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Improved Ferrite Number prediction in stainless steel arc welds using artificial neural networks - Part 2 : Neural network results
24
Citations
5
References
2000
Year
Materials ScienceFnn-1999 ModelEngineeringMachine LearningFerrite NumberCorrosionIndustrial EngineeringPart 2Mechanical EngineeringFerrite Number PredictionArc WeldsWelding ProcessHigh Strength Low Alloy SteelMetal ProcessingMicrostructureNeural Network Results
The development of a neural network model, named FNN-1999, for predicting Ferrite Number in arc welds as a function of alloy composition is described in Part 1. In this paper, the results of the model are compared to other means of predicting Ferrite Number in stainless steel welds. It was found the accuracy of the FNN-1999 model in predicting Ferrite Number is superior to that of the WRC-1992 diagram, the Function Fit model and a preliminary neural network model developed earlier. The error in fitting the current model to the training set was 40% less than that for the WRC-1992 diagram. In addition, the FNN-1999 model removes the restriction found in WRC-1992 and many other constitution diagrams that each element's contribution to the Ferrite Number is constant, regardless of the overall composition. Examples are given that show that with this added flexibility of the FNN-1999 model, the impact of alloying additions varies as a function of concentration, and in some cases the variation can be quite significant.
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