Abstract

The recently-proposed nonlinear ensemble transform filter (NETF) is extended to a fixed-lag smoother. The NETF approximates Bayes’ theorem by applying a square root update. The smoother (NETS) is derived and formulated in a joint framework with the filter. The new smoother method is evaluated using the low-dimensional, highly nonlinear Lorenz-96 model and a square-box configuration of the NEMO ocean model, which is nonlinear and has a higher dimensionality. The new smoother is evaluated within the same assimilation framework against the local error subspace transform Kalman filter (LESTKF) and its smoother extension (LESTKS), which are state-of-the-art ensemble square-root Kalman techniques. In the case of the Lorenz-96 model, both the filter NETF and its smoother extension NETS provide lower errors than the LESTKF and LESTKS for sufficiently large ensembles. In addition, the NETS shows a distinct dependence on the smoother lag, which results in a stronger error increase beyond the optimal lag of minimum error. For the experiment using NEMO, the smoothing in the NETS effectively reduces the errors in the state estimates, compared to the filter. For different state variables very similar optimal smoothing lags are found, which allows for a simultaneous tuning of the lag. In comparison to the LESTKS, the smoothing with the NETS yields a smaller relative error reduction with respect to the filter result, and the optimal lag of the NETS is shorter in both experiments. This is explained by the distinct update mechanisms of both filters. The comparison of both experiments shows that the NETS can provide better state estimates with similar smoother lags if the model exhibits a sufficiently high degree of nonlinearity or if the observations are not restricted to be Gaussian with a linear observation operator.

Highlights

  • Ensemble Kalman filters (EnKFs) are robust and well established methods to improve model estimates by assimilating observations

  • The Nonlinear Ensemble Transform Smoother (NETS) clearly reduces the root mean square error (RMSE) compared to the nonlinear ensemble transform filter (NETF)

  • The NETS is a smoother extension of a nonlinear ensemble filter that is only based on the likelihood weights and makes no parametric assumption about the state distribution

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Summary

Introduction

Ensemble Kalman filters (EnKFs) are robust and well established methods to improve model estimates by assimilating observations (see e.g. Kalnay, 2002; Evensen, 2006). Ensemble Kalman filters (EnKFs) are robust and well established methods to improve model estimates by assimilating observations A filter estimate valid at any time only accounts for past observations. Only the estimate at the end of an assimilation window contains all observational information. While this is sufficient for forecasting problems, other applications, such as reanalyses, ask for optimal state estimates at intermediate times as well van Leeuwen and Evensen, 1996) transfer observational information backwards in time. Smoothers solve for state distributions that are conditioned on all observations within a time window (Cosme et al, 2012)

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