In this paper, we propose fuzzy trace identification algorithms for identif
ying non-stationary stochastic systems. These algorithms are obtained by co
mbining an adaptive trace identification algorithm with a fuzzy logic based
supervisor. The supervision level uses the global parametric distance and
the signal to noise ratio as inputs. A third input equal to the ratio betwe
en short term and long term estimated values of the output prediction error
variance can also be used in order to provide faster convergence and bette
r robustness of the parameter estimator in presence of model changes. The e
fficiency of the proposed identification methods is illustrated by means of
simulation examples.