4.8 Article

Development of a lifetime prediction model for lithium-ion batteries based on extended accelerated aging test data

Journal

JOURNAL OF POWER SOURCES
Volume 215, Issue -, Pages 248-257

Publisher

ELSEVIER
DOI: 10.1016/j.jpowsour.2012.05.012

Keywords

Lithium-ion; Aging; Lifetime prognosis; Battery model; HEV

Funding

  1. German Federal Ministry for Education and Research [13N9973]

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Battery lifetime prognosis is a key requirement for successful market introduction of electric and hybrid vehicles. This work aims at the development of a lifetime prediction approach based on an aging model for lithium-ion batteries. A multivariable analysis of a detailed series of accelerated lifetime experiments representing typical operating conditions in hybrid electric vehicle is presented. The impact of temperature and state of charge on impedance rise and capacity loss is quantified. The investigations are based on a high-power NMC/graphite lithium-ion battery with good cycle lifetime. The resulting mathematical functions are physically motivated by the occurring aging effects and are used for the parameterization of a semi-empirical aging model. An impedance-based electric-thermal model is coupled to the aging model to simulate the dynamic interaction between aging of the battery and the thermal as well as electric behavior. Based on these models different drive cycles and management strategies can be analyzed with regard to their impact on lifetime. It is an important tool for vehicle designers and for the implementation of business models. A key contribution of the paper is the parameterization of the aging model by experimental data, while aging simulation in the literature usually lacks a robust empirical foundation. (C) 2012 Elsevier B.V. All rights reserved.

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