"http://ieeexplore.ieee.org/stamp/stamp.jsp?arnumber=6889799" . "S" . "Pitel, J." . "IEEE" . "Application of neural networks to evaluate experimental data of galvanic zincing" . . "In order to improve corrosion resistance of alloy S355 EN 1025, the relationship between the thickness of zinc coating created during the process of acidic galvanic zincing and factors that influence this process were investigated. Influence of individual factors on thickness of zinc coating for sample area with surface current density of 3 A.dm2 was determined by planned experiment which uses central composite plan. The obtained experimental data were evaluated based on neural network theory using cubic neural unit with Levenberg-Marquardt iterative adaptive algorithm. The influence of number of training data on the reliability of the obtained computational model has been studied. Furthermore, relationship between the amount of training data and reliability of prediction for the thickness of created zinc layer was observed. The relationship between input factors and thickness of layer coating with 88.37% reliability was reached." . "Application of neural networks to evaluate experimental data of galvanic zincing"@en . "RIV/68407700:21220/14:00224869!RIV15-MSM-21220___" . . . . "Application of neural networks to evaluate experimental data of galvanic zincing" . . . . "Michal, Peter" . . "21220" . . "Piscataway" . "2014-07-06+02:00"^^ . . "1"^^ . "4"^^ . . "[C1C6D378A183]" . . "10.1109/IJCNN.2014.6889799" . . "978-1-4799-1484-5" . "Bukovsk\u00FD, Ivo" . "3791" . "Vagaska, A." . . "neural networks; galvanic zincing; Levenberg-Marquard; cubic neural unit"@en . "Neural Networks (IJCNN), 2014 International Joint Conference on - Scopus ISBN" . "Beijing" . "Application of neural networks to evaluate experimental data of galvanic zincing"@en . . "5"^^ . "In order to improve corrosion resistance of alloy S355 EN 1025, the relationship between the thickness of zinc coating created during the process of acidic galvanic zincing and factors that influence this process were investigated. Influence of individual factors on thickness of zinc coating for sample area with surface current density of 3 A.dm2 was determined by planned experiment which uses central composite plan. The obtained experimental data were evaluated based on neural network theory using cubic neural unit with Levenberg-Marquardt iterative adaptive algorithm. The influence of number of training data on the reliability of the obtained computational model has been studied. Furthermore, relationship between the amount of training data and reliability of prediction for the thickness of created zinc layer was observed. The relationship between input factors and thickness of layer coating with 88.37% reliability was reached."@en . . "RIV/68407700:21220/14:00224869" .