Role of trochoidal machining process parameter and chip morphology studies during end milling of AISI D3 steel
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DOI: 10.1007/s10845-019-01517-5
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- D. Yu. Pimenov & A. Bustillo & T. Mikolajczyk, 2018. "Artificial intelligence for automatic prediction of required surface roughness by monitoring wear on face mill teeth," Journal of Intelligent Manufacturing, Springer, vol. 29(5), pages 1045-1061, June.
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- César García-Hernández & Juan-José Garde-Barace & Juan-Jesús Valdivia-Sánchez & Pedro Ubieto-Artur & José-Antonio Bueno-Pérez & Basilio Cano-Álvarez & Miguel-Ángel Alcázar-Sánchez & Francisco Valdivia, 2021. "Trochoidal Milling Path with Variable Feed. Application to the Machining of a Ti-6Al-4V Part," Mathematics, MDPI, vol. 9(21), pages 1-22, October.
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Keywords
End milling; Trochoidal loop spacing; Response surface methodology; Artificial Neural Network; Specific cutting energy; Temperature; Surface roughness; Genetic algorithm;All these keywords.
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