Multi-performance optimization for AWJ drilling process in cutting of ceramic tile: BBD with EOBL-GOA algorithm

IF 1.7 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
A. Tamilarasan, A. Renugambal, K. Shunmugesh
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引用次数: 0

Abstract

Purpose The goal of this study is to determine the values of the process parameters that should be used during the machining of ceramic tile using the abrasive water jet (AWJ) process in order to achieve the lowest possible values for surface roughness and kerf taper angle. Design/methodology/approach In the present work, ceramic tile is processed by the AWJ process and experimental data were recorded using the RSM approach based Box–Behnken design matrix. The input process factors were water jet pressure, jet traverse speed, abrasive flow rate and standoff distance, to determine the surface roughness and kerf taper angle. ANOVA was used to check the adequacy of model and significance of process parameters. Further, the elite opposition-based learning grasshopper optimization (EOBL-GOA) algorithm was implemented to identify the simultaneous optimization of multiple responses of surface roughness and kerf taper angle in AWJ. Findings The suggested EOBL-GOA algorithm is suitable for AWJ of ceramic tile, as evidenced by the error rate of ±2 percent between experimental and predicted solutions. The surfaces were evaluated with an SEM to assess the quality of the surface generated with the optimal settings. As compared with initial setting of the SEM image, it was noticed that the bottom cut surface was nearly smooth, with less cracks, striations and pits in the improved optimal results of the SEM image. The results of the analysis can be used to control machining parameters and increase the accuracy of AWJed components. Originality/value The findings of this study present an innovative method for assessing the characteristics of the nontraditional machining processes that are most suited for use in industrial and commercial applications.
瓷砖切割AWJ钻孔工艺多性能优化:基于EOBL-GOA算法的BBD
本研究的目的是确定在使用磨料水射流(AWJ)工艺加工瓷砖时应使用的工艺参数值,以获得尽可能低的表面粗糙度和切口锥度角值。在本工作中,瓷砖采用AWJ工艺处理,实验数据采用基于Box-Behnken设计矩阵的RSM方法记录。输入的工艺因素为水射流压力、射流横移速度、磨料流量和距,以确定表面粗糙度和切口锥度角。采用方差分析检验模型的充分性和工艺参数的显著性。在此基础上,实现了基于精英对立的学习蚱蜢优化算法(EOBL-GOA),以识别AWJ表面粗糙度和切口锥度的多重响应同时优化。结果提出的EOBL-GOA算法适用于瓷砖AWJ,实验结果与预测结果的误差为±2%。用扫描电镜对表面进行评估,以评估在最佳设置下生成的表面的质量。与SEM图像初始设置相比,改进后的SEM图像优化结果显示,底部切割面接近光滑,裂纹、条纹和凹坑较少。分析结果可用于控制加工参数,提高awed零件的加工精度。独创性/价值本研究的发现提出了一种创新的方法来评估最适合于工业和商业应用的非传统加工过程的特征。
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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来源期刊
CiteScore
3.70
自引率
5.00%
发文量
60
期刊介绍: Multidiscipline Modeling in Materials and Structures is published by Emerald Group Publishing Limited from 2010
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