Prediction and parametric effect of electrical discharge layering of AZ31B magnesium alloy using response surface methodology-assisted artificial neural network

IF 1.9 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
U ELAIYARASAN, N ANANTHI, S SATHIYAMURTHY
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Abstract

Electro-discharge layering (EDL) is a coating technique, used for fabricating wear and corrosion resistance layer on the parts used in automobile, biomedical and structural applications. Eventhough, selecting the suitable parameters and levels in EDL process is difficult to attain better coating characteristics. We have studied the prediction and effect of process parameters on EDL of magnesium alloy using response surface methodology (RSM)-assisted feed forward back propagation artificial neural network (ANN). In this work, WC–Cu composite coating was deposited on AZ31B magnesium alloy using EDL viz. compaction pressure (CP), discharge current (DC) and pulse on time (PT). Influence of process parameters on electrode deposition rate (EDR) and coating roughness (CR) during EDL of magnesium alloys is studied. It was revealed that the correlation between the experimental values of RSM and predicted values of ANN was 0.991, which is closely to the working limit. Therefore, it was agreed that the established ANN model is suitable for predicting the EDR and CR. Furthermore, effect of parameters on CR and EDR are studied with support of mean effect plots generated by RSM tool. It was studied that the CR and EDR will increase, as increase in DC and PT at processing with low compaction pressured electrode. Conversely, it decreases with increase in CP of the electrode. Mechanism of coating, such as craters and globules were identified in the surface coated with higher DC and PT, resulting in higher surface roughness values.

Abstract Image

利用响应面方法学辅助人工神经网络预测 AZ31B 镁合金放电分层的参数效应
放电分层(EDL)是一种涂层技术,用于在汽车、生物医学和结构应用中的部件上制造耐磨和耐腐蚀层。尽管在 EDL 工艺中选择合适的参数和水平很难获得更好的涂层特性。我们利用响应面方法学(RSM)辅助前馈反向传播人工神经网络(ANN)研究了工艺参数对镁合金 EDL 的预测和影响。在这项工作中,使用 EDL(即压实压力(CP)、放电电流(DC)和脉冲开启时间(PT))在 AZ31B 镁合金上沉积了 WC-Cu 复合涂层。研究了镁合金 EDL 过程中工艺参数对电极沉积速率(EDR)和涂层粗糙度(CR)的影响。结果表明,RSM 的实验值与 ANN 的预测值之间的相关性为 0.991,接近工作极限。因此,一致认为所建立的 ANN 模型适用于预测 EDR 和 CR。此外,还利用 RSM 工具生成的平均效应图研究了参数对 CR 和 EDR 的影响。研究结果表明,在使用低压实压力电极进行加工时,随着直流电和 PT 的增加,CR 和 EDR 也会增加。相反,随着电极 CP 的增加,CR 和 EDR 会降低。在 DC 和 PT 值较高的涂层表面上发现了凹坑和球状等涂层机制,从而导致表面粗糙度值较高。
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来源期刊
Bulletin of Materials Science
Bulletin of Materials Science 工程技术-材料科学:综合
CiteScore
3.40
自引率
5.60%
发文量
209
审稿时长
11.5 months
期刊介绍: The Bulletin of Materials Science is a bi-monthly journal being published by the Indian Academy of Sciences in collaboration with the Materials Research Society of India and the Indian National Science Academy. The journal publishes original research articles, review articles and rapid communications in all areas of materials science. The journal also publishes from time to time important Conference Symposia/ Proceedings which are of interest to materials scientists. It has an International Advisory Editorial Board and an Editorial Committee. The Bulletin accords high importance to the quality of articles published and to keep at a minimum the processing time of papers submitted for publication.
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