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Machine learning pipeline for battery state of health estimation
[article]
2021
arXiv
pre-print
Lithium-ion batteries are ubiquitous in modern day applications ranging from portable electronics to electric vehicles. Irrespective of the application, reliable real-time estimation of battery state of health (SOH) by on-board computers is crucial to the safe operation of the battery, ultimately safeguarding asset integrity. In this paper, we design and evaluate a machine learning pipeline for estimation of battery capacity fade - a metric of battery health - on 179 cells cycled under various
arXiv:2102.00837v1
fatcat:rcwl2totgfhx3f5f5stfma2nrq