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Experimental investigations and empirical modeling for optimization of surface roughness and machining time parameters in micro end milling using Genetic Algorithm

机译:遗传算法微端研磨中表面粗糙度和加工时间参数优化实验研究及实验模型

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摘要

Surface finish is a predominant requirement of a micro part inorder to perform satisfactory function. It is dependent on process variables such as cutting conditions, tool and work material properties, etc. In this work, an effort has been taken to propose realistic machining conditions for process improvement in micro end milling for C360 Copper alloy material. Solid Tungsten Carbide flat end mill cutter of size 700 mu m and 800 mu m are chosen as the tool material. Response surface methodology was incorporated for Design of experiments. First, experimental investigation was carried out to examine the effect of process condition include spindle speed and feed rate on Arithmetic Average Surface Roughness (R-a) and machining time values and also uncertainty in measured values. Analysis of variance was performed to establish the significant effect of cutting conditions on response values. Empirical model has been developed by experimental results using regression techniques in order to frame the fitness function. Parameters optimization for fine surface finish with minimum machining time has been carried out using Genetic Algorithm (GA). Confirmation experiments were carried out to validate the correctness of GA result and micro channels are fabricated successfully.
机译:表面光洁度是微部件的主要需求,以执行令人满意的功能。它取决于工艺变量,如切割条件,工具和工作材料特性等。在这项工作中,已经采取了努力为C360铜合金材料进行微端研磨过程改进的逼真加工条件。选择固体碳化钨扁平端铣刀尺寸为700 mu m和800 mu m作为工具材料。响应地面方法被纳入实验设计。首先,进行实验研究以检查工艺条件的效果包括算术平均表面粗糙度(R-A)和加工时间值以及测量值的不确定性。进行差异分析,以确定切割条件对响应值的显着影响。通过使用回归技术的实验结果开发了经验模型,以便框架适合函数。使用遗传算法(GA)进行了具有最小加工时间的精细表面光洁度的参数优化。进行确认实验以验证GA结果的正确性,并成功制造了微通道。

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