2016
DOI: 10.1016/j.ifacol.2016.03.029
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Optimization Based Constrained Gaussian Sum Unscented Kalman Filter∗∗The authors thank the Department of Science and Technology, India, for partial financial assistance under grant 13DST057.

Abstract: This work presents a novel constrained nonlinear state estimation approach for nonlinear dynamical systems. The proposed approach combines two key elements from well know Gaussian Sum Unscented Kalman Filter (GS-UKF) and Unscented Recursive Nonlinear Dynamic Data Reconciliation (URNDDR) approaches. The proposed approach uses sum of Gaussians representation in GS-UKF and explicit constrained update in URNDDR to obtain feasible state estimates. The benefits of the proposed approach are demonstrated over the avai… Show more

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