Information-Theoretic Measures and Sequential Monte Carlo Methods for Detection of Regeneration Phenomena in the Degradation of Lithium-Ion Battery Cells
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2015Metadata
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Orchard Concha, Marcos
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Information-Theoretic Measures and Sequential Monte Carlo Methods for Detection of Regeneration Phenomena in the Degradation of Lithium-Ion Battery Cells
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Abstract
This paper analyses and compares the performance
of a number of approaches implemented for the detection of
capacity regeneration phenomena (measured in ampere-hours)
in the degradation trend of energy storage devices, particularly
Lithium-Ion battery cells. All implemented approaches are based
on a combination of information-theoretic measures and sequential
Monte Carlo methods for state estimation in nonlinear,
non-Gaussian dynamic systems. Properties of information measures
are conveniently used to quantify the impact of process
measurements on the posterior probability density function of the
state, assuming that sub-optimal Bayesian estimation algorithms
(such as classic or risk-sensitive particle filters) are to be used to
obtain an empirical representation of the system uncertainty. The
proposed anomaly detection strategies are tested and evaluated
both in terms of (i) detection time (early detection) and (ii) false
alarm rates. Verification of detection schemes is performed using
simulated data for battery State-Of-Health accelerated degradation
tests, to ensure absolute knowledge on the time instant where
a regeneration phenomenon occurs
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Artículo de publicación ISI
Patrocinador
FONDECYT 1140774
and Innova-CORFO 12IDL2–16296
Identifier
URI: https://repositorio.uchile.cl/handle/2250/132634
DOI: DOI: 10.1109/TR.2015.2394356
ISSN: 0018-9529
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IEEE Transactions on Reliability, Vol. 64, No. 2, June 2015
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