Publication | Open Access
Information-Theoretic Measures and Sequential Monte Carlo Methods for Detection of Regeneration Phenomena in the Degradation of Lithium-Ion Battery Cells
39
Citations
15
References
2015
Year
EngineeringMarkov Chain Monte CarloUncertainty ModelingState EstimationNonlinear System IdentificationReliability EngineeringData ScienceUncertainty QuantificationSystems EngineeringEnergy Storage DevicesStatisticsBattery DegradationInformation-theoretic MeasuresDegradation TrendElectrical EngineeringCapacity Regeneration PhenomenaLithium-ion BatteryProcess MonitoringLithium-ion Battery CellsEnergy StorageProbability TheorySystem IdentificationSequential Monte CarloElectric BatteryMonte Carlo MethodBatteriesRegeneration Phenomena
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.
| Year | Citations | |
|---|---|---|
Page 1
Page 1