Title of article :
Chloride stress corrosion cracking resistance of 6% Mo stainless steel alloy (UNS N08367)
Author/Authors :
Fritz، James D. نويسنده , , Gerlock، Ronald J. نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
We propose a network architecture based on adaptive receptive fields and a learning algorithm that combines both supervised learning of centers and unsupervised learning of output layer weights. This algorithm causes each group of radial basis functions to adapt to regions of the clustered input space. Networks produced by this algorithm appear to have better generalization performance on prediction of non-linear input-output mappings than corresponding back-propagation algorithms and requires a fraction of the number of connection weights required by fixed center radial basis. For a test problem of predicting product quality of a reverse osmosis desalination plant, the network learns much faster than a three-layer perceptron trained with backpropagation, but requires additional computational burden.
Keywords :
6% Mo stainless steel , Superaustenitic stainless steel , UNS N08367 , Chloride stress corrosion cracking , AL-6XN®
Journal title :
Desalination
Journal title :
Desalination