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Keywords: Back propagation (BP) algorithm
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Journal Articles
Comparative analysis of surface roughness prediction using DOE and ANN techniques during endmilling of glass fibre reinforced polymer (GFRP) composites
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Journal:
Pigment & Resin Technology
Pigment & Resin Technology (2016) 45 (2): 126–139.
Published: 07 March 2016
...) composites. Karnik et al. (2007) developed a ANN predictive model to predict the burr height and burr thickness using a multi-layer feed forward neural network, trained using back propagation (BP) algorithm in high-speed drilling of CFRP. The performance of this ANN model was compared...
