Approach can also be applied to analyze the alarms
generated by an industrial automaton supervising a
production process.
Currently, we are working at introducing an
entropic criterion in the Stochastic Approach to
prune the trees produced with the BJT4T algorithm
(Benayadi and Le Goc, 2007) and at defining a
cognitive approach of modeling dynamic systems
that is compatible with the Stochastic Approach of
modeling (Masse and Le Goc, 2007).
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