A practical approach to assess the trade-offs in selecting the parameters t
hat der ne the class of candidate models and that are commonly used in the
Robust Identification framework is derived. The procedure minimizes the wor
st case identification error bound and guarantees consistency, according to
all the experimental evidence. A consistency curve is defined, and upper a
nd lower bounds are computed to graphically select these parameters.