Prediction of Surface Roughness from Cutting Tool Vibrations in Hard Turning of AISI D2 Steel of Different Hardness with Conventional and Wiper Geometry CBN Inserts

Sarnobat Ss, Raval Hk
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引用次数: 1

Abstract

The quality of machined surface is of vital significance due to its bearing of the in-service functionality of the component. In-service functionality of the machined parts like, tribological performance, fatigue life of the component etc.; are greatly dependent on the surface profile characteristic and the surface roughness generated after machining. However, the quality of surface is reliant on complexities of the numerous process parameters. The mechanics of metal cutting necessarily results into the dynamic instability of the process consequentially ensuing into cutting tool vibrations. Previous research indicates an association between the cutting tool vibrations and surface roughness. In this study the cutting tool vibrations in tangential and axial direction have been integrated with the input parameters; cutting speed, feed rate, depth of cut, work material hardness and tool edge geometry to develop prediction models for surface roughness from the experimentally obtained data by using Regression Analysis and artificial Neural Network methodologies. The results of the regression models and neural networks model are compared. A good agreement between the experimental and predicted values for both the models is seen, however neural networks approach outclasses regression analysis by a reasonable margin. Further it is also noted that the quality of surface is markedly influenced by the tool edge geometry and feed rate.
基于刀具振动的不同硬度AISI D2钢硬车削表面粗糙度预测
由于加工表面的质量关系到零件的使用性能,因此对零件的加工质量有着至关重要的意义。被加工部件的在役功能,如摩擦学性能、部件的疲劳寿命等;在很大程度上取决于加工后的表面轮廓特性和表面粗糙度。然而,表面质量取决于众多工艺参数的复杂性。金属切削的力学性质必然导致切削过程的动态不稳定性,从而导致刀具振动。先前的研究表明切削刀具振动与表面粗糙度之间存在关联。在本研究中,刀具在切向和轴向的振动与输入参数相结合;利用回归分析和人工神经网络方法,从实验获得的数据中建立表面粗糙度的预测模型,分析切削速度、进给速度、切削深度、工件硬度和刀具边缘几何形状。比较了回归模型和神经网络模型的结果。两种模型的实验值和预测值之间的一致性很好,但是神经网络以合理的幅度接近回归分析。此外,还注意到刀具边缘几何形状和进给速度对表面质量有显著影响。
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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