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Multi-Pass Sequential Mini-Batch Stochastic Gradient Descent Algorithms for Noise Covariance Estimation in Adaptive Kalman FilteringEstimation of unknown noise covariances in a Kalman filter is a problem of significant practical interest in a wide array of applications. Although this problem has a long history, reliable algorithms for their estimation were scant, and necessary and sufficient conditions for identifiability of the covariances were in dispute until recently. Necessary and sufficient conditions for covariance estimation and a batch estimation algorithm were presented in our previous study. This paper presents stochastic gradient descent algorithms for noise covariance estimation in adaptive Kalman filters that are an order of magnitude faster than the batch method for similar or better root mean square error. More significantly, these algorithms are applicable to non-stationary systems where the noise covariances can occasionally jump up or down by an unknown magnitude. The computational efficiency of the new algorithms stems from adaptive thresholds for convergence, recursive fading memory estimation of the sample cross-correlations of the innovations, and accelerated stochastic gradient descent algorithms. The comparative evaluation of the proposed methods on a number of test cases demonstrates their computational efficiency and accuracy.
Document ID
20230017116
Acquisition Source
2230 Support
Document Type
Reprint (Version printed in journal)
Authors
Hee-Seung Kim ORCID
(University of Connecticut Storrs, Connecticut, United States)
Lingyi Zhang ORCID
(University of Connecticut Storrs, Connecticut, United States)
Adam Bienkowski ORCID
(University of Connecticut Storrs, Connecticut, United States)
Krishna R. Pattipati ORCID
(University of Connecticut Storrs, Connecticut, United States)
Date Acquired
November 22, 2023
Publication Date
July 5, 2021
Publication Information
Publication: IEEE Access
Publisher: Institute of Electrical and Electronics Engineers
Volume: 9
Issue Publication Date: January 1, 2021
e-ISSN: 2169-3536
Subject Category
Earth Resources and Remote Sensing
Funding Number(s)
CONTRACT_GRANT: 80NSSC19K1076
CONTRACT_GRANT: N00173-16-1-G905
CONTRACT_GRANT: N00014-21-1-2187
CONTRACT_GRANT: N00014-18-1-1238
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
Keywords
Adaptive Kalman filtering
noise covariance estimation
Adam
RMS prop
bold-driver
stochastic gradient descent
sequential
fading memory
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