The increasing interest in spatially correlated functional data has led to
the development of appropriate geostatistical techniques that allow to predict
a curve at an unmonitored location using a functional kriging with external
drift model that takes into account the effect of exogenous variables (either
scalar or functional). Nevertheless uncertainty evaluation for functional
spatial prediction remains an open issue. We propose a semi-parametric
bootstrap for spatially correlated functional data that allows to evaluate the
uncertainty of a predicted curve, ensuring that the spatial dependence
structure is maintained in the bootstrap samples. The performance of the
proposed methodology is assessed via a simulation study. Moreover, the approach
is illustrated on a well known data set of Canadian temperature and on a real
data set of PM10 concentration in the Piemonte region, Italy. Based on the
results it can be concluded that the method is computationally feasible and
suitable for quantifying the uncertainty around a predicted curve.
Supplementary material including R code is available upon request