Multi-Response Optimization of Abrasive Waterjet Cutting on r-GO-Reinforced Fibre Intermetallic Laminates through Moth–Flame Optimization Algorithm

IF 3 Q2 MATERIALS SCIENCE, COMPOSITES
Devaraj Rajamani, Mahalingam Siva Kumar, Esakki Balasubramanian
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Abstract

Laminated metal-composite structures, also known as fibre metal laminates (FMLs), have emerged as prominent engineering materials in various industries, particularly in the domains of aircraft and automobile manufacturing. These materials are sought after due to their enhanced impact and fatigue resistance capabilities. The machining of FMLs plays a crucial role in achieving near-net shapes for the purpose of joining and assembling components. Delamination is a prevalent issue encountered during the process of conventional machining, thus rendering FMLs are challenging materials to machine. This study aims to investigate the cutting process of novel fibre intermetallic laminates (FILs) using the abrasive water jet (AWJ) cutting technique. The FILs consists of carbon and aramid fibers that are adhesively bonded with a resin matrix filled with reduced graphene oxide (r-GO) nano fillers. Moreover, these laminates contain embedded Nitinol shape memory alloy sheets as the skin materials. Specifically, the study aims to investigate the impact of different factors, such as the addition of reduced graphene oxide (r-GO) in the laminates (ranging from 0 to 2 wt%), traverse speed (ranging from 400 to 600 mm/min), waterjet pressure (ranging from 200 to 300 MPa), and nozzle height (ranging from 2 to 4 mm), on the material removal rate (MRR), delamination factor (FD), and kerf deviation (KD). ANOVA was used in the statistical analysis to determine the most influential parameters and their effects on the selected responses. The optimal AWJC parameters are determined using a metaheuristic-based moth–flame optimization (MFO) algorithm in order to enhance cut quality. The efficacy of MFO is subsequently compared with similar well-established metaheuristics such as the genetic algorithm, particle swarm algorithm, dragonfly algorithm, and grey-wolf algorithm. MFO was found to outperform in terms of several performance indices, including rapid divergence, diversity, spacing, and hypervolume values, among the algorithms compared.
基于飞蛾-火焰优化算法的磨料水射流切割r- go增强纤维金属间层合板多响应优化
层压金属复合材料结构,也被称为金属纤维层压板(FMLs),已经成为许多行业,特别是飞机和汽车制造领域的重要工程材料。这些材料因其增强的抗冲击和抗疲劳能力而受到追捧。FMLs的加工对于实现零件连接和装配的近净形状起着至关重要的作用。分层是传统加工过程中遇到的一个普遍问题,因此绘制fml是一种具有挑战性的材料。研究了新型纤维金属间层压板(FILs)的磨料水射流切割工艺。FILs由碳和芳纶纤维组成,它们与填充还原氧化石墨烯(r-GO)纳米填料的树脂基体粘接。此外,这些层压板含有嵌入镍钛诺形状记忆合金片作为表皮材料。具体而言,该研究旨在研究不同因素对材料去除率(MRR)、分层因子(FD)和缝隙偏差(KD)的影响,如层压中还原性氧化石墨烯(r-GO)的添加量(0 ~ 2wt %)、穿越速度(400 ~ 600mm /min)、水射流压力(200 ~ 300mpa)和喷嘴高度(2 ~ 4mm)。方差分析用于统计分析,以确定最具影响力的参数及其对所选响应的影响。为了提高切割质量,采用基于元启发式的飞蛾火焰优化(MFO)算法确定了最优AWJC参数。随后,将MFO的有效性与类似的成熟的元启发式算法(如遗传算法、粒子群算法、蜻蜓算法和灰狼算法)进行比较。在比较的算法中,MFO在几个性能指标方面表现优异,包括快速发散、多样性、间隔和超容积值。
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
Journal of Composites Science
Journal of Composites Science MATERIALS SCIENCE, COMPOSITES-
CiteScore
5.00
自引率
9.10%
发文量
328
审稿时长
11 weeks
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