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Multi-objective parametric optimization of powder mixed electro-discharge machining using response surface methodology and non-dominated sorting genetic algorithm

机译:基于响应面法和非支配排序遗传算法的粉末混合放电加工多目标参数优化

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摘要

Powder mixed electro-discharge machining (EDM) is being widely used in modern metal working industry for producing complex cavities in dies and moulds which are otherwise difficult to create by conventional machining route. It has been experimentally demonstrated that the presence of suspended particle in dielectric fluid significantly increases the surface finish and machining efficiency of EDM process. Concentration of powder (silicon) in the dielectric fluid, pulse on time, duty cycle, and peak current are taken as independent variables on which the machining performance was analysed in terms of material removal rate (MRR) and surface roughness (SR). Experiments have been conducted on an EZNC fuzzy logic Die Sinking EDM machine manufactured by Electronica Machine Tools Ltd. India. A copper electrode having diameter of 25 mm is used to cut EN 31 steel for one hour in each trial. Response surface methodology (RSM) is adopted to study the effect of independent variables on responses and develop predictive models. It is desired to obtain optimal parameter setting that aims at decreasing surface roughness along with larger material removal rate. Since the responses are conflicting in nature, it is difficult to obtain a single combination of cutting parameters satisfying both the objectives in any one solution. Therefore, it is essential to explore the optimization landscape to generate the set of dominant solutions. Non-sorted genetic algorithm (NSGA) has been adopted to optimize the responses such that a set of mutually dominant solutions are found over a wide range of machining parameters.
机译:粉末混合放电加工(EDM)已被广泛用于现代金属加工行业中,以在模具中制造复杂的型腔,而这些复杂的型腔很难通过传统的加工路径来制造。实验证明,介电液中悬浮颗粒的存在显着提高了EDM工艺的表面光洁度和加工效率。介电液中粉末(硅)的浓度,脉冲时间,占空比和峰值电流被视为独立变量,并根据材料去除率(MRR)和表面粗糙度(SR)分析了加工性能。实验是在印度Electronica Machine Tools Ltd.生产的EZNC模糊逻辑冲模EDM机上进行的。在每个试验中,使用直径为25毫米的铜电极将EN 31钢切割一小时。采用响应面方法(RSM)来研究自变量对响应的影响并建立预测模型。期望获得旨在减小表面粗糙度以及更大的材料去除率的最佳参数设置。由于响应本质上是冲突的,因此很难获得满足任何一个解决方案中两个目标的切削参数的单个组合。因此,探索优化环境以生成主导解决方案集至关重要。已采用非分类遗传算法(NSGA)来优化响应,以便在广泛的加工参数上找到一组相互主导的解。

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