Sack Lunch Seminar (SLS)

SLS - Hajoon Song (MIT) - Data assimilation in a coupled physical-biogeochemical model
Date Time Location
November 6th, 2013 12:10pm-1:00pm 54-915
Abstract:
Coupled physical and biological data assimilation is performed within the California Current System using model twin experiments. The initial condition of physical and biological variables is estimated using the four-dimensional variational (4DVar) method under the Gaussian and lognormal error distributions assumption, respectively. Errors are assumed to be independent, yet variables are coupled by assimilation through tangent linear and adjoint model dynamics. Using a nutrient-phytoplankton-zooplankton-detritus (NPZD) model coupled to an ocean circulation model (the Regional Ocean Modeling System, ROMS), the coupled data assimilation procedure is evaluated by comparing results to experiments with no assimilation and with assimilation of physical data and biological data alone. Independent assimilation of physical (biological) data reduces the root-mean-squared error of physical (biological) state variables by more than 56% (43%). However, the improvement in biological (physical) state variables is less than 7% (13%). In contrast, coupled data assimilation improves both physical and biological components by 57% and 49%, respectively. This performance and improved representation of empirical modes of coupled surface physical and biological fields illustrate the superior performance of coupled physical and biological 4DVar assimilation.