4.7 Article

Multi-sensor information fusion estimators for stochastic uncertain systems with correlated noises

Journal

INFORMATION FUSION
Volume 27, Issue -, Pages 126-137

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.inffus.2015.06.001

Keywords

Information fusion estimator; Stochastic uncertainty; Multiplicative noise; Correlated noise; Cross-covariance matrix

Funding

  1. Natural Science Foundation of China [NSFC-61174139]
  2. Heilongjiang Province Outstanding Youth fund [JC201412]
  3. Chang Jiang Scholar Candidates Program for Provincial Universities in Heilongjiang [2013CJHB005]
  4. Science and Technology Innovative Research Team in Higher Educational Institutions of Heilongjiang Province [2012TD007]
  5. Program for High-qualified Talents [Hdtd2010-03]
  6. Electronic Engineering Provincal Key Laboratory

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The information fusion estimation problems are investigated for multi-sensor stochastic uncertain systems with correlated noises. The stochastic uncertainties caused by correlated multiplicative noises exist in the state and observation matrices. The process noise and the observation noises are one-step auto-correlated and two-step cross-correlated, respectively. While the observation noises of different sensors are one-step cross-correlated. The optimal centralized fusion filter, predictor and smoother are proposed in the linear minimum variance sense via an innovative analysis approach. To enhance the robustness and flexibility, a distributed fusion filter is put forward, which requires the calculation of filtering error cross-covariance matrices between any two local filters. To avoid the calculation of cross-covariance matrices, another distributed fusion filter is also presented by using the covariance intersection (CI) fusion algorithm, which can reduce the computational cost. A simulation example is given to show the effectiveness of the proposed algorithms. (C) 2015 Elsevier B.V. All rights reserved.

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