Abstract
The use of high-frequency radar (HFR) data is increasing worldwide for different applications in the field of
operational oceanography and data assimilation, as it provides real-time coastal surface currents at high temporal and
spatial resolution. In this work, a Lagrangian-based, empirical, real-time, short-term prediction (L-STP) system is presented in order to provide short-term forecasts of up to 48 h
of ocean currents. The method is based on finding historical analogs of Lagrangian trajectories obtained from HFR
surface currents. Then, assuming that the present state will
follow the same temporal evolution as the historical analog,
we perform the forecast. The method is applied to two HFR
systems covering two areas with different dynamical characteristics: the southeast Bay of Biscay and the central Red
Sea. A comparison of the L-STP methodology with predictions based on persistence and reference fields is performed
in order to quantify the error introduced by this approach.
Furthermore, a sensitivity analysis has been conducted to determine the limit of applicability of the methodology regarding the temporal horizon of Lagrangian prediction. A realtime skill score has been developed using the results of this
analysis, which allows for the identification of periods when
the short-term prediction performance is more likely to be
low, and persistence can be used as a better predictor for the
future currents