Modified teaching learning based optimization for maximization of MRR in wire-cut EDM of Ti6Al4V alloy for sustainable production

D. Devarasiddappa, M. Chandrasekaran, M. Ravikumar, M. Thirugnanasambandam
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引用次数: 3

Abstract

Wire-cut electrical discharge machining (WEDM) has emerged as prominent advanced machining process to machine electrically conductive difficult-to-machine materials to any intricate shape and size. Amongst Ti-alloys, Ti6Al4V is extensively used in diverse engineering applications and is popularly researched. In this work, maximization of material removal rate (MRR) is addressed as economic aspect of sustainable production during WEDM of Ti6Al4V alloy employing modified teaching-learning based optimization (M-TLBO) algorithm. A novel method for fitness curve fitting is illustrated to obtain global optima for maximization of MRR. Taguchi L16 OA is employed to perform WEDM experiments. It is observed that MRR at optimal cutting conditions improved by 27.51% as compared to its initial maximum value. The fitness curve constructed in the optimal search domain resulted in smooth U-shape curve. ANOVA result showed that current (56.58%) and pulse-off-time (23.57%) are highly dominant process parameters influencing MRR followed by pulse on time (11.66%) and wire speed (7.20%). Machined surface morphology is studied using SEM images. The proposed M-TLBO algorithm is found highly accurate and consistent during several runs conducted and converged faster taking less than ten iterations. Also, proposed novel approach for fitness curve fitting can be effectively applied in any optimization problem.Wire-cut electrical discharge machining (WEDM) has emerged as prominent advanced machining process to machine electrically conductive difficult-to-machine materials to any intricate shape and size. Amongst Ti-alloys, Ti6Al4V is extensively used in diverse engineering applications and is popularly researched. In this work, maximization of material removal rate (MRR) is addressed as economic aspect of sustainable production during WEDM of Ti6Al4V alloy employing modified teaching-learning based optimization (M-TLBO) algorithm. A novel method for fitness curve fitting is illustrated to obtain global optima for maximization of MRR. Taguchi L16 OA is employed to perform WEDM experiments. It is observed that MRR at optimal cutting conditions improved by 27.51% as compared to its initial maximum value. The fitness curve constructed in the optimal search domain resulted in smooth U-shape curve. ANOVA result showed that current (56.58%) and pulse-off-time (23.57%) are highly dominant process parameters influencing...
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改进了基于教学的优化方法,使Ti6Al4V合金线切割电火花加工MRR最大化,实现可持续生产
电火花线切割加工(WEDM)已成为一种突出的先进加工工艺,可将导电难加工材料加工成任何复杂的形状和尺寸。在钛合金中,Ti6Al4V广泛应用于各种工程应用,并受到广泛的研究。在这项工作中,采用改进的基于教学的优化(M-TLBO)算法,将材料去除率(MRR)最大化作为Ti6Al4V合金电火花线切割过程中可持续生产的经济方面。提出了一种适合度曲线拟合的新方法,以求得最大MRR的全局最优值。采用田口L16 OA进行电火花切割实验。结果表明,最优切削条件下的MRR比初始最大值提高了27.51%。在最优搜索域构造的适应度曲线得到光滑的u型曲线。方差分析结果显示,电流(56.58%)和脉冲截止时间(23.57%)是影响MRR的最主要工艺参数,其次是脉冲截止时间(11.66%)和线速度(7.20%)。利用扫描电镜图像对加工表面形貌进行了研究。经过多次运行,发现M-TLBO算法具有较高的准确性和一致性,并且在不到10次迭代的情况下收敛速度更快。提出的适应度曲线拟合方法可以有效地应用于任何优化问题。电火花线切割加工(WEDM)已成为一种突出的先进加工工艺,可将导电难加工材料加工成任何复杂的形状和尺寸。在钛合金中,Ti6Al4V广泛应用于各种工程应用,并受到广泛的研究。在这项工作中,采用改进的基于教学的优化(M-TLBO)算法,将材料去除率(MRR)最大化作为Ti6Al4V合金电火花线切割过程中可持续生产的经济方面。提出了一种适合度曲线拟合的新方法,以求得最大MRR的全局最优值。采用田口L16 OA进行电火花切割实验。结果表明,最优切削条件下的MRR比初始最大值提高了27.51%。在最优搜索域构造的适应度曲线得到光滑的u型曲线。方差分析结果显示,电流(56.58%)和脉冲关闭时间(23.57%)是影响…
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