)测量响应表面粗糙度R_a。 )可以用作ANN能力的输出数据,以构造输入和输出变量之间的关系。由于其在模式识别方面的优势和合理的速度,使用该工作中开发的反向传播算法对ANN进行了训练。使用训练有素的人工神经网络,实验结果表明,与传统的测针方法相比,机器视觉系统预测的铣削零件的表面粗糙度在较宽的加工条件下均能获得合理的精度。与触控笔方法相比,构造的机器视觉系统是一种有用的方法,可以更快地预测表面粗糙度,价格更低,并且在制造过程中具有较低的环境噪声。实验结果表明,所提出的机器视觉系统可以实现97.53%的表面粗糙度自动预测。结果令人鼓舞,机器视觉系统可以扩展到许多实时工业预测应用程序。

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