Development of an intelligent Li-ion battery management system for electric vehicles

To improve electric vehicle (EV)’s operation performance and reliability, an energy management system (EMS) should be designed to supervise and control the power sources including lithium-ion (Li-ion) batteries. In this thesis, some topics relevant to implementation of a new intelligent EMS for EVs...

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Main Author: Du, Jiani
Other Authors: Wen Changyun
Format: Theses and Dissertations
Language:English
Published: 2016
Subjects:
Online Access:https://hdl.handle.net/10356/66463
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Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-66463
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering
spellingShingle DRNTU::Engineering::Electrical and electronic engineering
Du, Jiani
Development of an intelligent Li-ion battery management system for electric vehicles
description To improve electric vehicle (EV)’s operation performance and reliability, an energy management system (EMS) should be designed to supervise and control the power sources including lithium-ion (Li-ion) batteries. In this thesis, some topics relevant to implementation of a new intelligent EMS for EVs and focusing on Li-ion battery’s operation and performance are researched. The intelligent EMS is based on some novel methods for modeling and estimation of Li-ion batteries, cell equalization in battery pack and power management strategy design for the power sources in EVs. The first part of this thesis focuses on Li-ion battery modeling. Various types of equivalent circuit model are established and compared. It is verified that the series circuit model with two resistor-capacitor (RC) networks has good performance. The model using fuzzy logic to describe the temperature effect based on experiments is proposed. Then, another new type of battery model trained by the extreme learning machine (ELM) algorithm is proposed in experimental condition with simple current patterns. The ELM model performs simpler modeling process and better accuracy comparing with existing radial basis function (RBF) neural network (NN) battery model. Based on existing and proposed models, Li-ion battery state of charge (SOC) estimation is researched and improved in this thesis. The Kalman filter (KF)-based methods including extended Kalman filter (EKF), unscented Kalman filter (UKF), adaptive EKF (AEKF) and adaptive UKF (AUKF) are applied on the ELM model. Experimental results and comparisons indicate that the AUKF algorithm achieves improved SOC estimation performance with better accuracy and faster convergence rate. The estimation results also verify that the ELM model is more suitable for SOC estimation than the conventional RBF NN model. Considering the battery model’s flexibility, accuracy and practical operation conditions, the particle filter (PF) methods are applied on an accurate nonlinear Li-ion battery equivalent circuit model. The model represents the circuit parameters’ variation according to SOC by nonlinear functions and achieves better accuracy than constant parameter circuit models. The algorithms of PF and unscented particle filter (UPF) for nonlinear systems are executed to estimate Li-ion battery SOC. The estimation results reveal that UPF has better accuracy and faster convergence rate than PF. However, the computational load for the PF methods is heavier, bringing limitations in EMS’s applications. Then, the accurate nonlinear equivalent circuit model is simplified to a constant circuit parameter model with system uncertainties to achieve simpler modeling and estimation process. The sliding mode observer with high accuracy and light computation is applied. The adaptive gain technique is used in the observer and SOC estimation with good performance is provided by this proposed adaptive observer. The adaptive observer based on sliding mode scheme is also applied to estimate Li-ion battery SOC and state of health (SOH) simultaneously. The estimation results verify that the proposed observer scheme has accurate and robust performance on battery SOC and SOH estimation. Another part in this thesis is about cell equalization in Li-ion battery packs. Since cell imbalance brings damage to Li-ion batteries in the pack, considering circuit size, system implementation and cost, the equalization method using switched capacitors is applied and improved for series battery strings in battery pack in this thesis. The proposed modularized cell equalization schematic using chain structure switched capacitors achieves fast equalizing speed and small voltage across the switches. Another modularized double switched capacitor equalization schematic considering battery SOC and SOH is also proposed to improve the equalizing efficiency and reliability. The trade-off between equalization speed and system simplicity should be considered to select the appropriate equalization schematic in applications. The last part of this thesis designs the power management strategy in EMS for EVs. Fuzzy logic control strategy is proposed and Li-ion battery’s aging levels represented by SOH is considered in the control system. By designing fuzzy rules, the fuzzy control strategy realizes the functions of EV power distribution and power sources operation supervision for various EV driving actions. Specifically, Li-ion battery life is extended by the designed fuzzy control strategy considering SOH. To summarize, the proposed power management strategy in EMS for EVs achieves good performance on EV power sources operation, supervision and Li-ion battery service life extension.
author2 Wen Changyun
author_facet Wen Changyun
Du, Jiani
format Theses and Dissertations
author Du, Jiani
author_sort Du, Jiani
title Development of an intelligent Li-ion battery management system for electric vehicles
title_short Development of an intelligent Li-ion battery management system for electric vehicles
title_full Development of an intelligent Li-ion battery management system for electric vehicles
title_fullStr Development of an intelligent Li-ion battery management system for electric vehicles
title_full_unstemmed Development of an intelligent Li-ion battery management system for electric vehicles
title_sort development of an intelligent li-ion battery management system for electric vehicles
publishDate 2016
url https://hdl.handle.net/10356/66463
_version_ 1772827432872574976
spelling sg-ntu-dr.10356-664632023-07-04T16:44:23Z Development of an intelligent Li-ion battery management system for electric vehicles Du, Jiani Wen Changyun Wang Youyi School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering To improve electric vehicle (EV)’s operation performance and reliability, an energy management system (EMS) should be designed to supervise and control the power sources including lithium-ion (Li-ion) batteries. In this thesis, some topics relevant to implementation of a new intelligent EMS for EVs and focusing on Li-ion battery’s operation and performance are researched. The intelligent EMS is based on some novel methods for modeling and estimation of Li-ion batteries, cell equalization in battery pack and power management strategy design for the power sources in EVs. The first part of this thesis focuses on Li-ion battery modeling. Various types of equivalent circuit model are established and compared. It is verified that the series circuit model with two resistor-capacitor (RC) networks has good performance. The model using fuzzy logic to describe the temperature effect based on experiments is proposed. Then, another new type of battery model trained by the extreme learning machine (ELM) algorithm is proposed in experimental condition with simple current patterns. The ELM model performs simpler modeling process and better accuracy comparing with existing radial basis function (RBF) neural network (NN) battery model. Based on existing and proposed models, Li-ion battery state of charge (SOC) estimation is researched and improved in this thesis. The Kalman filter (KF)-based methods including extended Kalman filter (EKF), unscented Kalman filter (UKF), adaptive EKF (AEKF) and adaptive UKF (AUKF) are applied on the ELM model. Experimental results and comparisons indicate that the AUKF algorithm achieves improved SOC estimation performance with better accuracy and faster convergence rate. The estimation results also verify that the ELM model is more suitable for SOC estimation than the conventional RBF NN model. Considering the battery model’s flexibility, accuracy and practical operation conditions, the particle filter (PF) methods are applied on an accurate nonlinear Li-ion battery equivalent circuit model. The model represents the circuit parameters’ variation according to SOC by nonlinear functions and achieves better accuracy than constant parameter circuit models. The algorithms of PF and unscented particle filter (UPF) for nonlinear systems are executed to estimate Li-ion battery SOC. The estimation results reveal that UPF has better accuracy and faster convergence rate than PF. However, the computational load for the PF methods is heavier, bringing limitations in EMS’s applications. Then, the accurate nonlinear equivalent circuit model is simplified to a constant circuit parameter model with system uncertainties to achieve simpler modeling and estimation process. The sliding mode observer with high accuracy and light computation is applied. The adaptive gain technique is used in the observer and SOC estimation with good performance is provided by this proposed adaptive observer. The adaptive observer based on sliding mode scheme is also applied to estimate Li-ion battery SOC and state of health (SOH) simultaneously. The estimation results verify that the proposed observer scheme has accurate and robust performance on battery SOC and SOH estimation. Another part in this thesis is about cell equalization in Li-ion battery packs. Since cell imbalance brings damage to Li-ion batteries in the pack, considering circuit size, system implementation and cost, the equalization method using switched capacitors is applied and improved for series battery strings in battery pack in this thesis. The proposed modularized cell equalization schematic using chain structure switched capacitors achieves fast equalizing speed and small voltage across the switches. Another modularized double switched capacitor equalization schematic considering battery SOC and SOH is also proposed to improve the equalizing efficiency and reliability. The trade-off between equalization speed and system simplicity should be considered to select the appropriate equalization schematic in applications. The last part of this thesis designs the power management strategy in EMS for EVs. Fuzzy logic control strategy is proposed and Li-ion battery’s aging levels represented by SOH is considered in the control system. By designing fuzzy rules, the fuzzy control strategy realizes the functions of EV power distribution and power sources operation supervision for various EV driving actions. Specifically, Li-ion battery life is extended by the designed fuzzy control strategy considering SOH. To summarize, the proposed power management strategy in EMS for EVs achieves good performance on EV power sources operation, supervision and Li-ion battery service life extension. DOCTOR OF PHILOSOPHY (EEE) 2016-04-08T08:31:30Z 2016-04-08T08:31:30Z 2016 Thesis Du, J. (2016). Development of an intelligent Li-ion battery management system for electric vehicles. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/66463 10.32657/10356/66463 en 201 p. application/pdf