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Wire EDM process optimization for machining AISI 1045 steel by use of Taguchi method, artificial neural network and analysis of variances

机译:通过使用Taguchi方法,人工神经网络和差异分析来加工AISI 1045钢的钢丝EDM工艺优化

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摘要

Wire electrical discharge machining (WEDM) process used in a wide spectrum of industrial applications. AISI 1045 is medium carbon steel, because of its excellent physical and chemical properties, it is used in many applications. However, the review of the state of the art literature reveals that literature is lacking research to optimize WEDM process for machining AISI 1045 steel. The objectives of this research are building ANN model to predict metal removal rate (MRR) and surface roughness (Ra) values for machining AISI 1045 steel, identifying the significance of the pulse on-time (T-ON), pulse off time (T-OFF) and servo feed (S-F) for the MRR and Ra, and selecting optimal machining parameters that give maximum MRR value and that give the minimum Ra value. Taguchi method (Design of Experiments), artificial neural network (ANN), and analysis of variances (ANOVA) used in this research as a methodology to fulfill research objectives. This research reveals that the architecture (3-5-1) of ANN models is the best architecture to predict the Ra and MRR with about 98.136% and 97.3% accuracy respectively. It can be realized that T-ON is the most significant cutting parameter affecting Ra by P % value 42.922% followed by T-OFF with a P % value of 24.860%. S-F was not a significant parameter for Ra because of F alpha F. For MRR, the most significant parameter is T-ON with a P % value of (71.733%), i.e. about three times the TOFFP % value (21.796%) and the S-F parameter has a small influence with P % value 3.02%. The analysis confirmed that the optimal cutting parameters for maximum MRR were: T-ON at the third level (25 mu s), T-OFF at the first level (20 mu s), and S-F at the third level (700 mm/min). On the other hand, the optimal cutting parameters for minimum Ra were: T-ON at the first level (10 mu s), T-OFF at the third level (40 mu s), and S-F at the first level (500 mm/min). Future work may focus on optimizing the WEDM process for machining other types of materials or other sets of parameters and performance measures.
机译:电线电气放电加工(WEDM)工艺用于广谱的工业应用。 AISI 1045是中型碳钢,由于其优异的物理和化学性质,它用于许多应用中。然而,对现有技术的文献审查表明,文献缺乏研究,以优化用于加工AISI 1045钢的WEDM过程。该研究的目标是构建ANN模型,以预测用于加工AISI 1045钢的金属去除率(MRR)和表面粗糙度(RA)值,识别脉冲随时(T-ON),脉冲关闭时间(T用于MRR和RA的-off)和伺服馈送(SF),并选择最佳加工参数,其提供最大MRR值,并提供最小RA值。 Taguchi方法(实验设计),人工神经网络(ANN)和本研究中使用的差异(ANOVA)的分析作为实现研究目标的方法。本研究表明,ANN模型的建筑(3-5-1)是预测RA和MRR分别预测RA和MRR的最佳架构,分别预测约98.136%和97.3%的精度。可以意识到T-ON是影响Ra的最重要的切割参数,P%值42.922%,然后T-OFF,P%值为24.860%。由于F alpha> F.对于MRR,SF对RA的显着参数,最重要的参数是T-ON,P%值(71.733%),即TOFFP%值的约三倍(21.796%)和SF参数具有小的影响,P%值为3.02%。分析证实,最大MRR的最佳切削参数是:T-ON在第三级(25μs),第一级(20μs)的T-OFF,第三级(700 mm / min) )。另一方面,最小RA的最佳切削参数是:T-ON在第一级(10μs),第三级(40μm)的T-OFF,并且第一级SF(500 mm / “未来的工作可能会专注于优化用于加工其他类型的材料或其他参数和性能措施的WEDM过程。

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