A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion Battery

The accuracy of model-based State of Charge (SOC) estimators often degrades due to parametric uncertainty, measurement errors, and variations in operating temperature. Many Kalman filter-driven SOC estimators in the literature overlook these uncertainties, leading to imprecise SOC estimation. To add...

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Main Authors: Satyaprakash Rout, Satyajit Das
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10851262/
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author Satyaprakash Rout
Satyajit Das
author_facet Satyaprakash Rout
Satyajit Das
author_sort Satyaprakash Rout
collection DOAJ
description The accuracy of model-based State of Charge (SOC) estimators often degrades due to parametric uncertainty, measurement errors, and variations in operating temperature. Many Kalman filter-driven SOC estimators in the literature overlook these uncertainties, leading to imprecise SOC estimation. To address these challenges, this study proposes a joint forgetting factor-based adaptive extended Kalman filter (JFFAEKF). The JFFAEKF approach evaluates uncertainties in the battery model and incorporates them into the SOC estimation process under dynamic operating conditions. By augmenting both the SOC and battery model parameters into a single state vector, the estimator concurrently updates these variables. An adaptive correction mechanism for process and measurement noise covariance matrices is introduced, leveraging the innovation and residual errors of estimated terminal voltage. These covariance updates enable the computation of an appropriate filter gain to mitigate the adverse effects of model and measurement uncertainties. Additionally, a forgetting factor is integrated into the design to enhance computational efficiency and convergence rate. The practical applicability of the proposed JFFAEKF is validated using real-world current profiles from the LA92, UDDS, and US06 drive cycles at various operating temperatures. The accuracy of the SOC estimation is demonstrated by comparing the root mean square error (<inline-formula> <tex-math notation="LaTeX">$E_{RMS}$ </tex-math></inline-formula>) and maximum absolute error (<inline-formula> <tex-math notation="LaTeX">$Max_{AE}$ </tex-math></inline-formula>) with other Kalman filter-based estimators. Furthermore, the estimator&#x2019;s robustness is tested under adverse conditions, including offset current, sensor bias voltage, and parametric uncertainties in the battery model and state estimator. Results from diverse dynamic operating conditions confirm the superior performance of the JFFAEKF in SOC estimation compared to existing methods.
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spelling doaj-art-2881dbb6507649edbee8c1f39d8a15ed2025-01-31T00:01:13ZengIEEEIEEE Access2169-35362025-01-0113167701678610.1109/ACCESS.2025.353313710851262A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion BatterySatyaprakash Rout0https://orcid.org/0009-0007-8443-0997Satyajit Das1https://orcid.org/0000-0003-3780-4136School of Electrical Engineering, VIT University, Vellore, Tamil Nadu, IndiaSchool of Electrical Engineering, VIT University, Vellore, Tamil Nadu, IndiaThe accuracy of model-based State of Charge (SOC) estimators often degrades due to parametric uncertainty, measurement errors, and variations in operating temperature. Many Kalman filter-driven SOC estimators in the literature overlook these uncertainties, leading to imprecise SOC estimation. To address these challenges, this study proposes a joint forgetting factor-based adaptive extended Kalman filter (JFFAEKF). The JFFAEKF approach evaluates uncertainties in the battery model and incorporates them into the SOC estimation process under dynamic operating conditions. By augmenting both the SOC and battery model parameters into a single state vector, the estimator concurrently updates these variables. An adaptive correction mechanism for process and measurement noise covariance matrices is introduced, leveraging the innovation and residual errors of estimated terminal voltage. These covariance updates enable the computation of an appropriate filter gain to mitigate the adverse effects of model and measurement uncertainties. Additionally, a forgetting factor is integrated into the design to enhance computational efficiency and convergence rate. The practical applicability of the proposed JFFAEKF is validated using real-world current profiles from the LA92, UDDS, and US06 drive cycles at various operating temperatures. The accuracy of the SOC estimation is demonstrated by comparing the root mean square error (<inline-formula> <tex-math notation="LaTeX">$E_{RMS}$ </tex-math></inline-formula>) and maximum absolute error (<inline-formula> <tex-math notation="LaTeX">$Max_{AE}$ </tex-math></inline-formula>) with other Kalman filter-based estimators. Furthermore, the estimator&#x2019;s robustness is tested under adverse conditions, including offset current, sensor bias voltage, and parametric uncertainties in the battery model and state estimator. Results from diverse dynamic operating conditions confirm the superior performance of the JFFAEKF in SOC estimation compared to existing methods.https://ieeexplore.ieee.org/document/10851262/State-of-chargeKalman filteradaptive noise correctionbattery management system
spellingShingle Satyaprakash Rout
Satyajit Das
A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion Battery
IEEE Access
State-of-charge
Kalman filter
adaptive noise correction
battery management system
title A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion Battery
title_full A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion Battery
title_fullStr A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion Battery
title_full_unstemmed A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion Battery
title_short A Joint Forgetting Factor-Based Adaptive Extended Kalman Filtering Approach to Predict the State-of-Charge and Model Parameter of Lithium-Ion Battery
title_sort joint forgetting factor based adaptive extended kalman filtering approach to predict the state of charge and model parameter of lithium ion battery
topic State-of-charge
Kalman filter
adaptive noise correction
battery management system
url https://ieeexplore.ieee.org/document/10851262/
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