Particle-Filtering-Based Prognosis Framework for Energy Storage Devices With a Statistical Characterization of State-of-Health Regeneration Phenomena
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Olivares, Benjamín E.
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Particle-Filtering-Based Prognosis Framework for Energy Storage Devices With a Statistical Characterization of State-of-Health Regeneration Phenomena
Abstract
This paper presents the implementation of a particlefiltering-
based prognostic framework that allows estimating the
state of health (SOH) and predicting the remaining useful life
(RUL) of energy storage devices, and more specifically lithium-ion
batteries, while simultaneously detecting and isolating the effect
of self-recharge phenomena within the life-cycle model. The
proposed scheme and the statistical characterization of capacity
regeneration phenomena are validated through experimental data
from an accelerated battery degradation test and a set of ad hoc
performance measures to quantify the precision and accuracy of
the RUL estimates. In addition, a simplified degradation model
is presented to analyze and compare the performance of the
proposed approach in the case where the optimal solution (in the
mean-square-error sense) can be found analytically.
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Artículo de publicación ISI
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TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, VOL. 62, NO. 2, FEBRUARY 2013
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