首页> 外文期刊>International journal of decision support system technology >Application of ANFIS for the Selection of Optimal Wire-EDM Parameters While Machining Ti-6Al-4V Alloy and Multi-Parametric Optimization Using GRA Method
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Application of ANFIS for the Selection of Optimal Wire-EDM Parameters While Machining Ti-6Al-4V Alloy and Multi-Parametric Optimization Using GRA Method

机译:ANFIS在加工Ti-6Al-4V合金时选择最佳电火花线切割参数及GRA法多参数优化中的应用

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摘要

The applications of artificial intelligence (AI) are becoming more popular and relevant research have been conducted in every field of engineering and science by using these AI techniques. Therefore, this research aims to examine the influence of wire electric-discharge machining (WEDM) parameters on performance parameters to improve the productivity with a higher surface finish of titanium alloy (Ti-6Al-4V) by using the artificial intelligent technique. In this experimental analysis, the Adaptive Network Based fuzzy Inference System (ANFIS) model has been highly-developed and the multi-parametric optimization has been done to find the optimal solution for the machining of the titanium superalloy. The peak current (Ip), taper angle, pulse on time (Ton), pulse of time (Toff) and the dielectric fluid flow rate were selected as operation constraints to conduct experimental trials. The surface roughness (SR) and MRR were considered as output responses. The influence on machining performance has been analyzed by an ANFIS model and the developed model was validated with the full factorial regression models. The developed models showed the minimum mean percentage error and the optimized parameters by the GRA method showed the considerable improvement in the process.
机译:人工智能(AI)的应用正变得越来越流行,并且已经通过使用这些AI技术在工程和科学的各个领域进行了相关研究。因此,本研究旨在通过人工智能技术研究电火花线切割加工(WEDM)参数对性能参数的影响,以提高钛合金(Ti-6Al-4V)具有较高表面光洁度的生产率。在此实验分析中,高度开发了基于自适应网络的模糊推理系统(ANFIS)模型,并进行了多参数优化,以找到加工钛合金的最佳解决方案。选择峰值电流(Ip),锥角,脉冲接通时间(Ton),时间脉冲(Toff)和介电液流速作为操作约束条件进行实验。表面粗糙度(SR)和MRR被视为输出响应。通过ANFIS模型分析了对加工性能的影响,并使用全因子回归模型验证了开发的模型。所开发的模型显示出最小的平均百分比误差,而GRA方法的优化参数显示了该过程的显着改进。

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