In this paper ARMAV (Auto Regressive Moving Average Vector) models are
used for system identification and modal analysis purposes. This time
domain technique allows to estimate a discrete time system response f
unction without performing arty domain change (i.e. it doesn't use FFT
and IFFT to evaluate the model parameters) and without applying any t
ime window (also when sampled data are non periodic): this leads to we
ll-estimated system parameters, also for short data, records. These mo
dels are useful to perform system identification for multiple input-ou
tput cases also when the excitation is just statistically known. The p
resent analysis is dedicated to a scaled bridge, designed according to
the theory of models, whose static and dynamic characteristics are co
mpatible to those of real bridges. The aim of the tests is to collect
a series of supervised measurements in a controlled environment, with
statistically defined traffic conditions; the comparison of the model
results with those acquired on the real bridge is the compulsory step
towards a correct modelling of bridges for their identification and mo
nitoring. The paper reports encouraging results obtained with experime
ntal simulations on the model.