Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation study

This paper proposes a new method of concurrent SOC and SOH estimation using a combination of recursive least square (RLS) algorithm and particle swarm optimization (PSO). The RLS algorithm is equipped with multiple fixed forgetting factors (MFFF) which are optimized by PSO. The performance of the hy...

Full description

Bibliographic Details
Main Authors: Latif Rozaqi, Estiko Rijanto, Stratis Kanarachos
Format: Article
Language:English
Published: Indonesian Institute of Sciences 2017-07-01
Series:Journal of Mechatronics, Electrical Power, and Vehicular Technology
Subjects:
Online Access:http://mevjournal.com/index.php/mev/article/view/369
id doaj-3412226cd36b4e2180e81cee1dd8b4dc
record_format Article
spelling doaj-3412226cd36b4e2180e81cee1dd8b4dc2020-11-25T03:20:10ZengIndonesian Institute of SciencesJournal of Mechatronics, Electrical Power, and Vehicular Technology2087-33792088-69852017-07-0181404910.14203/j.mev.2017.v8.40-49179Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation studyLatif Rozaqi0Estiko Rijanto1Stratis Kanarachos2Indonesian Institute of SciencesIndonesian Institute of SciencesCoventry UniversityThis paper proposes a new method of concurrent SOC and SOH estimation using a combination of recursive least square (RLS) algorithm and particle swarm optimization (PSO). The RLS algorithm is equipped with multiple fixed forgetting factors (MFFF) which are optimized by PSO. The performance of the hybrid RLS-PSO is compared with the similar RLS which is optimized by single objective genetic algorithms (SOGA) as well as multi-objectives genetic algorithm (MOGA). Open circuit voltage (OCV) is treated as a parameter to be estimated at the same timewith internal resistance. Urban Dynamometer Driving Schedule (UDDS) is used as the input data. Simulation results show that the hybrid RLS-PSO algorithm provides little better performance than the hybrid RLS-SOGA algorithm in terms of mean square error (MSE) and a number of iteration. On the other hand, MOGA provides Pareto front containing optimum solutions where a specific solution can be selected to have OCV MSE performance as good as PSO.http://mevjournal.com/index.php/mev/article/view/369Li-Ionbatterystate of charge (SOC)state of health (SOH)recursive least square (RLS)particle swarm optimization (PSO)genetic algorithm (GA)
collection DOAJ
language English
format Article
sources DOAJ
author Latif Rozaqi
Estiko Rijanto
Stratis Kanarachos
spellingShingle Latif Rozaqi
Estiko Rijanto
Stratis Kanarachos
Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation study
Journal of Mechatronics, Electrical Power, and Vehicular Technology
Li-Ion
battery
state of charge (SOC)
state of health (SOH)
recursive least square (RLS)
particle swarm optimization (PSO)
genetic algorithm (GA)
author_facet Latif Rozaqi
Estiko Rijanto
Stratis Kanarachos
author_sort Latif Rozaqi
title Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation study
title_short Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation study
title_full Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation study
title_fullStr Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation study
title_full_unstemmed Comparison between RLS-GA and RLS-PSO for Li-ion battery SOC and SOH estimation: a simulation study
title_sort comparison between rls-ga and rls-pso for li-ion battery soc and soh estimation: a simulation study
publisher Indonesian Institute of Sciences
series Journal of Mechatronics, Electrical Power, and Vehicular Technology
issn 2087-3379
2088-6985
publishDate 2017-07-01
description This paper proposes a new method of concurrent SOC and SOH estimation using a combination of recursive least square (RLS) algorithm and particle swarm optimization (PSO). The RLS algorithm is equipped with multiple fixed forgetting factors (MFFF) which are optimized by PSO. The performance of the hybrid RLS-PSO is compared with the similar RLS which is optimized by single objective genetic algorithms (SOGA) as well as multi-objectives genetic algorithm (MOGA). Open circuit voltage (OCV) is treated as a parameter to be estimated at the same timewith internal resistance. Urban Dynamometer Driving Schedule (UDDS) is used as the input data. Simulation results show that the hybrid RLS-PSO algorithm provides little better performance than the hybrid RLS-SOGA algorithm in terms of mean square error (MSE) and a number of iteration. On the other hand, MOGA provides Pareto front containing optimum solutions where a specific solution can be selected to have OCV MSE performance as good as PSO.
topic Li-Ion
battery
state of charge (SOC)
state of health (SOH)
recursive least square (RLS)
particle swarm optimization (PSO)
genetic algorithm (GA)
url http://mevjournal.com/index.php/mev/article/view/369
work_keys_str_mv AT latifrozaqi comparisonbetweenrlsgaandrlspsoforliionbatterysocandsohestimationasimulationstudy
AT estikorijanto comparisonbetweenrlsgaandrlspsoforliionbatterysocandsohestimationasimulationstudy
AT stratiskanarachos comparisonbetweenrlsgaandrlspsoforliionbatterysocandsohestimationasimulationstudy
_version_ 1724619055122350080