Surface Roughness Prediction in Turning of Monel K 500 using DWT Technique

Ganesh V Dilli, R. Bommi
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引用次数: 1

Abstract

Research on specimen surface roughness is crucial because of its impact on machined components' functionality. In the meanwhile, a vision system is a cutting-edge method that is becoming more popular for measuring pictures of the specimen to determine the roughness of the machined surface. Scanning electron microscope (SEM) images of the machined surface are captured by a vision system for this study. During the final turning process, two-dimensional pictures of the machined surface of the Monel K 500 alloy are used to estimate the profile of the surface of specimens. Surface roughness of simulated specimens was investigated by image analysis under different simulated machining settings. This study employs a method for identifying surface texture that combines the acquisition of 2D surface pictures with a wavelet transform-based strategy. The Two-Dimensional Wavelet Transform may be utilized in the process of assessing surfaces due to its ability to deconstruct an image of a machined surface into a multi-resolution representation of that surface's multiple attributes. Prediction errors of less than 1.674% were obtained by analysing the histogram frequency difference of a lit area of interest (ROI) in images of rotated surfaces.
用DWT技术预测蒙乃尔k500车削过程中的表面粗糙度
试样表面粗糙度的研究是至关重要的,因为它影响加工部件的功能。与此同时,视觉系统是一种越来越流行的前沿方法,用于测量样品的图片,以确定加工表面的粗糙度。在本研究中,视觉系统捕获了加工表面的扫描电子显微镜图像。在最后的车削过程中,利用蒙奈尔k500合金加工表面的二维图像来估计试样表面的轮廓。通过图像分析研究了不同模拟加工条件下模拟试样的表面粗糙度。本研究采用了一种将二维表面图像采集与小波变换相结合的表面纹理识别方法。二维小波变换可以用于评估表面的过程,因为它能够将加工表面的图像解构为该表面的多个属性的多分辨率表示。通过分析旋转表面图像中感兴趣区域(ROI)的直方图频率差,获得了小于1.674%的预测误差。
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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