abstract = "This article discusses the use of genetic programming
for system identification. To this end, several
experiments have been using observations obtained from
a power transformer. The proposed strategy is to
maximise the likelihood of convergence when searching
for the model of a particular system. A traditional
strategy for system identification in Genetic
Programming is to take all the observations and
evaluate the process of evolution to find a system
model instance. Contrary to this, the proposed
methodology is based on a partial subset of the
observations, and then this subset is incremented until
reaching the total set of observations. Furthermore,
for comparison purposes we have used Eureqa, an open
genetic programming based software tool for system
identification.",