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MULTI-OBJECTIVE OPTIMIZATION OF MICROTURNING PROCESS PARAMETERS USING PARTICLE SWARM TECHNIQUE

机译:微粒群算法的微车削工艺参数多目标优化

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In this work, for the first time an attempt has been made to carry out multi-objective optimization for tool based micro-turning process parameters using particle swarm optimization (PSO) technique. The input microturning process parameters considered are speed, feed and depth of cut. The output parameters considered are material removal rate (MRR), surface roughness (R_a) and tool wear (TW). The significant parameters are identified individually using ANOVA and main effect plots. However, it is observed that the main goal of the manufacturers is to produce high quality products in shorter interval of time. In order to meet the above objective, multi-objective optimization is carried out to achieve simultaneously higher MRR, low R_a and low TW using PSO. From the PSO analysis, it is observed that the combination of microturning parameters such as speed (18.25 m/min), feed (9.31 μm/rev) and depth of cut (14.61 μm) results in high MRR, low R_a and low tool wear. The PSO analysis indicates that it is a promising optimization algorithm due to its simplicity, low computational cost and good performance. A confirmation test was carried out to validate the predicted results.
机译:在这项工作中,首次尝试使用粒子群优化(PSO)技术对基于工具的微车削工艺参数进行多目标优化。输入的微车削工艺参数是速度,进给和切削深度。考虑的输出参数是材料去除率(MRR),表面粗糙度(R_a)和工具磨损(TW)。使用方差分析和主效应图分别识别重要参数。但是,观察到制造商的主要目标是在较短的时间间隔内生产高质量的产品。为了达到上述目的,使用PSO进行多目标优化以同时实现较高的MRR,较低的R_a和较低的TW。从PSO分析中观察到,微车削参数(例如速度(18.25 m / min),进给量(9.31μm/ rev)和切削深度(14.61μm))的组合导致较高的MRR,较低的R_a和较低的刀具磨损。 PSO分析表明,由于其简单性,低计算成本和良好的性能,它是一种很有前途的优化算法。进行确认测试以验证预测结果。

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