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White layer thickness prediction in WEDM-ANFIS modelling
Research Areafaculty-of-engineering
Year2015
AuthorsIbrahem Maher
JournalMalaysian International Tribology Conference 2015
Volume
MonthNovember
ISSN
AbstractWire Electric Discharge Machining (WEDM) is a nontraditional technique by which the required profile is acquired using spark energy. Regarding wire cutting, precision machining is necessary to achieve high product quality. White Layer Thickness (WLT) is one of the most important factors for assessing superior surface finish. In this research, Adaptive Neuro-fuzzy Inference System (ANFIS) was used to predict the WLT in WEDM using coated wire electrode. The predicted data were compared with measured values, and the average prediction error for WLT was 2.61 %.
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