Publication | Open Access
Satellite Lithium-Ion Battery Remaining Cycle Life Prediction with Novel Indirect Health Indicator Extraction
187
Citations
19
References
2013
Year
EngineeringMachine LearningLife PredictionHome Energy StorageDeterioration ModelingReliability EngineeringData ScienceUncertainty QuantificationManagementSystems EngineeringBiostatisticsService Life PredictionElectrical EngineeringEnsemble LearningPredictive AnalyticsLithium-ion BatteriesLithium-ion BatteryEnergy StorageReliability PredictionForecastingSignal ProcessingElectric BatteryRobust ModelingPredictive MaintenanceBattery ConfigurationLife Cycle Assessment
Prognostics and remaining useful life (RUL) estimation for lithium-ion batteries play an important role in intelligent battery management systems (BMS). The capacity is often used as the fade indicator for estimating the remaining cycle life of a lithium-ion battery. For spacecraft requiring high reliability and long lifetime, in-orbit RUL estimation and reliability verification on ground should be carefully addressed. However, it is quite challenging to monitor and estimate the capacity of a lithium-ion battery on-line in satellite applications. In this work, a novel health indicator (HI) is extracted from the operating parameters of a lithium-ion battery to quantify battery degradation. Moreover, the Grey Correlation Analysis (GCA) is utilized to evaluate the similarities between the extracted HI and the battery’s capacity. The result illustrates the effectiveness of using this new HI for fading indication. Furthermore, we propose an optimized ensemble monotonic echo state networks (En_MONESN) algorithm, in which the monotonic constraint is introduced to improve the adaptivity of degradation trend estimation, and ensemble learning is integrated to achieve high stability and precision of RUL prediction. Experiments with actual testing data show the efficiency of our proposed method in RUL estimation and degradation modeling for the satellite lithium-ion battery application.
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2004 | 3.7K | |
2011 | 996 | |
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2013 | 625 | |
2011 | 504 | |
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2010 | 250 | |
Particle-Filtering-Based Prognosis Framework for Energy Storage Devices With a Statistical Characterization of State-of-Health Regeneration Phenomena Benjamín E. Olivares, Matías A. Cerda Munoz, Marcos E. Orchard, IEEE Transactions on Instrumentation and Measurement EngineeringEnergy EfficiencyLife PredictionBiomedical EngineeringReliability Engineering | 2012 | 208 |
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