Semi empirical modeling of cutting temperature and surface roughness in turning of engineering materials with TiAlN coated carbide tool

Nilesh Patil, A. Saraf, Atul Kulkarni
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Abstract

Introduction. In manufacturing, obtaining a specified surface roughness of the machined components is of great importance to fulfill functional requirements. However, this is significantly affected by the heat generated during processing, potentially causing variations in dimensional accuracy. The surface roughness significantly affects the fatigue performance of the component, while the cutting tool's lifespan is dictated by the generation of cutting temperatures. The purpose of the study is to create semi-empirical models for predicting surface roughness and temperature of different work materials. Improved cutting performance is achieved by precisely determining the cutting temperature in the zone being machined. However, calculating the cutting temperature for each specific case is fraught with difficulties in terms of labor resources and financial investments. This paper presents a comprehensive empirical formula designed to predict both theoretical temperature and surface roughness. The methodology. The surface roughness and temperature values were evaluated for EN 8, Al 380, SS 316 and SAE 8620 materials using TiAlN coated carbide tool. The TiAlN coating was formed using Physical Vapor Deposition (PVD) Technique. The response surface methodology was used to prepare predictive models. Cutting speed (140 to 340 m/min), feed (0.08 to 0.24 mm/rev) and depth of cut (0.6 to 1.0 mm) was used as input parameters for measuring the performance of all material in terms of surface roughness and cutting temperature. The tool-work thermocouple principle was used to measure the temperature at the chip-tool interface. A Novel Calibration Setup was developed to establish a connection between the electromotive force (EMF) generated during machining and the cutting temperature. Results and Discussion. It is observed that the power required for machining was largely transformed into heat. The highest cutting temperature is recorded when machining of SS 316 followed by SAE 8620, EN 8. However, low temperature is reported during machining of Al 380 and it is mainly governed by the thermal conductivity of the material. The lowest surface roughness is observed in SAE 8620, EN 8 material followed by SS 316 and Al 380. Semi-empirical method and regression model equations show a good agreement with each other. Statistical analysis of nonlinear estimation reveals that the cutting speed, feed, and density of the material have a greater effect on surface roughness, whereas the depth of cut has a greater effect on temperature generation. The study will be very useful for predicting industrial productivity when machining of EN 8, Al 380, SS 316 and SAE 8620 materials with TiAlN-coated carbide tool.
使用 TiAlN 涂层硬质合金刀具车削工程材料时切削温度和表面粗糙度的半经验模型
简介在制造过程中,获得加工部件的特定表面粗糙度对于满足功能要求非常重要。然而,加工过程中产生的热量对表面粗糙度的影响很大,可能导致尺寸精度的变化。表面粗糙度会严重影响部件的疲劳性能,而切削刀具的寿命则取决于切削温度的产生。这项研究的目的是建立半经验模型,用于预测不同工件材料的表面粗糙度和温度。通过精确确定加工区域的切削温度,可以提高切削性能。然而,计算每种具体情况的切削温度在人力资源和资金投入方面都充满困难。本文提出了一个全面的经验公式,旨在预测理论温度和表面粗糙度。方法。使用 TiAlN 涂层硬质合金刀具对 EN 8、Al 380、SS 316 和 SAE 8620 材料的表面粗糙度和温度值进行了评估。TiAlN 涂层采用物理气相沉积 (PVD) 技术形成。采用响应面方法建立预测模型。切削速度(140 至 340 米/分钟)、进给量(0.08 至 0.24 毫米/转)和切削深度(0.6 至 1.0 毫米)作为输入参数,用于测量所有材料在表面粗糙度和切削温度方面的性能。刀具工作热电偶原理用于测量芯片-刀具界面的温度。开发了一种新颖的校准设置,以建立加工过程中产生的电动势 (EMF) 与切削温度之间的联系。结果与讨论。据观察,加工所需的功率大部分转化为热量。加工 SS 316 时的切削温度最高,其次是 SAE 8620 和 EN 8。然而,加工 Al 380 时的温度较低,这主要是由材料的导热性决定的。SAE 8620, EN 8 材料的表面粗糙度最低,其次是 SS 316 和 Al 380。半经验法和回归模型方程显示出很好的一致性。非线性估计的统计分析表明,切削速度、进给量和材料密度对表面粗糙度的影响较大,而切削深度对温度产生的影响较大。这项研究对于预测使用涂有 TiAlN 的硬质合金刀具加工 EN 8、Al 380、SS 316 和 SAE 8620 材料时的工业生产率非常有用。
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