表面粗糙度
振动
信号(编程语言)
过程(计算)
材料科学
表面光洁度
曲面(拓扑)
声学
机械工程
计算机科学
工程类
冶金
复合材料
物理
几何学
数学
操作系统
程序设计语言
作者
D. Marinkovic,Aco Antić,Miloš Knežev,Cvijetin Mladjenovic,Aleksandar Živković,University in Novi Sad, Faculty of Technical Sciences,C. MLADJENOVIC,University in Novi Sad, Faculty of Technical Sciences,A. ZIVKOVIC,University in Novi Sad, Faculty of Technical Sciences
出处
期刊:MM Science Journal
[MM Publishing, s.r.o.]
日期:2024-09-16
卷期号:2024 (4)
被引量:1
标识
DOI:10.17973/mmsj.2024_10_2024075
摘要
The performance of the final part of the turning process, a topic of practical importance, heavily depends on the cutting parameters. Surface quality, a crucial product attribute in manufacturing, often tops consumer demands during machining due to its significant influence on product functionality. This paper assesses the correlation between the detected vibration signal, statistical parameters (Crest, Kurtosis and I-kaz3D coefficient) and surface roughness and provides valuable insights for practical applications. When the tool experiences vibrations during material removal, these oscillations leave a ripple effect on the surface of the workpiece. We aim to determine the impact of cutting parameters on surface roughness while turning 42CrMo4 steel using a carbide tool insert. Cutting parameters, such as spindle speed, feed, and depth of cut, were used. Signal processing is carried out using different techniques to identify the effect of the cutting parameters on vibration signals. Finally, we delve into the interaction effects between the cutting parameters, vibration signals and surface roughness, offering a comprehensive understanding of real-world manufacturing scenarios. Higher I-kaz3D coefficients correspond to higher surface roughness values. The I-kaz3D coefficient decreases as the surface roughness measurements decrease, indicating that the I-kaz3D technique can accurately indicate an increase or decrease in surface roughness. On the other hand, the cutting force Fc was the component most strongly correlated with surface roughness (Ra), yielding the best results across all indices (adjusted R²adj = 95.1%, er=.8 ± 2.3%).
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