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Multi-objective Optimization of Sheet Metal Forming Die Using Genetic Algorithm Coupled with RSM and FEA

机译:遗传算法结合RSM和FEA的钣金成形模具多目标优化

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摘要

Present study describes the approach of applying response surface methodology (RSM) with a Pareto-based multi-objective genetic algorithm to assist engineers in optimization of sheet metal forming. In many studies, finite element analysis and optimization technique have been integrated to solve the optimal process parameters of sheet metal forming by transforming multiobjective problem into a single-objective problem. This paper aims to minimize objective functions of fracture and wrinkle simultaneously. Design variables are blank-holding force and draw-bead geometrical parameters (length and diameter). RSM has been used for design of experiment and finding relationship between variables and objective functions. Forming limit diagram has been used to define objective functions. Finite element analysis applied for simulating the process. Proposed approach has been investigated on a fuel tank drawing part and it has been observed that it is more effective and accurate than traditional finite element analysis method and the "trial and error" procedure.
机译:本研究描述了将响应曲面方法(RSM)与基于Pareto的多目标遗传算法相结合的方法,以帮助工程师优化钣金成形。在许多研究中,已经集成了有限元分析和优化技术来通过将多目标问题转化为单目标问题来解决钣金成形的最佳工艺参数。本文旨在最小化骨折和皱纹的目标功能。设计变量是毛坯夹持力和拉延筋几何参数(长度和直径)。 RSM已用于实验设计和寻找变量与目标函数之间的关系。成形极限图已用于定义目标功能。有限元分析用于模拟过程。已经研究了在油箱绘图部分上提出的方法,并且观察到该方法比传统的有限元分析方法和“试验和错误”程序更为有效和准确。

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