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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Modeling and optimization of tool wear in MQL-assisted milling of Inconel 718 superalloy using evolutionary techniques
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Modeling and optimization of tool wear in MQL-assisted milling of Inconel 718 superalloy using evolutionary techniques

机译:使用进化技术的MQL辅助研磨工具磨损刀具磨损的建模与优化

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摘要

The Inconel 718 alloy, a difficult-to-cut superalloy with an extensive demand on aircraft and nuclear industries, being a low thermally conductive material exhibits a poor machinability. Consequently, the cutting tool is severely affected, and the tool cost is increased. In this context, an intelligent solution is presented in this paper-investigation of minimum quantity lubrication (MQL) and the selection of best machining conditions using evolutionary optimization techniques. A series of milling experiments on Inconel 718 alloy was conducted under dry, conventional flood, and MQL cooling modes. Afterward, the particle swarm optimization (PSO) and bacteria foraging optimization (BFO) were employed to optimize the cutting speed, feed rate, and depth-of-cut to minimize the flank wear (VBmax) parameter of a cutting tool. Though both the PSO and BFO models performed well, the validated results showed the superiority of PSO. Furthermore, it was found that the MQL performed better than the dry and flood cooling condition with respect to the reduction of the tool flank wear.
机译:Inconel 718合金是一种难以切割的超合金,具有广泛的飞机和核工业需求,是一种低导热材料,具有较差的可加工性。因此,切削刀具受到严重影响,刀具成本增加。在这种情况下,在本文研究最小量润滑(MQL)的研究中,并使用进化优化技术选择最佳加工条件的智能解决方案。在干燥,常规洪水和MQL冷却模式下进行了一系列关于Inconel 718合金的研磨实验。之后,采用粒子群优化(PSO)和细菌觅食优化(BFO)来优化切割速度,进料速率和切割深度,以最小化切削工具的侧面磨损(VBMAX)参数。虽然PSO和BFO模型都良好,但验证的结果显示了PSO的优越性。此外,发现MQL比刀片侧面磨损的减小更好地表现优于干燥和洪水冷却条件。

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