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首页> 外文期刊>International journal of swarm intelligence research >Weighted Average-Based Multi-Objective Optimization of Tube Spinning Process using Non-Traditional Optimization Techniques
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Weighted Average-Based Multi-Objective Optimization of Tube Spinning Process using Non-Traditional Optimization Techniques

机译:基于非传统优化技术的加权平均多管纺丝工艺多目标优化

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摘要

Tube spinning is an effective process for producing long and thin walled tubes. It is important to note that the quality of parts produced in tube spinning process, namely internal surface roughness, external surface roughness, change in diameter and change in thickness depends on the right combination of input process parameters, such as mandrel rotational speed, feed rate of rollers, percentage of thickness reduction, initial thickness, solution treatment time and ageing treatment time. As the 2024 aluminum tube spinning process contains four objectives, it is very difficult to achieve a set of optimal combination of input process parameters that produce best quality product. This paper presents a weighted average-based multi-objective optimization of tube spinning process using non-traditional optimization techniques, namely genetic algorithm, particle swarm optimization and differential evolution. Multiple regression equations developed between the control factors and responses have been considered for optimization.
机译:管纺是生产长而薄壁管的有效方法。重要的是要注意,在管纺过程中生产的零件的质量,即内表面粗糙度,外表面粗糙度,直径变化和厚度变化取决于输入工艺参数的正确组合,例如心轴转速,进给速度辊数,减薄百分比,初始厚度,固溶处理时间和时效处理时间。由于2024铝管纺丝工艺包含四个目标,因此很难实现一组输入工艺参数的最佳组合,以生产出最优质的产品。本文提出了一种基于加权平均的多目标优化管纺工艺,采用非传统优化技术,即遗传算法,粒子群优化和差分进化。已考虑在控制因素和响应之间建立的多个回归方程式进行优化。

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