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车间生产过程的能量足迹建模与加工参数协同优化
引用本文:田颖,邵文婷,王太勇.车间生产过程的能量足迹建模与加工参数协同优化[J].中国机械工程,2022,33(21):2547-2553.
作者姓名:田颖  邵文婷  王太勇
作者单位:天津大学机械工程学院,天津,300350
基金项目:国家自然科学基金(51975407)
摘    要:为降低零件加工过程的生产能耗,提出一种面向节能的车间生产过程多装备加工参数协同优化方法。以包含机床与机器人的定制化生产车间为研究对象,建立了考虑刀具退化动态过程的生产车间系统能量足迹模型。考虑刀具寿命、机器人运输平稳性的成本指标函数,建立了多装备系统的加工参数协同多目标优化模型。以加工时间为约束条件,使用蜂群算法获取了最优参数。实验表明,以节能目标为主的优化方案可降低机床加工能耗17.97%,降低机器人运输能耗18.13%。

关 键 词:车间生产过程  能量足迹  多目标优化  刀具寿命  

Energy Footprint Modeling and Parameter Optimization in Workshop Manufacturing Processes
TIAN Ying,SHAO Wenting,WANG Taiyong.Energy Footprint Modeling and Parameter Optimization in Workshop Manufacturing Processes[J].China Mechanical Engineering,2022,33(21):2547-2553.
Authors:TIAN Ying  SHAO Wenting  WANG Taiyong
Affiliation:School of Mechanical Engineering,Tianjin University,Tianjin,300350
Abstract: To reduce the energy consumption during the parts manufacturing processes, an energy-saving focused multi-equipment machining parameter collaborative optimization method was proposed. Taking the workshop manufacturing processes with machines and robots as target, the energy footprint models considering cutting tool degradation processes were setup for the workshop system. Considering the cost index function of tool life and stability of robotic transportation, a multi-objective collaborative optimization model of machining parameters with multi-equipment systems was established. Taking the processing time as constraint, the artificial bee colony algorithm was used to obtain the global optimal parameters. Experimental results show that the optimized parameters may reduce the energy consumption of CNC machines by 17.97%, and reduce the energy consumption of the robotic transportation by 18.13%. 
Keywords:workshop manufacturing process  energy footprint  multi-objective optimization  tool life  
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