用Grasshopper优化算法优化AISI 316奥氏体不锈钢表面粗糙度参数

Omkar Kulkarni, S. Jawade, G. Kakandikar
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引用次数: 2

摘要

本文介绍了AISI316奥氏体不锈钢表面粗糙度的工艺参数优化。在实验中,采用进给速度(fd)、速度(vc)和切削深度(DoC)等工艺参数研究对工件表面粗糙度(Ra)的影响。采用实验设计(DOE)在一台数控车床上进行了实验。车削加工后的表面粗糙度在干燥、潮湿和低温三种条件下进行测试。在数控车床上对所有三种条件下的样品进行步进车削,并设计一套实验。采用响应面法,建立了三种工况的数学模型。自然启发算法是获得最优值的最佳方法。对于本文讨论的问题,采用自然启发技术来获得最佳参数值,以在所有设置条件下获得最小的表面粗糙度。Grasshopper优化算法(GOA)是在实际应用中最有效的方法。在本研究中,GOA用于在干燥,潮湿和低温条件下获得表面粗糙度(Ra)的最佳值。最后对结果进行比较,发现GOA得到的表面粗糙度值最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter optimization of AISI 316 austenitic stainless steel for surface roughness by Grasshopper optimization algorithm
This article describes the optimization of processing parameters for the surface roughness of AISI316 austenitic stainless steel. While experimenting, parameters in the process like feed rate (fd), speed (vc), and depth of cut (DoC) were used to study the outcome on the surface roughness (Ra) of the workpiece. The experiment was carried out using the design of experiments (DOE) on a computer numerical control (CNC) lathe. The surface roughness is tested for three conditions i.e. Dry, Wet, and cryogenic conditions after the turning process. Samples are step turned on CNC Lathe for all three conditions with a set of experiments designed. The response surface methodology is implemented, and mathematical models are built for all three conditions. The nature-inspired algorithm is the best way to get the optimal value. For the discussed problem in the paper, nature-inspired techniques are used for obtaining the optimum parameter values to get minimum surface roughness for all set conditions. The Grasshopper optimization algorithm (GOA) is the technique that is the most effective method for real-life applications. In this research, GOA is used to get optimum values for the surface roughness (Ra) at Dry, Wet and cryogenic conditions. Finally, results are compared, and it's observed that the values obtained from GOA are minimum in surface roughness value.
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