The problem of determining a uniform sampling time interval for monito
ring serially correlated groundwater heads is the main subject discuss
ed here. The problem is approached by stochastic time series analysis
and modeling. An autoregressive integrated moving average model is ass
umed to fit the underlying series. Given that groundwater head data ca
n be sampled at different time intervals and that the same stochastic
model must represent the time series regardless of the sampling timesc
ale, the parameters of the underlying model for the series sampled at
a given arbitrary time interval h are obtained as a function of h and
as a function of the model parameters for the series sampled at a unit
time interval. This is accomplished by linking the derived variances
and autocovariances at the two sampling scales. The derived equations
and the sampling design procedure are tested and illustrated using the
groundwater head data of Collier County, Florida.