Abstract
This paper presents an algorithm for Monte Carlo fixed-lag smoothing in state-space models defined by a diffusion process observed through noisy discrete-time measurements. Based on a particle approximation of the filtering and smoothing distributions, the method relies on a simulation technique of conditioned diffusions. The proposed sequential smoother can be applied to general nonlinear and multidimensional models, like the ones used in environmental applications. The smoothing of a turbulent flow in a high-dimensional context is given as a practical example. © 2014 Author(s).
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CITATION STYLE
Cuzol, A., & Mémin, E. (2014). Monte Carlo fixed-lag smoothing in state-space models. Nonlinear Processes in Geophysics, 21(3), 633–643. https://doi.org/10.5194/npg-21-633-2014
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