Intelligent modeling and multi-objective optimization of powder mixed electrical discharge diamond grinding of MMC

A. Agrawal, A. K. Dubey, P. Shrivastava
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引用次数: 2

Abstract

Metal matrix composites (MMCs) poses machining challenges by conventional methods due to its superior mechanical properties. Advanced machining processes (AMPs) are considered to be efficient to machine these MMCs. Electrical discharge machining (EDM) is one of such AMP which is most popular in the current industrial paradigm to machine these advanced materials. But, EDM also inherit the limitations such as low material removal rate (MRR) and high tool wear rate (TWR). Powder mixed EDM (PMEDM) process may help to enhance the productivity of EDM in terms of MRR and TWR. In the present research, the machining performances of copper-iron-graphite MMC using PMEDM have been investigated. Response surface models (RSMs) for MRR and TWR have been developed. Further, a hybrid approach of grey relational analysis, RSM and genetic algorithm has been used for multi-objective optimization of MRR and TWR.
MMC粉末混合电火花金刚石磨削智能建模与多目标优化
金属基复合材料具有优异的机械性能,对传统的加工方法提出了挑战。先进的加工工艺(amp)被认为是高效的加工这些mmc。电火花加工(EDM)是当前工业中最流行的一种加工先进材料的AMP。但是,电火花加工也存在材料去除率低和刀具磨损率高的局限性。粉末混合电火花加工(PMEDM)工艺在MRR和TWR方面有助于提高电火花加工的生产率。在本研究中,研究了PMEDM对铜铁石墨复合材料的加工性能。已经建立了MRR和TWR的响应面模型(rsm)。在此基础上,采用灰色关联分析、RSM和遗传算法的混合方法对MRR和TWR进行多目标优化。
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