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Particle swarm optimization technique for determining optimal machining parameters of different work piece materials in turning operation

机译:确定车削过程中不同工件材料最佳加工参数的粒子群优化技术

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摘要

Empirical models for machining time and surface roughness are described for exploring optimized machining parameters in turning operation. CNC turning machine was employed to conduct experiments on brass, aluminum, copper, and mild steel. Particle swarm optimization (PSO) has been used to find the optimal machining parameters for minimizing machining time subjected to desired surface roughness. Physical constraints for both experiment and theoretical approach are cutting speed, feed, depth of cut, and surface roughness. It is observed that the machining time and surface roughness based on PSO are nearly same as that of the values obtained based on confirmation experiments; hence, it is found that PSO is capable of selecting appropriate machining parameters for turning operation.
机译:描述了加工时间和表面粗糙度的经验模型,以探索车削操作中的最佳加工参数。使用CNC车床对黄铜,铝,铜和低碳钢进行实验。粒子群优化(PSO)已用于找到最佳的加工参数,以最大程度地缩短所需表面粗糙度下的加工时间。实验和理论方法的物理限制条件都是切削速度,进给,切削深度和表面粗糙度。观察到,基于PSO的加工时间和表面粗糙度与基于确认实验获得的值几乎相同;因此,发现PSO能够为车削操作选择合适的加工参数。

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