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Application of Response Surface Analysis and Genetic Algorithm for the Optimization of Single Point Incremental Forming Process

机译:响应面分析和遗传算法在单点增量成形工艺优化中的应用

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Single point incremental forming (SPIF) is a modern method of forming sheet metal, where parts can be formed without the use of dedicated dies. The ability of SPIF to form a part is based on various forming parameters. Previous work was not accomplished with the help of design of experiments (DOE), thus reducing the number of parameters varied at any time. This paper presents a Box-Behnken experimental design, which develops the numerical plan, formalizes the forming parameters critical in SPIF and analyse data. The most critical factors affecting SPIF were found to be wall inclination angle, incremental step size, material thickness and tool size. The main effects of these parameters on the quality of the formed parts were studied in detail. Actually this work aims to "optimize the thinning rate and the maximum force by considering the tool diameter and the vertical pitch as unknown parameters for two different wall angles and thicknesses". To this purpose, an optimization procedure based on the use of response surface methodology (RSM) and genetic algorithms (GA) have been proposed for application to find the optimum solutions. Finally, it demonstrated that the developed methods can solve high non-linear problems successfully. Associated plots are shown to be very efficient for a quick localization of the region of the search space containing the global optimum values of the SPIF parameters.
机译:单点增量成形(SPIF)是一种现代的钣金成形方法,无需使用专用模具就可以成形零件。 SPIF形成零件的能力基于各种成形参数。先前的工作没有借助实验设计(DOE)来完成,因此减少了随时更改的参数数量。本文提出了Box-Behnken实验设计,该实验设计了数值方案,确定了SPIF中关键的成形参数并分析了数据。发现影响SPIF的最关键因素是壁的倾斜角度,增量步长,材料厚度和工具尺寸。详细研究了这些参数对成型零件质量的主要影响。实际上,这项工作旨在“通过将刀具直径和垂直螺距作为两种不同壁角和厚度的未知参数来优化减薄率和最大作用力”。为此,已经提出了基于响应面方法(RSM)和遗传算法(GA)的优化程序,以用于寻找最佳解决方案。最后,证明了所开发的方法可以成功解决高非线性问题。对于快速定位包含SPIF参数的全局最佳值的搜索空间区域,关联图显示出非常有效的效果。

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