Estimation of Nonlinear Dynamic Systems: Theory and Applications (2006)
Abstract / truncated to 115 words
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic systems. Sequential Monte Carlo methods are mainly used to this end. These methods rely on models of the underlying system, motivating some developments of the model concept. One of the main reasons for the interest in nonlinear estimation is that problems of this kind arise naturally in many important applications. Several applications of nonlinear estimation are studied. The models most commonly used for estimation are based on stochastic difference equations, referred to as state-space models. This thesis is mainly concerned with models of this kind. However, there will be a brief digression from this, in the treatment of the mathematically more ... toggle 7 keywordsnonlinear estimation – system identification – kalman filter – particle filter – marginalized particle filter – expectation maximization – automotive applications
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