Tj. Sabin et al., Accelerated learning using Gaussian process models to predict static recrystallization in an Al-Mg alloy, MODEL SIM M, 8(5), 2000, pp. 687-706
This paper describes an investigation into the suitability of Gaussian proc
ess models for predicting the microstructure evolution arising from static
recrystallization. These methods have the advantage of not requiring a prio
r understanding of the micromechanical processes. They are wholly empirical
and use a Bayesian framework to infer the probability distribution of data
, given a 'training set' comprising observed outputs for known inputs. Give
n the evidence from the training set, they can make a prediction and assess
its certainty, taking into account the noise in the data. In addition, non
-uniform deformation geometries were chosen to provide the training data, b
oth to approximate typical manufacturing processes with complex strain path
s and to investigate whether learning could be accelerated by using only a
small number of test samples containing a distribution of deformation histo
ries. The model was trained and tested on data from samples of a cold-defor
med and annealed aluminium-magnesium alloy.