Novel methods for optimizing CNC aluminum alloy machining parameters in polymer mold cavities

Q1 Engineering
Ibrahim I. Ikhries , Ali F. Al-Shawabkeh
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引用次数: 0

Abstract

The examination of the machining of 7075-T6 aluminum alloy polymer mold cavities using Taguchi optimization and analysis of variance is presented in this paper. This study identified the best CNC milling cutting parameters and used a mathematical model to quantify the surface roughness of the machined cavities. The findings showed that while using a flat endmill, the spindle speed multiplied by feed rate contributed 28.01% to surface roughness, and when using a ball endmill, the squared depth of cut contributed 41.27%. Using both flat and ball endmills, the depth of the cut contributed 98.53% to the material removal rate. A refined second-order linear regression model was employed to forecast the endmill-machined surface roughness. The Warp Surf Portable tester measured values that were outside the error range of approximately 0.257% and 2.8%, respectively, for the expected values. Surface roughness has a 99.97% correlation coefficient in the regression model, indicating a very significant link. Additionally, the study improved the cutting parameters for a ball endmill, which were 3005 Rpm, 726.7 mm/min, and 0.43 mm, and for a flat endmill, these were spindle speed (2500 Rpm), feed rate (650 mm/min), and axial cut depth (0.5 mm). The outcomes demonstrated how well the techniques enhanced mold cavity machining and cost estimation using Ra and MRR data. Consequently, these results can be applied to future academic studies and industrial applications.

优化聚合物模腔中数控铝合金加工参数的新方法
本文介绍了利用田口优化和方差分析对 7075-T6 铝合金聚合物模具型腔进行加工的研究。该研究确定了最佳数控铣削切削参数,并使用数学模型量化了加工型腔的表面粗糙度。研究结果表明,在使用扁平立铣刀时,主轴转速乘以进给率对表面粗糙度的贡献率为 28.01%,而在使用球头立铣刀时,切削深度的平方对表面粗糙度的贡献率为 41.27%。使用平头立铣刀和球头立铣刀时,切削深度对材料去除率的贡献率为 98.53%。采用精炼的二阶线性回归模型来预测立铣刀加工的表面粗糙度。Warp Surf 便携式测试仪测得的值分别超出了预期值约 0.257% 和 2.8% 的误差范围。在回归模型中,表面粗糙度的相关系数为 99.97%,表明两者之间存在非常显著的联系。此外,研究还改进了球头立铣刀的切削参数,即 3005 Rpm、726.7 mm/min 和 0.43 mm,以及平面立铣刀的切削参数,即主轴转速(2500 Rpm)、进给速度(650 mm/min)和轴向切削深度(0.5 mm)。结果表明,这些技术很好地提高了模具型腔加工的效率,并利用 Ra 和 MRR 数据进行了成本估算。因此,这些结果可应用于未来的学术研究和工业应用。
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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来源期刊
International Journal of Lightweight Materials and Manufacture
International Journal of Lightweight Materials and Manufacture Engineering-Industrial and Manufacturing Engineering
CiteScore
9.90
自引率
0.00%
发文量
52
审稿时长
48 days
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