Dual Nonlinear Kalman Filter-Based SoC and Remaining Capacity Estimation for an Electric Scooter Li-NMC Battery Pack
Energies, Vol. 13, No. 3, pp. 162020Accurate, real-time estimation of battery state-of-charge (SoC) and state-of-health represents a crucial task of modern battery management systems. Due to nonlinear and battery degradation-dependent behavior of output voltage, the design of these estimation algorithms should be based on nonlinear parameter-varying models. The paper first describes the experimental setup that consists of commercially available electric scooter equipped with telemetry measurement equipment. Next, dual extended Kalman filter-based (DEKF) estimator of battery SoC, internal resistances, and parameters of open-circuit voltage (OCV) vs. SoC characteristic is presented under the assumption of fixed polarization time constant vs. SoC characteristic. The DEKF is upgraded with an adaptation mechanism to capture the battery OCV hysteresis without explicitly modelling it. Parameterization of an explicit hysteresis model and its inclusion in the DEKF is also considered. Finally, a slow time scale, sigma-point Kalman filter-based capacity estimator is designed and inter-coupled with the DEKF. A convergence detection algorithm is proposed to ensure that the two estimators are coupled automatically only after the capacity estimate has converged. The overall estimator performance is experimentally validated for real electric scooter driving cycles. electric vehicle; lithium-ion battery; estimation; Kalman filter; state-of-charge; state-of-health; resistance; open-circuit voltage; battery capacity
Cited by 11
▾
-
[1]
A Comparative Analysis of Lithium-Ion Batteries Using a Proposed Electrothermal Model Based on Numerical Simulation🔗
World Electric Vehicle Journal, 2025
-
[2]
Lithium battery model parameter identification based on the GA-LM algorithm🔗
International Journal of Green Energy, 2023
-
-
[4]
A Multitimescale Kalman Filter-Based Estimator of Li-Ion Battery Parameters Including Adaptive Coupling of State-of-Charge and Capacity Estimation🔗
IEEE Transactions on Control Systems Technology, 2023
-
-
-
[7]
Active state and parameter estimation as part of intelligent battery systems🔗
Journal of Energy Storage, 2021
-
[8]
State of charge estimation for lithium-ion batteries using dynamic neural network based on sine cosine algorithm🔗
Proceedings of the Institution of mechanical engineers. Part D, journal of automobile engineering, 2021
-
[9]
Stochastic capacity loss and remaining useful life models for lithium-ion batteries in plug-in hybrid electric vehicles🔗
Journal of Power Sources, 2020
-
[10]
Analysis of ECM-based Li-Ion Battery State and Parameter Estimation Accuracy in the Presence of OCV and Polarization Dynamics Modeling Errors🔗
International Symposium on Industrial Electronics, 2020
-
Energies, Vol. 13, No. 3, pp. 16
2020
Cited by 11
▾
-
[1] A Comparative Analysis of Lithium-Ion Batteries Using a Proposed Electrothermal Model Based on Numerical Simulation🔗World Electric Vehicle Journal, 2025
-
[2] Lithium battery model parameter identification based on the GA-LM algorithm🔗International Journal of Green Energy, 2023
-
[4] A Multitimescale Kalman Filter-Based Estimator of Li-Ion Battery Parameters Including Adaptive Coupling of State-of-Charge and Capacity Estimation🔗IEEE Transactions on Control Systems Technology, 2023
-
[7] Active state and parameter estimation as part of intelligent battery systems🔗Journal of Energy Storage, 2021
-
[8] State of charge estimation for lithium-ion batteries using dynamic neural network based on sine cosine algorithm🔗Proceedings of the Institution of mechanical engineers. Part D, journal of automobile engineering, 2021
-
[9] Stochastic capacity loss and remaining useful life models for lithium-ion batteries in plug-in hybrid electric vehicles🔗Journal of Power Sources, 2020
-
[10] Analysis of ECM-based Li-Ion Battery State and Parameter Estimation Accuracy in the Presence of OCV and Polarization Dynamics Modeling Errors🔗International Symposium on Industrial Electronics, 2020