基于多目标遗传算法的微放电钻孔优化

D. Unune, A. Aherwar
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摘要

由于其优异的机械性能,包括高强度,高硬度,耐腐蚀等,Inconel 718高温合金在各个行业中得到了广泛的应用。传统加工工艺的可加工性较差,特别是在微领域,使其成为“难加工”材料之一。微电火花加工(µ-EDM)是加工任何导电材料的合适工艺,尽管选择加工参数以获得更高的加工速率和精度是一项艰巨的任务。本研究试图优化Inconel 718微放电钻孔(µ-EDD)的参数。以材料去除率、电极磨损比、过切量和锥度角为性能指标,以间隙电压、电容、电极转速和进给速度为工艺参数。利用基于遗传算法的多目标优化得到了工艺参数的最优设置,并进行了实验验证。
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A Multiobjective Genetic-Algorithm-Based Optimization of Micro-Electrical Discharge Drilling
Inconel 718 superalloy finds wide range of applications in various industries due to its superior mechanical properties including high strength, high hardness, resistance to corrosion, etc. Though poor machinability especially in micro-domain by conventional machining processes makes it one of the “difficult-to-cut” material. The micro-electrical discharge machining (µ-EDM) is appropriate process for machining any conductive material, although selection of machining parameters for higher machining rate and accuracy is difficult task. The present study attempts to optimize parameters in micro-electrical discharge drilling (µ-EDD) of Inconel 718. The material removal rate, electrode wear ratio, overcut, and taper angle have been selected as performance measures while gap voltage, capacitance, electrode rotational speed, and feed rate have been selected as process parameters. The optimum setting of process parameters has been obtained using Genetic Algorithm based multi-objective optimization and verified experimentally.
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