Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell Model

With the ever-increasing usage of lithium-ion batteries, especially in transportation applications, accurate estimation of battery state of charge (SOC) is of paramount importance. A majority of the current SOC estimation methods rely on data collected and calibrated offline, which could lead to ina...

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Main Authors: Arun Chandra Shekar, Sohel Anwar
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Batteries
Subjects:
Online Access:http://www.mdpi.com/2313-0105/5/1/4
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spelling doaj-a8ff6dce3b364916888a21a0f0be6a782020-11-24T22:05:37ZengMDPI AGBatteries2313-01052019-01-0151410.3390/batteries5010004batteries5010004Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell ModelArun Chandra Shekar0Sohel Anwar1KPIT Technologies, Inc., Columbus, IN 47201, USADepartment of Mechanical and Energy Engineering, Purdue School of Engineering and Technology, IUPUI, Indianapolis, IN 46202, USAWith the ever-increasing usage of lithium-ion batteries, especially in transportation applications, accurate estimation of battery state of charge (SOC) is of paramount importance. A majority of the current SOC estimation methods rely on data collected and calibrated offline, which could lead to inaccuracies in SOC estimation under different operating conditions or when the battery ages. This paper presents a novel real-time SOC estimation of a lithium-ion battery by applying the particle swarm optimization (PSO) method to a detailed electrochemical model of a single cell. This work also optimizes both the single-cell model and PSO algorithm so that the developed algorithm can run on an embedded hardware with reasonable utilization of central processing unit (CPU) and memory resources while estimating the SOC with reasonable accuracy. A modular single-cell electrochemical model, as well as the proposed constrained PSO-based SOC estimation algorithm, was developed in Simulink©, and its performance was theoretically verified in simulation. Experimental data were collected for healthy and aged Li-ion battery cells in order to validate the proposed algorithm. Both simulation and experimental results demonstrate that the developed algorithm is able to accurately estimate the battery SOC for 1C charge and 1C discharge operations for both healthy and aged cells.http://www.mdpi.com/2313-0105/5/1/4state of chargeparticle swarm optimizationreal-time estimationsingle-cell modelSimulink©
collection DOAJ
language English
format Article
sources DOAJ
author Arun Chandra Shekar
Sohel Anwar
spellingShingle Arun Chandra Shekar
Sohel Anwar
Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell Model
Batteries
state of charge
particle swarm optimization
real-time estimation
single-cell model
Simulink©
author_facet Arun Chandra Shekar
Sohel Anwar
author_sort Arun Chandra Shekar
title Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell Model
title_short Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell Model
title_full Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell Model
title_fullStr Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell Model
title_full_unstemmed Real-Time State-of-Charge Estimation via Particle Swarm Optimization on a Lithium-Ion Electrochemical Cell Model
title_sort real-time state-of-charge estimation via particle swarm optimization on a lithium-ion electrochemical cell model
publisher MDPI AG
series Batteries
issn 2313-0105
publishDate 2019-01-01
description With the ever-increasing usage of lithium-ion batteries, especially in transportation applications, accurate estimation of battery state of charge (SOC) is of paramount importance. A majority of the current SOC estimation methods rely on data collected and calibrated offline, which could lead to inaccuracies in SOC estimation under different operating conditions or when the battery ages. This paper presents a novel real-time SOC estimation of a lithium-ion battery by applying the particle swarm optimization (PSO) method to a detailed electrochemical model of a single cell. This work also optimizes both the single-cell model and PSO algorithm so that the developed algorithm can run on an embedded hardware with reasonable utilization of central processing unit (CPU) and memory resources while estimating the SOC with reasonable accuracy. A modular single-cell electrochemical model, as well as the proposed constrained PSO-based SOC estimation algorithm, was developed in Simulink©, and its performance was theoretically verified in simulation. Experimental data were collected for healthy and aged Li-ion battery cells in order to validate the proposed algorithm. Both simulation and experimental results demonstrate that the developed algorithm is able to accurately estimate the battery SOC for 1C charge and 1C discharge operations for both healthy and aged cells.
topic state of charge
particle swarm optimization
real-time estimation
single-cell model
Simulink©
url http://www.mdpi.com/2313-0105/5/1/4
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