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Optimization of Processing Parameters in ECM of Die Tool Steel Using Nanofluid by Multiobjective Genetic Algorithm

机译:多目标遗传算法优化纳米流体对模具钢ECM工艺参数的优化

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摘要

Formation of spikes prevents achievement of the better material removal rate (MRR) and surface finish while using plain NaNO3 aqueous electrolyte in electrochemical machining (ECM) of die tool steel. Hence this research work attempts to minimize the formation of spikes in the selected workpiece of high carbon high chromium die tool steel using copper nanoparticles suspended in NaNO3 aqueous electrolyte, that is, nanofluid. The selected influencing parameters are applied voltage and electrolyte discharge rate with three levels and tool feed rate with four levels. Thirty-six experiments were designed using Design Expert 7.0 software and optimization was done using multiobjective genetic algorithm (MOGA). This tool identified the best possible combination for achieving the better MRR and surface roughness. The results reveal that voltage of 18 V, tool feed rate of 0.54 mm/min, and nanofluid discharge rate of 12 lit/min would be the optimum values in ECM of HCHCr die tool steel. For checking the optimality obtained from the MOGA in MATLAB software, the maximum MRR of 375.78277 mm3/min and respective surface roughness Ra of 2.339779 μm were predicted at applied voltage of 17.688986 V, tool feed rate of 0.5399705 mm/min, and nanofluid discharge rate of 11.998816 lit/min. Confirmatory tests showed that the actual performance at the optimum conditions was 361.214 mm3/min and 2.41 μm; the deviation from the predicted performance is less than 4% which proves the composite desirability of the developed models.
机译:当在模具钢的电化学加工(ECM)中使用普通的NaNO3水溶液时,尖峰的形成会阻止获得更好的材料去除率(MRR)和表面光洁度。因此,这项研究工作试图使用悬浮在NaNO3水性电解质(即纳米流体)中的铜纳米粒子,使高碳高铬模具钢的选定工件中的尖峰形成最小化。选定的影响参数为三个级别的施加电压和电解质放电速率,以及四个级别的工具进给速率。使用Design Expert 7.0软件设计了36个实验,并使用多目标遗传算法(MOGA)进行了优化。该工具确定了实现最佳MRR和表面粗糙度的最佳组合。结果表明,在HCHCr模具钢的ECM中,最佳电压为18 V,工具进给速度为0.54 mm / min,纳米流体排出速度为12llit / min。为了检查在MATLAB软件中从MOGA获得的最优性,在施加电压17.688986 V,刀具进给率0.5399705的情况下,预测最大MRR为375.78277 mm 3 / min和相应的表面粗糙度Ra为2.339779μm毫米/分钟,纳米流体排放速率为11.998816升/分钟。验证性测试表明,最佳条件下的实际性能为361.214 mm 3 / min和2.41μm。与预测性能的偏差小于4%,这证明了所开发模型的综合合意性。

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