An efficient particle-based method for maximum likelihood estimation in nonlinear state-space models
Thi Tuyet Trang Chau (IRMAR), Pierre Ailliot (LMBA), Val\'erie Monbet, (IRMAR, SIMSMART), Pierre Tandeo (IMT Atlantique, Lab-STICC)

TL;DR
This paper introduces an efficient particle-based method combining Conditional Particle Filter and Backward Simulation for maximum likelihood estimation in nonlinear state-space models, improving parameter estimation accuracy.
Contribution
It proposes a novel SEM algorithm integrated with CPF-BS to enhance parameter and state estimation in complex nonlinear models.
Findings
Accurately estimates parameters in highly nonlinear models
Outperforms EnKS-based EM algorithms in toy models
Provides computationally efficient estimation method
Abstract
Data assimilation methods aim at estimating the state of a system by combining observations with a physical model. When sequential data assimilation is considered, the joint distribution of the latent state and the observations is described mathematically using a state-space model, and filtering or smoothing algorithms are used to approximate the conditional distribution of the state given the observations. The most popular algorithms in the data assimilation community are based on the Ensemble Kalman Filter and Smoother (EnKF/EnKS) and its extensions. In this paper we investigate an alternative approach where a Conditional Particle Filter (CPF) is combined with Backward Simulation (BS). This allows to explore efficiently the latent space and simulate quickly relevant trajectories of the state conditionally to the observations. We also tackle the difficult problem of parameter…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Target Tracking and Data Fusion in Sensor Networks · Gaussian Processes and Bayesian Inference
