Optimization of Tremblay's battery model parameters for plug-in hybrid electric vehicle applications
Version 2 2024-06-06, 00:16Version 2 2024-06-06, 00:16
Version 1 2018-03-20, 00:12Version 1 2018-03-20, 00:12
conference contribution
posted on 2024-06-06, 00:16authored byY Zhang, S Lyden, BAL de la Barra, Enamul HaqueEnamul Haque
Accurate modeling of batteries for plug-in hybrid vehicle applications is of fundamental importance to optimize the operation strategy, extend battery life and improve vehicle performance. Tremblay's battery model has been specifically designed and validated for electric vehicle applications. Tremblay's parameter identification method is based on evaluating the three remarkable points manually picked from a manufacturer's discharge curve. This method is error prone and the resultant discharge curve may deviate significantly from the experimental curve as reported in previous studies. This paper proposes to use a novel quantum-behaved particle swarm optimization (QPSO) parameter estimation technique to estimate the model parameters. The performance of QPSO is compared to that of genetic algorithm (GA) and particle swarm optimization (PSO) approaches. The QPSO technique needs less tuning effort than other techniques since it only uses one tuning parameter. Reducing the number of iterations should be a welcome development in most applications areas. Results show that the QPSO parameter estimation technique converges to acceptable solutions with fewer iterations than that obtained by the GA and the PSO approaches.
History
Pagination
1-6
Location
Melbourne, Vic.
Start date
2017-11-19
End date
2017-11-22
eISSN
2474-1507
ISBN-13
978-1-5386-2647-4
Language
eng
Publication classification
E Conference publication, E1 Full written paper - refereed
Copyright notice
2017, IEEE
Editor/Contributor(s)
[Unknown]
Title of proceedings
AUPEC 2017 : Smart power grids int he 21st century : Proceedings of the Australasian Universities Power Engineering Conference 2017
Event
IEEE Power & Energy Society. Conference (2017 : Melbourne, Vic.)