Applying images processing methods for automation measurement of tool-chip contact length in orthogonal cutting

Camille Favier
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引用次数: 0

Abstract

Abstract. The simulation of machining process is an essential tool in the digitalization of the entire production chain. Currently, these simulations are not sufficiently precise to avoid the use of experimental tests in order to optimize machining operations and guarantee the quality of the machined parts. Some parameters, such as tool-chip contact length, are still underestimated, although they are critical for controlling heat transfer into the tool and implicitly its wear. In order to validate a numerical cutting simulation model, the tool-chip contact length experimentally measured should be used as a comparative quantity, in the same way as the cutting forces and the morphology of the chips is currently used. The objective of this paper is to propose an automation of tool-chip contact length measurements using image processing algorithms. The proposed algorithm was able to identify and measure the tool-chip contact length on more that 75% of images. The algorithm accuracy is evaluated by comparing computed and manually measured tool-chip contact length, for different cutting conditions. It was found that it overestimates the contact length, especially in the case where the image quality is lower.
应用图像处理方法自动化测量正交切削中的刀片接触长度
摘要加工过程模拟是整个生产链数字化的重要工具。目前,这些模拟还不够精确,无法避免使用实验测试来优化加工操作和保证加工零件的质量。一些参数,如刀具-芯片接触长度,仍然被低估了,尽管它们对于控制刀具的热传导和隐含的磨损至关重要。为了验证数值切削仿真模型,应将实验测量的刀片接触长度作为一个比较量,就像目前使用的切削力和切屑形态一样。本文旨在提出一种利用图像处理算法自动测量刀片接触长度的方法。所提出的算法能够在 75% 以上的图像上识别和测量刀具-切屑接触长度。在不同的切削条件下,通过比较计算得出的刀片接触长度和人工测量的刀片接触长度,对算法的准确性进行了评估。结果发现,该算法高估了接触长度,尤其是在图像质量较低的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
0.30
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