We introduce the Gaussian process model for the empirical modelling of the formation of austenite during the continuous heating of steels. A previous paper has examined the application of neural networks to this problem, but the Gaussian process model is a more general probabilistic model which avoids some of the arbitrariness of neural networks, and is somewhat more amenable to interpretation. We demonstrate that the model leads to an improvement in the significance of the trends of the Ac1 and Ac3 temperatures as a function of the chemical composition and heating rate. In some cases, these predicted trends are more plausible than those obtained with the neural network analysis. Additionally, we show that many of the trace alloying elements present in steels are irrelevant in determining the austenite formation temperatures.
Materials Science and Technology, Vol.15 (1999) 287-294.
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