A nested hybrid filter for parameter estimation and state tracking in homogeneous multi-scale models

2020 IEEE 23rd International Conference on Information Fusion (FUSION)(2020)

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摘要
Multi-scale problems, where variables of interest evolve in different time-scales and live in different state-spaces, can be found in many fields of science. Here, we introduce a new recursive methodology for Bayesian inference that aims at estimating the static parameters and tracking the dynamic variables of these kind of systems. Although the proposed approach works in rather general multi-scale systems, for clarity we analyze the case of a homogeneous multi-scale model with 3 time-scales (static parameters, slow dynamic state variables and fast dynamic state variables). The proposed scheme, based on nested filtering methology of [1], combines three intertwined layers of filtering techniques that approximate recursively the joint posterior probability distribution of the parameters and both sets of dynamic state variables given a sequence of partial and noisy observations. We explore the use of sequential Monte Carlo schemes in the first and second layers while we use an unscented Kalman filter to obtain a Gaussian approximation of the posterior probability distribution of the fast variables in the third layer. Some numerical results are presented for a stochastic two-scale Lorenz 96 model with unknown parameters.
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关键词
nested hybrid filter,parameter estimation,state tracking,homogeneous multiscale models,multiscale problems,state-spaces,recursive methodology,Bayesian inference,static parameters,dynamic variables,general multiscale systems,multiscale model,time-scales,slow dynamic state variables,fast dynamic state variables,nested filtering methology,intertwined layers,joint posterior probability distribution,sequential Monte Carlo schemes,unscented Kalman filter,fast variables,two-scale Lorenz 96 model,unknown parameters,Gaussian approximation
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