A comprehensive review of parametric optimization of electrical discharge machining processes using multi-criteria decision-making techniques

IF 2 Q2 ENGINEERING, MECHANICAL Frontiers in Mechanical Engineering Pub Date : 2024-05-09 DOI:10.3389/fmech.2024.1404116
Devendra G. Pendokhare, Kanak Kalita, Shankar Chakraborty, R. Čep
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Abstract

Optimization of electrical discharge machining (EDM) processes is a critical issue due to complex material removal mechanism, presence of multiple input parameters and responses (outputs) and interactions among them and varying interest of different stakeholders with respect to relative importance assigned to the considered responses. Multi-criteria decision making (MCDM) techniques have become potent tools in solving parametric optimization problems of the EDM processes. In this paper, more than 130 research articles from SCOPUS database published during 2013–22 are reviewed extracting information with respect to experimental design plans employed, materials machined, dielectrics used, process parameters and responses considered and MCDM tools applied along with their integration with other mathematical techniques. A detailed analysis of those reviewed articles reveals that the past researchers have mostly preferred Taguchi’s L9 orthogonal array as the experimental design plan; EDM oil as the dielectric fluid; medium and high carbon steels as the work materials; peak current and pulse-on time as the input parameters; material removal rate, tool wear rate and surface roughness as the responses; and grey relational analysis as the MCDM tool during conducting and optimizing EDM operations. This review paper would act as a data repository to the future researchers in understanding the stochastic behaviour of EDM processes and providing guidance in setting the tentative operating levels of varying input parameters along with achievable response values. The extracted dataset can be treated as an input to any of the machine learning algorithms for subsequent development of appropriate prediction models. This review also outlines potential future research avenues, emphasizing advancements in EDM technology and the integration of innovative multi-criteria decision-making tools.
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使用多标准决策技术对放电加工工艺参数优化的综合评述
电火花加工(EDM)工艺的优化是一个关键问题,因为它涉及复杂的材料去除机制、多个输入参数和响应(输出)以及它们之间的相互作用,而且不同利益相关者对所考虑响应的相对重要性的兴趣也各不相同。多标准决策(MCDM)技术已成为解决电火花加工工艺参数优化问题的有力工具。本文对 SCOPUS 数据库中 2013-22 年间发表的 130 多篇研究文章进行了综述,提取了与所采用的实验设计计划、加工材料、所用电介质、工艺参数和所考虑的响应以及所应用的 MCDM 工具及其与其他数学技术的整合有关的信息。对这些综述文章的详细分析显示,过去的研究人员大多采用田口 L9 正交阵列作为实验设计方案;电火花加工油作为电介质;中碳钢和高碳钢作为加工材料;峰值电流和脉冲导通时间作为输入参数;材料去除率、刀具磨损率和表面粗糙度作为响应;灰色关系分析作为进行和优化电火花加工操作的 MCDM 工具。这篇综述论文将成为未来研究人员了解放电加工工艺随机行为的资料库,并为设定不同输入参数的暂定操作水平以及可实现的响应值提供指导。提取的数据集可作为任何机器学习算法的输入,以便随后开发适当的预测模型。本综述还概述了潜在的未来研究途径,强调了放电加工技术的进步和创新多标准决策工具的集成。
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来源期刊
Frontiers in Mechanical Engineering
Frontiers in Mechanical Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
4.40
自引率
0.00%
发文量
115
审稿时长
14 weeks
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