Article ID Journal Published Year Pages File Type
1286307 Journal of Power Sources 2015 17 Pages PDF
Abstract

•Discussion of challenges and issues for on-board capacity estimation.•Review of model-based, electrochemical model-based and data driven-based approaches.•Review of ICA/DVA and aging prediction-based models.

This work provides an overview of available methods and algorithms for on-board capacity estimation of lithium-ion batteries. An accurate state estimation for battery management systems in electric vehicles and hybrid electric vehicles is becoming more essential due to the increasing attention paid to safety and lifetime issues. Different approaches for the estimation of State-of-Charge, State-of-Health and State-of-Function are discussed and analyzed by many authors and researchers in the past. On-board estimation of capacity in large lithium-ion battery packs is definitely one of the most crucial challenges of battery monitoring in the aforementioned vehicles. This is mostly due to high dynamic operation and conditions far from those used in laboratory environments as well as the large variation in aging behavior of each cell in the battery pack. Accurate capacity estimation allows an accurate driving range prediction and accurate calculation of a battery's maximum energy storage capability in a vehicle. At the same time it acts as an indicator for battery State-of-Health and Remaining Useful Lifetime estimation.

Related Topics
Physical Sciences and Engineering Chemistry Electrochemistry
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