Optimal conventional and nonconventional machining processes via particle swarm optimization and flower pollination algorithm

被引:0
作者
Mohamed Arezki Mellal
Imene Tamazirt
Maissa Tiar
Edward J. Williams
机构
[1] M’Hamed Bougara University,LMSS, Faculty of Technology
[2] University of Michigan,Industrial and Manufacturing Systems Engineering Department, College of Engineering and Computer Science
[3] University of Michigan,Decision Sciences, College of Business
来源
Soft Computing | 2024年 / 28卷
关键词
Machining processes; Optimization; Particle swarm optimization; Flower pollination algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
Manufacturing requires various machining processes. Nowadays, machining implies advanced technologies in order to meet more exacting process performance criteria. This paper addresses the optimization of four conventional and nonconventional machining processes: drilling, grinding, water jet machining (WJM), and wire electrical discharge machining (EDM). The input process parameters are: cutting speed, feed rate, cutting environment, depth of cut, grit size, water jet pressure, diameter of water jet nozzle, traverse rate of the nozzle, stand-off-distance, ignition pulse current, pulse-off time, pulse duration, servo reference mean voltage, servo speed variation, wire speed, wire tension, and injection pressure. The multi-objective EDM optimization problem is converted to a single-objective problem using the weighted-sum method. Two nature-inspired algorithms of artificial intelligence (AI) are implemented for solving these problems, namely the particle swarm optimization (PSO) and the flower pollination algorithm (FPA). Penalty functions are introduced to handle the constraints and to enhance the algorithms for better results. The machining outputs, required number of function evaluations, CPU time, and standard deviations are the performance metrics. The results obtained are compared and show better performance than that already documented in the literature.
引用
收藏
页码:3847 / 3858
页数:11
相关论文
共 69 条
  • [1] Abdel-Basset M(2019)Flower pollination algorithm: a comprehensive review Artif Intell Rev 52 2533-2557
  • [2] Shawky LA(2021)A blank optimization by effective reverse engineering and metal forming analysis J Sci Ind Res (india) 80 143-148
  • [3] Asit Kumar C(2022)Chemical reaction optimization algorithm for machining parameter of abrasive water jet cutting Opsearch 59 350-363
  • [4] Sharad V(2006)Constraint handling in genetic algorithms using a gradient-based repair method Comput Oper Res 33 2263-2281
  • [5] Vishal KB(2022)Kinematic draping simulation optimization of a composite B-pillar geometry using particle swarm optimization Heliyon 8 1-20
  • [6] Sudhakar S(2022)Abrasive water jet machining for a high-quality green composite: the soft computing strategy for modeling and optimization J Brazilian Soc Mech Sci Eng 44 900-919
  • [7] Bhoi NK(2007)Optimization of process parameters of mechanical type advanced machining processes using genetic algorithms Int J Mach Tools Manuf 47 133-141
  • [8] Singh H(2005)Multi-objective optimization of wire-electro discharge machining process by Non-Dominated Sorting Genetic Algorithm J Mater Process Technol 170 647-656
  • [9] Pratap S(2023)Structural optics design of the zoom system based on particle swarm optimization Optik (stuttg) 272 927-942
  • [10] Jain PK(2015)Cuckoo optimization algorithm for unit production cost in multi-pass turning operations Int J Adv Manuf Technol 76 6-560