Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving Signals

This paper presents an adaptive identification method for battery parameters in automotive applications. A simple yet accurate electrical equivalent model (ECM) with varying parameters is used to represent the whole battery pack. The modeling process requires the current, voltage, and SOC sign...

Full description

Saved in:
Bibliographic Details
Main Authors: Chunling Du, Tomi Wijaya, Choon Lim Ho
Format: Article
Language:deu
Published: NDT.net 2025-03-01
Series:e-Journal of Nondestructive Testing
Online Access:https://www.ndt.net/search/docs.php3?id=30809
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850279563617107968
author Chunling Du
Tomi Wijaya
Choon Lim Ho
author_facet Chunling Du
Tomi Wijaya
Choon Lim Ho
author_sort Chunling Du
collection DOAJ
description This paper presents an adaptive identification method for battery parameters in automotive applications. A simple yet accurate electrical equivalent model (ECM) with varying parameters is used to represent the whole battery pack. The modeling process requires the current, voltage, and SOC signals of the battery. Detailed physical knowledge of the battery pack and inside cells are not necessary. The ECM parameter identification approach is developed by employing the NLMS (normalized least mean square) algorithm, which is an advanced adaptive algorithm having fast convergence rate and easier to be implemented. This approach is verified on a 51.2 V, 95AH LiFePO4 battery pack operated in three-wheeler electric bikes. Battery signals during vehicle daily real-world driving were collected over a period of time and used for the ECM parameter identification. The identified internal resistance R0, R1 and capacitance C1 changes obviously over the period of time and the battery degradation is well reflected through the identified parameters of the ECM.
format Article
id doaj-art-1d14bcf9c91d4a64afe10f4d34308b6c
institution OA Journals
issn 1435-4934
language deu
publishDate 2025-03-01
publisher NDT.net
record_format Article
series e-Journal of Nondestructive Testing
spelling doaj-art-1d14bcf9c91d4a64afe10f4d34308b6c2025-08-20T01:49:02ZdeuNDT.nete-Journal of Nondestructive Testing1435-49342025-03-0130310.58286/30809Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving SignalsChunling DuTomi WijayaChoon Lim Ho This paper presents an adaptive identification method for battery parameters in automotive applications. A simple yet accurate electrical equivalent model (ECM) with varying parameters is used to represent the whole battery pack. The modeling process requires the current, voltage, and SOC signals of the battery. Detailed physical knowledge of the battery pack and inside cells are not necessary. The ECM parameter identification approach is developed by employing the NLMS (normalized least mean square) algorithm, which is an advanced adaptive algorithm having fast convergence rate and easier to be implemented. This approach is verified on a 51.2 V, 95AH LiFePO4 battery pack operated in three-wheeler electric bikes. Battery signals during vehicle daily real-world driving were collected over a period of time and used for the ECM parameter identification. The identified internal resistance R0, R1 and capacitance C1 changes obviously over the period of time and the battery degradation is well reflected through the identified parameters of the ECM. https://www.ndt.net/search/docs.php3?id=30809
spellingShingle Chunling Du
Tomi Wijaya
Choon Lim Ho
Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving Signals
e-Journal of Nondestructive Testing
title Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving Signals
title_full Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving Signals
title_fullStr Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving Signals
title_full_unstemmed Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving Signals
title_short Adaptive Parameter Identification of Battery Pack inElectric Vehicles with Real-Driving Signals
title_sort adaptive parameter identification of battery pack inelectric vehicles with real driving signals
url https://www.ndt.net/search/docs.php3?id=30809
work_keys_str_mv AT chunlingdu adaptiveparameteridentificationofbatterypackinelectricvehicleswithrealdrivingsignals
AT tomiwijaya adaptiveparameteridentificationofbatterypackinelectricvehicleswithrealdrivingsignals
AT choonlimho adaptiveparameteridentificationofbatterypackinelectricvehicleswithrealdrivingsignals