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Cutting Conditions Modeling and Optimization in Hard Turning Using RSM, ANN and Desirability Function

机译:使用RSM,ANN和可期望功能切割硬盘造型和优化

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摘要

Mechanical manufacturing companies are required to produce parts with high quality, greater accuracy and high productivity to be competitive. For this purpose, the present work develops predictive models for arithmetic surface finish (Ra), flank wear (VB) and tangential force (Fz). The optimization was based on the desirability function (DF). The machining tests were carried out by hard turning the X210Cr12 hardened steel (56 HRC) using a coated ceramic tool (CC6050), according to the Taguchi L~(27)experimental plan. ANOVA was employed to determine the influence of cutting parameters (cutting speed—Vc, feed rate— f and machining time— t ) on the output parameters (VB, Ra and Fz). Moreover, the RSM and the ANN methods were used to model the technological parameters. The DF approach was used to determine the optimal machining conditions minimizing simultaneously (VB, Ra and Fz). The results show that VB is mainly influenced by Vc (Cont.%?=?39.96) followed by f (Cont.%?=?35.36). In addition, it was indicated that f and t have been found as dominant factors affecting Ra with contributions of 31.71 and 23.78%, respectively. However, t and f are the main factors affecting Fz with contributions of 75.74 and 22.66%, respectively. On the other hand, ANN and RSM models correlate very well with experimental data. However, ANN approach shows better accuracy and the capability of predicting cutting process parameters than RSM. The optimum machining setting for multi-objective optimization corresponds to Vc=?80?m/min, f? =?0.08?mm/rev and t? =?4?min.
机译:机械制造公司需要生产具有高质量,更高的准确性和高生产率的零件来产生竞争力。为此目的,本作适用于算术表面光洁度(RA),侧面磨损(VB)和切向力(FZ)的预测模型。优化基于期望函数(DF)。根据Taguchi L〜(27)的实验计划,通过使用涂覆的陶瓷工具(CC6050)来实现加工试验。采用ANOVA来确定切割参数(切割速度-VC,进料速率和加工时间T)对输出参数(VB,RA和FZ)的影响。此外,RSM和ANN方法用于建模技术参数。 DF方法用于确定同时最小化的最佳加工条件(VB,RA和FZ)。结果表明,VB主要受VC的影响(续百分比?= 39.96),然后是F(续)?=?35.36)。此外,结果表明,F和T已被发现为影响RA的主要因素,分别为31.71和23.78%。然而,T和F分别是影响FZ的主要因素分别为75.74和22.66%。另一方面,ANN和RSM模型与实验数据非常好。然而,ANN方法显示出更好的准确性和预测切割过程参数的能力而不是RSM。多目标优化的最佳加工设置对应于VC = 80?M / min,f? =?0.08?mm / rev和t? =?4?分钟。

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