A study on the μwire-EDM of Ni55.8Ti shape memory superalloy: an experimental investigation and a hybrid ANN/PSO approach for optimization

被引:0
作者
Samet Akar
Mirsadegh Seyedzavvar
Cem Boğa
机构
[1] Çankaya University,Department of Mechanical Engineering, Faculty of Engineering
[2] Adana Alparslan Türkeș Science and Technology University,Department of Mechanical Engineering, Faculty of Engineering
来源
Journal of the Brazilian Society of Mechanical Sciences and Engineering | 2023年 / 45卷
关键词
Ni; Ti superalloy; µwire-EDM; ANN/PSO; Kerf width; Material removal rate; Surface roughness; White layer thickness;
D O I
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中图分类号
学科分类号
摘要
The unique properties of high hardness, toughness, strain hardening, and development of strain-induced martensite of nickel–titanium superalloys made the micro-wire electro discharge machining (µwire-EDM) process one of the main practical options to cut such alloys in micro-scale. This paper presents the results of a comprehensive study to address the response variables of Ni55.8Ti superalloy in µwire-EDM process, including the kerf width (KW), material removal rate (MRR), arithmetic mean surface roughness (Ra) and white layer thickness (WLT). To this aim, the effects of pulse on-time (Ton), pulse off-time (Toff), discharge current (Id) and servo voltage (SV) as input parameters were investigated using the experiments conducted based on Taguchi L27 orthogonal array. The results were employed in the analysis of variance (ANOVA) to examine the significance of input parameters and their interactions with the output variables. An optimization approach was adopted based on a hybrid neural network/particle swarm optimization (ANN/PSO) technique. The ANN was employed to achieve the models representing the correlation between the input parameters and output variables of the µwire-EDM process. The weight and bias factor matrices were obtained by ANN in MATLAB and together with the feed forward/backpropagation model and developed functions based on PSO methodology were used to optimize the input parameters to achieve the minimum quantities of KW, Ra and WLT and the maximum value of MRR, individually and in an accumulative approach. The results represented a maximum accumulative error of nearly 8% that indicated the precision of the developed model and the reliability of the optimization approach. At the optimized level of input parameters obtained through the accumulative optimization approach, the KW, Ra, and WLT remained nearly intact as compared with the levels of responses obtained in the individual optimization approach, while there was a sacrifice in the machining efficiency and reduction in the MRR in the µwire-EDM process of Nitinol superalloy.
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