碳织物和还原氧化石墨烯增强(CF/rGO)聚合物纳米复合材料加工中的改进决策优化方法

IF 1 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
S. Kesarwani, R. Verma, S. Jayswal
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引用次数: 0

摘要

随着客户需求的变化,制造业正在迅速发展,高效的质量控制工具被广泛用于优化产品/过程性能。本文重点介绍了改进的质量控制模块,以优化聚合物纳米复合材料的铣削性能。碳织物和还原氧化石墨烯增强(CF/rGO)聚合物复合材料在不同的工艺限制下进行加工。实验依据田口正交阵设计。采用基于组合距离评估(CODAS)优化方法的多准则决策(MCDM)工具对铣削性能进行优化。在该聚合物的加工过程中,检测了表面粗糙度Ra和切削力Fc的期望值。CODAS优化模块有效地将各种相互矛盾的参数结果合并为一个单一的客观评价值(Hi),这是传统的田口法无法实现的。具体而言,最佳加工条件为:rGO wt. -1,转速- 2000[公式:见文]rpm,进给- 80[公式:见文]mm/min, DoC-1.5[公式:见文]mm。总的来说,研究结果证明了推荐的MCDM工具的实用性,它优于通常的传统田口方法。CODAS的最优评价得分为1.904,证实了当前MCDM方法的可行性较好。本研究有助于提高有效的质量控制工具,可广泛用于优化制造业的产品/过程性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Modified Decision-Making Optimization Approach During Machining of Carbon Fabric and Reduced Graphene Oxide Reinforced (CF/rGO) Polymer Nanocomposites
Manufacturing industries are rapidly growing with varying customer needs, and efficient quality control tools are widely used to optimize product/process performances. This paper highlights the modified quality control module to optimize the milling performances of polymer nanocomposites. The carbon fabric and reduced graphene oxide reinforced (CF/rGO) polymer composites are machined at varying process constraints. The experimentation was designed according to Taguchi’s orthogonal array. The Milling performances were optimized using a multi-criterion decision-making (MCDM) tool based on a combination distance-based assessment (CODAS) optimization method. The desired value of surface roughness (Ra) and cutting force (Fc) is examined during the machining of the developed polymer. CODAS optimization module efficiently combined the various contradictory parametric outcomes into a single objective assessment value (Hi), which could not be possible by utilizing the usual conventional Taguchi method. Specifically, the optimal machining conditions were found to be rGO wt.%—1, speed—2000[Formula: see text]rpm, feed—80[Formula: see text]mm/min, DoC—1.5[Formula: see text]mm. Overall, the findings demonstrate the practicality of the recommended MCDM tool, which outperformed the usual conventional Taguchi method. The optimal assessment score of CODAS was noted as 1.904, which confirms the better viability of the current MCDM approach. This study contributes to the advancement of efficient quality control tools that can be widely used to optimize product/process performances in manufacturing industries.
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来源期刊
Journal of Multiscale Modelling
Journal of Multiscale Modelling MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
CiteScore
2.70
自引率
0.00%
发文量
9
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