Pd. Hodgson et al., The prediction of the hot strength in steels with an integrated phenomenological and artificial neural network model, J MATER PR, 87(1-3), 1999, pp. 131-138
The hot torsion data of a commercial 304 stainless steel has been analysed
with an integrated phenomenological-artificial neural network model (IPANN)
, developed from the Estrin-Mecking (EM) phenomenological model and a back-
propagation artificial neural network (ANN) model. In order to predict the
flow stress in this model, the work-hardening coefficient and its product w
ith the stress were used as inputs, along with strain, temperature and stra
in rate. The Pearson correlation coefficient was used to evaluate the perfo
rmance and terminate the simulation of the IPANN model, whilst the standard
errors were employed to quantitatively compare the accuracy of different m
odels. The IPANN model is able to predict the distribution of flow stress m
ore accurately in the work-hardening and dynamic recrystallisation regimes
in comparison with the original EM and ANN models. The training speed is si
gnificantly improved and the test of the model is satisfactory, if reasonab
le training data is provided. In addition, by using the phenomenological mo
del as training data, the IPANN model may be used for extrapolation. (C) 19
99 Elsevier Science S.A. All rights reserved.