Optimizing machining responses of homologous TiNiCu shape memory alloys using hybrid ANN-GA approach

dc.contributor.authorRoy, A.
dc.contributor.authorSachin, B.
dc.contributor.authorRaghavendra, T.
dc.contributor.authorRao, C.M.
dc.contributor.authorNaik, G.M.
dc.contributor.authorSoni, H.
dc.contributor.authorMashinini, P.M.
dc.contributor.authorNarendranath, S.
dc.date.accessioned2026-02-06T06:35:38Z
dc.date.issued2022
dc.description.abstractFabrication of shape memory alloys using wire electro discharge machining (WEDM) has gained popularity over the last few years. Most widely used machining parameters of WEDM process are pulse on time (Ø<inf>on</inf>), pulse off time (Ø<inf>off</inf>), servo voltage (σ) and wire feed (ω). WEDM responses like material removal rate (M<inf>R</inf>), surface roughness (S<inf>R</inf>), kerf width (K<inf>W</inf>) and recast layer thickness (L<inf>T</inf>) have been evaluated by researchers to determine machining characteristics and are also considered for this study. These machining responses determine the quality of machining and are majorly influenced by thermal conductivity and melting temperature of the WEDM workpiece. Actuation behavior of shape memory alloys is a function of phase transformation characteristics which in turn depends on elemental composition of the selected alloys. Therefore, dissimilar machining responses of Ti<inf>50</inf>Ni<inf>40</inf>Cu<inf>10</inf> and Ti<inf>50</inf>Ni<inf>25</inf>Cu<inf>25</inf> have been observed even though similar machining input values were used. This study utilized artificial neural network (ANN) mapping to establish WEDM response function – which was used as fitness function to perform multi objective optimization using genetic algorithm (GA). It was found that ANN successfully predicted machining responses of selected homologous alloys and GA helped in identifying suitable input parameter values to optimize machining responses. © 2022
dc.identifier.citationMaterials Today: Proceedings, 2022, Vol.62, , p. 4402-4410
dc.identifier.urihttps://doi.org/10.1016/j.matpr.2022.04.890
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/29974
dc.publisherElsevier Ltd
dc.subjectArtificial neural network
dc.subjectGenetic algorithm
dc.subjectOptimization
dc.subjectShape memory alloys
dc.subjectWire EDM
dc.titleOptimizing machining responses of homologous TiNiCu shape memory alloys using hybrid ANN-GA approach

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