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The Optimization of the Electro-Discharge Machining Process Using Response Surface Methodology and Genetic Algorithms

机译:使用响应表面方法和遗传算法优化电放电加工过程

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Electric Discharge Machining (EDM) is a thermo-electric non-traditional machining process in which material removal takes place through the process of controlled spark generation between a pair of electrodes which are submerged in a dielectric medium. Due to the difficulty of EDM, it is very complicated to determine optimal cutting parameters for improving cutting performance. So, optimization of operating parameters is an important action in machining, particularly for unconventional electrical type machining procedures like EDM. A proper selection of machining parameters for the EDM process is heavily on the operator's technologies and experience because of their numerous and diverse range. Machining parameters provided by the machine tool builder cannot meet the operator's requirements. Since for an arbitrary desired machining time for a particular job, they do not provide the optimal conditions. To solve this task, multiple regression model and modified Genetic Algorithm model are developed as efficient approaches to determine the optimal machining parameters in electric discharge machine. In this paper, working current, working voltage, oil pressure, spark gap Pulse On Time and Pulse Off Time on Material Removal Rate (MRR) and Surface Finish (Ra) has been studied Empirical models for MRR and Ra have been developed by conducting a designed experiment based on the Grey Relational Analysis. Genetic Algorithm (GA) based multi-objective optimization for maximization of MRR and minimization of Ra has been done by using the developed empirical models. Optimization results have been used for identifying the machining conditions. For verification of the empirical models and the optimization results, focused experiments have been conducted in the rough and finish machining regions.
机译:电气放电加工(EDM)是热电非传统加工过程,其中通过在浸没在介电介质中的一对电极之间的受控火花产生过程中进行材料去除。由于EDM的难度,确定用于提高切削性能的最佳切削参数非常复杂。因此,操作参数的优化是加工中的重要动作,特别是对于EDM等非传统电气式加工程序。正确选择EDM过程的加工参数严重符合操作员的技术和经验,因为它们的众多和多样化。机床生产机提供的加工参数不能满足操作员的要求。由于对于特定工作的任意期望的加工时间,因此它们不提供最佳条件。为了解决此任务,多元回归模型和修改的遗传算法模型被开发为有效的方法来确定放电机中的最佳加工参数。在本文中,工作电流,工作电压,油压,火花隙脉冲在时间和材料去除率(MRR)和表面粗糙度(Ra)为间歇时间已经研究了MRR和镭实证模型已经通过进行开发基于灰色关系分析的设计实验。使用开发的经验模型完成了基于MRR的最大化和RA最小化的基于遗传算法(GA)的多目标优化。优化结果已被用于识别加工条件。为了验证经验模型和优化结果,在粗糙和精加工区域中进行了聚焦的实验。

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