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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Concurrent multi-objective tolerance allocation of mechanical assemblies considering alternative manufacturing process selection
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Concurrent multi-objective tolerance allocation of mechanical assemblies considering alternative manufacturing process selection

机译:考虑替代制造过程选择的机械组件的同时多目标公差分配

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摘要

Concurrent design of tolerances by considering both the manufacturing cost and quality loss of each component by alternate processes of the assemblies may ensure the manufacturability, reduce the manufacturing costs, decrease the number of fraction nonconforming (or defective rate), and shorten the production lead time. Most of the current tolerance design research does not consider the quality loss. In this paper, a novel multi-objective optimization method is proposed to enhance the operations of the non-traditional algorithms (Elitist Non-dominated Sorting Genetic Algorithm (NSGA-II) and Multi-Objective Particle Swarm Optimization (MOPSO)) and systematically distribute the tolerances among various the components of mechanical assemblies. The problem has a multi-criterion character in which three objective functions, one constraint, and three variables are considered. The average fitness factor method and normalized weighted objective function method are used to select the best optimal solution from Pareto-optimal fronts. Two multi-objective performance measures namely solution spread measure and ratio of non-dominated individuals are used to evaluate the strength of Pareto-optimal fronts. Two more multi-objective performance measures namely optimizer overhead and algorithm effort are used to find the computational effort of NSGA-II and MOPSO algorithms. The Pareto-optimal fronts and results obtained from various techniques are compared and analysed. Both NSGA-II and MOPSO algorithms are best for this problem.
机译:通过同时考虑组件的制造成本和每个组件的质量损失来同时进行公差设计,可以确保可制造性,降低制造成本,减少不合格品分数(或不良率)并缩短生产提前期。当前大多数公差设计研究都没有考虑质量损失。本文提出了一种新颖的多目标优化方法,以增强非传统算法(精英非支配排序遗传算法(NSGA-II)和多目标粒子群优化(MOPSO))的操作并系统地分布机械装配的各个部件之间的公差。该问题具有多准则特征,其中考虑了三个目标函数,一个约束和三个变量。使用平均适应度因子法和归一化加权目标函数法从帕累托最优前沿中选择最佳最优解。两种多目标绩效度量,即解散度量和非支配个体的比率,用于评估帕累托最优前沿的强度。两种另外的多目标性能度量,即优化器开销和算法工作量,用于找到NSGA-II和MOPSO算法的计算工作量。比较并分析了帕累托最优前沿和从各种技术获得的结果。 NSGA-II和MOPSO算法都是解决此问题的最佳方法。

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