Comparison between artificial neural network and multiple regression for the prediction of superficial roughness in dry turning
Main Article Content
Abstract
Keywords
AISI 316L stainless steel, Analysis of variance and regression, Artificial neural network, Dry high-speed turning, Surface roughness. acero inoxidable AISI 316L, análisis de varianza y regresión, redes neuronales artificiales, rugosidad superficial, torneado de alta velocidad.
References
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