Sequential Bayesian Inference for Uncertain Nonlinear Dynamic Systems: A Tutorial.

DOI : 10.25518/2684-6500.107

Abstract

In this article, an overview of Bayesian methods for sequential simulation from posterior distributions of nonlinear and non-Gaussian dynamic systems is presented. The focus is mainly laid on sequential Monte Carlo methods, which are based on particle representations of probability densities and can be seamlessly generalized to any state-space representation. Within this context, a unified framework of the various Particle Filter (PF) alternatives is presented for the solution of state, state-parameter and input-state-parameter estimation problems on the basis of sparse measurements. The algorithmic steps of each filter are thoroughly presented and a simple illustrative example is utilized for the inference of i) unobserved states, ii) unknown system parameters and iii) unmeasured driving inputs.

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References

Electronic reference

Konstantinos E. Tatsis, Vasilis K. Dertimanis and Eleni N. Chatzi, « Sequential Bayesian Inference for Uncertain Nonlinear Dynamic Systems: A Tutorial. », Journal of Structural Dynamics [Online], 1 | 2021, Online since 21 March 2022, connection on 13 May 2026. DOI : 10.25518/2684-6500.107

Authors

Konstantinos E. Tatsis

Institute of Structural Engineering, Department of Civil, Environmental and Geomatic Engineering, ETH Zürich, Stefano-Franscini-Platz 5, 8093, Zürich, Switzerland

Vasilis K. Dertimanis

Eleni N. Chatzi