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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Prediction of surface roughness and dimensional deviation of workpiece in turning: a machine vision approach
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Prediction of surface roughness and dimensional deviation of workpiece in turning: a machine vision approach

机译:车削中工件表面粗糙度和尺寸偏差的预测:一种机器视觉方法

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摘要

In the past, roughness values measured directly on machined surfaces were used to develop mathematical models that are used in predicting surface roughness in turning. This approach is slow and tedious because of the large number of workpieces required to obtain the roughness data. In this study, 2-D images of cutting tools were used to generate simulated workpieces from which surface roughness and dimensional deviation data were determined. Compared to existing vision-based methods that use features extracted from a real workpiece to represent roughness parameters, in the proposed method, only simulated profiles of the workpiece are needed to obtain the roughness data. The average surface roughness R_a, as well as dimensional deviation data extracted from the simulated profiles for various feed rates, depths of cut, and cutting speeds were used as the output of response surface methodology (RSM) models. The predictions of the models were verified experimentally using data obtained from measurements made on the real workpieces using conventional methods, i.e., surface roughness tester and a micrometer, and good correlation between the two methods was observed.
机译:过去,直接在机加工表面上测量的粗糙度值用于开发数学模型,用于预测车削时的表面粗糙度。由于获取粗糙度数据需要大量工件,因此这种方法既缓慢又乏味。在这项研究中,使用切削工具的二维图像生成模拟工件,并从中确定表面粗糙度和尺寸偏差数据。与使用从真实工件中提取的特征来表示粗糙度参数的现有基于视觉的方法相比,在所提出的方法中,仅需要模拟工件的轮廓即可获得粗糙度数据。平均表面粗糙度R_a以及从模拟轮廓中提取的各种进给速度,切削深度和切削速度的尺寸偏差数据用作响应表面方法(RSM)模型的输出。该模型的预测是通过使用常规方法(即表面粗糙度测试仪和千分尺)对真实工件进行测量获得的数据进行实验验证的,并且观察到两种方法之间具有良好的相关性。

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