基于响应面法和遗传算法的al6061合金电火花加工性能预测

Hind Hadi Abdulridha, Marwa Qasim Ibraheem, Ahmed Ghazi Abdulameer
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引用次数: 0

摘要

电火花放电(EDM)方法是一种新型的热电制造技术,通过浸没在介电介质中的两个电极之间的受控火花侵蚀过程来去除材料。由于电火花加工的困难,确定最佳切削参数以提高切削性能是非常困难的。因此,优化操作参数是一个关键的加工步骤,特别是对于像电火花加工这样的非传统加工工艺。由于给定功能所需的不可预测的加工时间,为电火花加工过程充分选择加工参数并不能提供理想的条件。多元回归模型和遗传算法是确定电火花加工最优加工变量的有效方法。利用脉冲开启时间(Ton)、脉冲关闭时间(Toff)和电流强度(Ip)等工艺变量研究了材料去除率(MRR)和刀具磨损(Tw)。利用所建立的经验模型,运用遗传算法(GA)实现MRR最大化和Tw最小化。利用优化结果建立加工条件,验证经验模型,得到优化结果。结果表明:脉冲开启(176.261 μs),脉冲关闭(39.42 μs),电流强度(23.62安培),最大MRR为(0.78391 g/min),刀具磨损降低到(0.0451 g/min)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Prediction in EDM Process for Al 6061 Alloy Using Response Surface Methodology and Genetic Algorithm
The Electric Discharge (EDM) method is a novel thermoelectric manufacturing technique in which materials are removed by a controlled spark erosion process between two electrodes immersed in a dielectric medium. Because of the difficulties of EDM, determining the optimum cutting parameters to improve cutting performance is extremely tough. As a result, optimizing operating parameters is a critical processing step, particularly for non-traditional machining process like EDM. Adequate selection of processing parameters for the EDM process does not provide ideal conditions, due to the unpredictable processing time required for a given function. Models of Multiple Regression and Genetic Algorithm are considered as effective methods for determining the optimal processing variables of Electrical Discharge Machining. The material removal rate (MRR) and tool wear (Tw) were investigated using the process variables of pulse on time (Ton), pulse off time (Toff), and current intensity (Ip). The established empirical models were used to perform Genetic Algorithm (GA) to maximize (MRR) and minimize (Tw). The optimization results were utilized to establish machining conditions, validate empirical models, and obtain optimization outcomes. The optimal result that appears in this work was the pulse on (176.261 μs), pulse off (39.42 μs), and current intensity (23.62 Amp.) to maximize the MRR to (0.78391 g/min) and reduce tool wear to (0.0451 g/min).
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