Title :
Genetic parameter identification of the Doyle-Fuller-Newman model from experimental cycling of a LiFePO4 battery
Author :
Forman, J.C. ; Moura, S.J. ; Stein, J.L. ; Fathy, H.K.
Author_Institution :
Univ. of Michigan, Ann Arbor, MI, USA
fDate :
June 29 2011-July 1 2011
Abstract :
This paper examines the identification of the parameters of the Doyle-Fuller-Newman electrochemistry-based Lithium-ion battery model from voltage and current cycling data. The battery used in this study has a lithium iron phosphate cathode chemistry intended for high-power applications such as plug-in hybrid electric vehicles. The variables optimized for model identification include parameterizations of the model´s anode equilibrium potential, cathode equilibrium potential, and solution conductivity. A genetic algorithm is used to optimize these model parameters against experimental data. The resulting identified model fits two experimental data sets used for system identification, as well as separate validation data sets corresponding to five different vehicle drive cycles. These drive cycles simulate the current a battery would undergo while used in a plug-in hybrid vehicle battery pack. The accuracy of the parameters is investigated using various validation data sets. This is believed to be the first attempt at fitting nearly all of the parameters and functions in the DFN model simultaneously using only voltage and current data. Computational logistics of using a genetic algorithm to identify 88 parameters of an electrochemistry-based model for 7.5 hours of cycling data are discussed. In addition, a detailed analysis of local parameter identifiability is presented.
Keywords :
anodes; battery powered vehicles; cathodes; electrochemical electrodes; genetic algorithms; hybrid electric vehicles; iron compounds; lithium; lithium compounds; secondary cells; DFN model; Doyle-Fuller-Newman model; LiFePO4; battery cycling; cathode equilibrium potential; computational logistics; current cycling data; electrochemistry-based model; genetic algorithm; genetic parameter identification; high-power applications; lithium iron phosphate cathode chemistry; lithium-ion battery model; model anode equilibrium potential; plug-in hybrid electric vehicles; plug-in hybrid vehicle battery pack; solution conductivity; vehicle drive cycles; voltage cycling data; Anodes; Batteries; Cathodes; Computational modeling; Genetic algorithms; Optimization; Solids;
Conference_Titel :
American Control Conference (ACC), 2011
Conference_Location :
San Francisco, CA
Print_ISBN :
978-1-4577-0080-4
DOI :
10.1109/ACC.2011.5991183