Optimization and Mathematical Modelling of Surface Roughness Criteria and Material Removal Rate when Milling C45 Steel using RSM and Desirability Approach

Q4 Engineering
Fnides Mohamed
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引用次数: 0

Abstract

This work consists of studying the workability of C45 steel in face milling by using coated carbides (GC4040). The objective is to investigate the evolution of surface roughness (Ra, Ry, and Rz) and Material Removal Rate (MRR) according to cutting speed, feed rate, and depth of cut. A full-factorial design (43)was adopted in order to analyse the obtained experimental results via bothAnalysis of Variance (ANOVA) and Response Surface Methodology (RSM)design. The levels of cutting speed were as follows: Vc1=57 m/min; Vc2=111m/min; Vc3=222 m/min and Vc4=440 m/min. The ranges of feed rate werefz1=0.024 mm/tooth; fz2=0.048 mm/tooth; fz3=0.096 mm/tooth and fz4=0.192mm/tooth. As for the depth of cut levels, they included ap1=0.2 mm; ap2=0.4mm; ap3=0.6 mm, and ap4=0.8 mm. To determine mathematical models tomake predictions, a statistical analysis of the results by using RSM was appliedto obtain the main effects and interactions plot of the answer. Furthermore, amulti-objective optimization procedure for minimizing Ra and maximizing themetal removed rate using the desirability approach was also implemented.Therefore, the developed models can be effectively used to predict the surfaceroughness criteria and the material removal rate in machining C45 steel. Theresults indicated that feed rate is a significant factor affecting surfaceroughness (Ra: 52.37%, Ry: 80.97%, and Rz: 54.96%), followed by cuttingspeed (Ra: 37.88%, Ry: 12.90%, and Rz: 24.43%). Meanwhile, cutting speedand feed rate are the most significant parameters on the MRR with a contribution of 29.5% followed by the depth of cut with 11.62%.
用RSM和可取性法铣削C45钢表面粗糙度标准和材料去除率的优化和数学建模
本文研究了涂层碳化物(GC4040)对C45钢面铣削加工的可加工性。目的是研究表面粗糙度(Ra, Ry和Rz)和材料去除率(MRR)根据切削速度,进给量和切削深度的演变。采用全因子设计(43),通过方差分析(ANOVA)和响应面法(RSM)设计对获得的实验结果进行分析。切割速度等级为:Vc1=57 m/min;趋势= 111米/分钟;Vc3=222 m/min, Vc4=440 m/min。进给速度范围为:1=0.024 mm/齿;fz2 = 0.048毫米/牙;Fz3 =0.096 mm/齿,fz4=0.192mm/齿。切割水平的深度包括ap1=0.2 mm;ap2 = 0.4毫米;Ap3 =0.6 mm, ap4=0.8 mm。为了确定进行预测的数学模型,应用RSM对结果进行统计分析,得到答案的主效应和交互作用图。在此基础上,提出了利用可取性法最小化Ra和最大化金属去除率的多目标优化方法。因此,所建立的模型可以有效地预测C45钢加工过程中的表面粗糙度指标和材料去除率。结果表明:对表面粗糙度影响最大的是进给量(Ra: 52.37%, Ry: 80.97%, Rz: 54.96%),其次是切削速度(Ra: 37.88%, Ry: 12.90%, Rz: 24.43%);切削速度和进给速度对MRR的贡献最大,为29.5%,其次是切削深度,贡献11.62%。
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
Journal of Mechanical Engineering
Journal of Mechanical Engineering Engineering-Mechanical Engineering
CiteScore
1.00
自引率
0.00%
发文量
0
审稿时长
16 weeks
期刊介绍: Journal of Mechanical Engineering (formerly known as Journal of Faculty of Mechanical Engineering) or JMechE, is an international journal which provides a forum for researchers and academicians worldwide to publish the research findings and the educational methods they are engaged in. This Journal acts as a link for the mechanical engineering community for rapid dissemination of their academic pursuits. The journal is published twice a year, in June and December, which discusses the progress of Mechanical Engineering advancement.
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