TY - JOUR
T1 - A 4D-Var method with flow-dependent background covariances for the shallow-water equations
AU - Paulin, Daniel
AU - Jasra, Ajay
AU - Beskos, Alexandros
AU - Crisan, Dan
N1 - KAUST Repository Item: Exported on 2022-09-14
Acknowledgements: The authors thank Joe Wallwork for providing us the tsunami data set and for our correspondence related to the shallow-water equations. All authors were supported by an AcRF tier 2 grant: R-155-000-161-112. AJ was also supported by KAUST baseline funding. This material is based upon work supported in part by the U.S. Army Research Laboratory and the U.S. Army Research Office, and by the U.K. Ministry of Defence (MoD) and the U.K. Engineering and Physical Research Council (EPSRC) under grant number EP/R013616/1. DC was partially supported by the EPSRC grant: EP/N023781/1. AB was supported by a Leverhulme Trust Prize.
PY - 2022/8/11
Y1 - 2022/8/11
N2 - The 4D-Var method for filtering partially observed nonlinear chaotic dynamical systems consists of finding the maximum a-posteriori (MAP) estimator of the initial condition of the system given observations over a time window, and propagating it forward to the current time via the model dynamics. This method forms the basis of most currently operational weather forecasting systems. In practice the optimisation becomes infeasible if the time window is too long due to the non-convexity of the cost function, the effect of model errors, and the limited precision of the ODE solvers. Hence the window has to be kept sufficiently short, and the observations in the previous windows can be taken into account via a Gaussian background (prior) distribution. The choice of the background covariance matrix is an important question that has received much attention in the literature. In this paper, we define the background covariances in a principled manner, based on observations in the previous b assimilation windows, for a parameter b≥1. The method is at most b times more computationally expensive than using fixed background covariances, requires little tuning, and greatly improves the accuracy of 4D-Var. As a concrete example, we focus on the shallow-water equations. The proposed method is compared against state-of-the-art approaches in data assimilation and is shown to perform favourably on simulated data. We also illustrate our approach on data from the recent tsunami of 2011 in Fukushima, Japan.
AB - The 4D-Var method for filtering partially observed nonlinear chaotic dynamical systems consists of finding the maximum a-posteriori (MAP) estimator of the initial condition of the system given observations over a time window, and propagating it forward to the current time via the model dynamics. This method forms the basis of most currently operational weather forecasting systems. In practice the optimisation becomes infeasible if the time window is too long due to the non-convexity of the cost function, the effect of model errors, and the limited precision of the ODE solvers. Hence the window has to be kept sufficiently short, and the observations in the previous windows can be taken into account via a Gaussian background (prior) distribution. The choice of the background covariance matrix is an important question that has received much attention in the literature. In this paper, we define the background covariances in a principled manner, based on observations in the previous b assimilation windows, for a parameter b≥1. The method is at most b times more computationally expensive than using fixed background covariances, requires little tuning, and greatly improves the accuracy of 4D-Var. As a concrete example, we focus on the shallow-water equations. The proposed method is compared against state-of-the-art approaches in data assimilation and is shown to perform favourably on simulated data. We also illustrate our approach on data from the recent tsunami of 2011 in Fukushima, Japan.
UR - http://hdl.handle.net/10754/660998
UR - https://link.springer.com/10.1007/s11222-022-10119-w
U2 - 10.1007/s11222-022-10119-w
DO - 10.1007/s11222-022-10119-w
M3 - Article
SN - 1573-1375
VL - 32
JO - STATISTICS AND COMPUTING
JF - STATISTICS AND COMPUTING
IS - 4
ER -