The Kalman filter (KF) is optimal with respect to minimum mean square error (MMSE) if the process noise and measurement noise are Gaussian. However, the KF is suboptimal in the presence of non-Gaussian noise. The maximum correntropy criterion Kalman filter (MCC-KF) is a Kalman-type filter that uses the correntropy measure as its optimality criterion instead of MMSE. In this paper, we modify the correntropy gain in the MCC-KF to obtain a new filter that we call the measurement-specific correntropy filter (MSCF). The MSCF uses a matrix gain rather than a scalar gain to provide better selectivity in the way that it handles the innovation vector. We analytically compare the performance of the KF with that of the MSCF when either the measurement or process noise covariance is unknown. For each of these situations, we analyze two mean square errors (MSEs): the filter-calculated MSE (FMSE) and the true MSE (TMSE). We show that the FMSE of the KF is less than that of the MSCF. However, the TMSE of the KF is greater than that of the MSCF under certain conditions. Illustrative examples are provided to verify the analytical results.
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September 2019
Research-Article
Robust Kalman-Type Filter for Non-Gaussian Noise: Performance Analysis With Unknown Noise Covariances
Seyed Fakoorian,
Seyed Fakoorian
Department of Electrical Engineering and
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: s.fakoorian@csuohio.edu
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: s.fakoorian@csuohio.edu
1Corresponding author.
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Alireza Mohammadi,
Alireza Mohammadi
Department of Electrical and Computer
Engineering,
University of Michigan,
Dearborn, MI 48128
e-mail: amohmmad@umich.edu
Engineering,
University of Michigan,
Dearborn, MI 48128
e-mail: amohmmad@umich.edu
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Vahid Azimi,
Vahid Azimi
School of Electrical and Computer Engineering,
Georgia Institute of Technology,
Atlanta, GA 30313
e-mail: vahid.azimi@gatech.edu
Georgia Institute of Technology,
Atlanta, GA 30313
e-mail: vahid.azimi@gatech.edu
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Dan Simon
Dan Simon
Department of Electrical Engineering and
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: d.j.simon@csuohio.edu
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: d.j.simon@csuohio.edu
Search for other works by this author on:
Seyed Fakoorian
Department of Electrical Engineering and
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: s.fakoorian@csuohio.edu
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: s.fakoorian@csuohio.edu
Alireza Mohammadi
Department of Electrical and Computer
Engineering,
University of Michigan,
Dearborn, MI 48128
e-mail: amohmmad@umich.edu
Engineering,
University of Michigan,
Dearborn, MI 48128
e-mail: amohmmad@umich.edu
Vahid Azimi
School of Electrical and Computer Engineering,
Georgia Institute of Technology,
Atlanta, GA 30313
e-mail: vahid.azimi@gatech.edu
Georgia Institute of Technology,
Atlanta, GA 30313
e-mail: vahid.azimi@gatech.edu
Dan Simon
Department of Electrical Engineering and
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: d.j.simon@csuohio.edu
Computer Science,
Cleveland State University,
Cleveland, OH 44115
e-mail: d.j.simon@csuohio.edu
1Corresponding author.
Contributed by the Dynamic Systems Division of ASME for publication in the JOURNAL OF DYNAMIC SYSTEMS, MEASUREMENT,AND CONTROL. Manuscript received August 5, 2018; final manuscript received February 28, 2019; published online May 2, 2019. Assoc. Editor: Ming Xin.
J. Dyn. Sys., Meas., Control. Sep 2019, 141(9): 091011 (8 pages)
Published Online: May 2, 2019
Article history
Received:
August 5, 2018
Revised:
February 28, 2019
Citation
Fakoorian, S., Mohammadi, A., Azimi, V., and Simon, D. (May 2, 2019). "Robust Kalman-Type Filter for Non-Gaussian Noise: Performance Analysis With Unknown Noise Covariances." ASME. J. Dyn. Sys., Meas., Control. September 2019; 141(9): 091011. https://doi.org/10.1115/1.4043054
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