An idealized, linear model of the coastal ocean is used to assess the domai
n of influence of surface type data, in particular how much information suc
h data contain about the ocean state at depth and how such information may
be retrieved. The ultimate objective is to assess the feasibility of assimi
lation of real surface current data, obtained from coastal radar measuremen
ts, into more realistic dynamical models. The linear model is used here wit
h a variational inverse assimilation scheme, which is optimal in the sense
that under appropriate assumptions about the errors, the maximum possible i
nformation is retrieved from the surface data. A comparison is made between
strongly and weakly constrained variational formulations. The use of a lin
ear model permits significant analytic progress. Analysis is presented for
the solution of the inverse problem by expanding in terms of representer fu
nctions, greatly reducing the dimension of the solution space without compr
omising the optimization. The representer functions also provide important
information about the domain of influence of each data point, about optimal
location and resolution of the data points, about the error statistics of
the inverse solution itself, and how that depends upon the error statistics
of the data and of the model. Finally, twin experiments illustrate how wel
l a known ocean state can be reconstructed from sampled data. Consideration
of the statistics of an ensemble of such twin experiments provides insight
into the dependence of the inverse solution on the choice of weights, on t
he data error, and on the sampling resolution.