Optimization of the nosing process of metal pipe using genetic algorithm

M. Esmailian
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Abstract

percentage of nosing is expressed based on the effective parameters, and finally, the optimal percentage of nosing for the regression equation obtained by the genetic algorithm is obtained. percentage was determined by the experimental design method. In this research, response level method and central composite design were used. Variance analysis method is used to check the relationship between output variables and input parameters. The results show that as the wall slope increases, the percentage of nosing increases and as the thickness and friction coefficient increase, the percentage of nosing decreases. It can also be seen that, to increase the percentage of nosing, the slope of the wall should be high and the friction coefficient should be low. Also, by using the genetic algorithm and optimizing the regression equation obtained from the analysis of variance, the maximum percentage of nosing has been obtained at 60.81.
基于遗传算法的金属管封头工艺优化
根据有效参数表示近嗅率,最后得到遗传算法得到的回归方程的最优近嗅率。百分比由试验设计方法确定。本研究采用响应水平法和中心组合设计。方差分析法用于检验输出变量与输入参数之间的关系。结果表明:随着壁面坡度的增大,堵流率增大;随着壁厚和摩擦系数的增大,堵流率减小;由此也可以看出,要想增加鼻翼的百分率,壁面的坡度要大,摩擦系数要小。利用遗传算法对方差分析得到的回归方程进行优化,得到了最大的嗅探率为60.81。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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