A Machine Learning Perspective to the Investigation of Surface Integrity of Al/SiC/Gr Composite on EDM

IF 3.3 Q2 ENGINEERING, MANUFACTURING
A. T. Abbas, Neeraj Sharma, Essam A. Al-Bahkali, Vishal S. Sharma, Irfan Farooq, A. Elkaseer
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引用次数: 1

Abstract

Conventional mechanical machining of composite is a challenging task, and thus, electric discharge machining (EDM) was used for the processing of the developed material. The processing of developed composite using different electrodes on EDM generates different surface characteristics. In the current work, the effect of tool material on the surface characteristics, along with other input parameters, is investigated as per the experimental design. The experimental design followed is an RSM-based Box–Behnken design, and the input parameters in the current research are tool material, current, voltage, pulse-off time, and pulse-on time. Three levels of each parameter are selected, and 46 experiments are conducted. The surface roughness (Ra) is investigated for each experimental setting. The machine learning approach is used for the prediction of surface integrity by different techniques, namely Xgboost, random forest, and decision tree. Out of all the techniques, the Xgboost technique shows maximum accuracy as compared to other techniques. The analysis of variance of the predicted solutions is investigated. The empirical model is developed using RSM and is further solved with the help of a teaching learning-based algorithm (TLBO). The SR value predicted after RSM and integrated approach of RSM-ML-TLBO are 2.51 and 2.47 µm corresponding to Ton: 45 µs; Toff: 73 µs; SV:8V; I: 10A; tool: brass and Ton: 47 µs; Toff: 76 µs; SV:8V; I: 10A; tool: brass, respectively. The surface integrity at the optimized setting reveals the presence of microcracks, globules, deposited lumps, and sub-surface formation due to different amounts of discharge energy.
基于机器学习的Al/SiC/Gr复合材料电火花表面完整性研究
复合材料的常规机械加工是一项具有挑战性的任务,因此,放电加工(EDM)被用于加工开发的材料。在EDM上使用不同的电极对所开发的复合材料进行加工会产生不同的表面特性。在目前的工作中,根据实验设计,研究了工具材料对表面特性的影响,以及其他输入参数。接下来的实验设计是基于RSM的Box-Behnken设计,当前研究中的输入参数是工具材料、电流、电压、脉冲关闭时间和脉冲开启时间。每个参数选取三个级别,进行了46个实验。对每个实验设置的表面粗糙度(Ra)进行了研究。机器学习方法用于通过不同的技术预测表面完整性,即Xgboost、随机森林和决策树。在所有技术中,与其他技术相比,Xgboost技术显示出最大的准确性。研究了预测解的方差分析。使用RSM开发了经验模型,并在基于教学的算法(TLBO)的帮助下进一步求解。RSM和RSM-ML-TLBO综合方法预测的SR值分别为2.51和2.47µm,对应于Ton:45µs;Toff:73µs;SV:8V;I: 10A;工具:黄铜和Ton:47µs;Toff:76µs;SV:8V;I: 10A;工具:黄铜。优化设置下的表面完整性表明,由于放电能量的不同,存在微裂纹、球状物、沉积块和亚表面形成。
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来源期刊
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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