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Regularization-based Continual Learning for Fault Prediction in Lithium-Ion Batteries

Benjamin Maschler, Sophia Tatiyosyan, Michael Weyrich

2022Procedia CIRP23 citationsDOIOpen Access PDF

Abstract

In recent years, the use of lithium-ion batteries has greatly expanded into products from many industrial sectors, e.g. cars, power tools or medical devices. An early prediction and robust understanding of battery faults could therefore greatly increase product quality in those fields. While current approaches for data-driven fault prediction provide good results on the exact processes they were trained on, they often lack the ability to flexibly adapt to changes, e.g. in operational or environmental parameters. Continual learning promises such flexibility, allowing for an automatic adaption of previously learnt knowledge to new tasks. Therefore, this article discusses different continual learning approaches from the group of regularization strategies, which are implemented, evaluated and compared based on a real battery wear dataset. Online elastic weight consolidation delivers the best results, but, as with all examined approaches, its performance appears to be strongly dependent on task characteristics and task sequence.

Topics & Concepts

Regularization (linguistics)Flexibility (engineering)Consolidation (business)Computer scienceArtificial intelligenceTask (project management)Machine learningBattery capacityBattery (electricity)Reliability engineeringEngineeringPower (physics)Systems engineeringPhysicsAccountingStatisticsBusinessMathematicsQuantum mechanicsAdvanced Battery Technologies ResearchMachine Learning and ELMReliability and Maintenance Optimization
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