International audienceIn the satellite age, geoscientist have acquired an unprecedented aboundance of data describing the earth (ocean and land) surface. This accumulation of observations with high spatio-temporal sampling has generated a demand in ways to optimally extract from these data the useful features which have the ability to forecast the evolution of some key parameter. In this work we explore the high potential of using advanced machine learning techniques for the prediction of the temporal evolution of 2D oceanographic parameters.We chose to present an experiment on the prediction of sea-surface fields of the total suspended particulate mater in the english chanell. This choice was motivated by the complexity of the phenomenons...