Quantum-Enhanced Modeling and Optimization of Sodium-Ion Batteries




Masemola, Khanyisile; Nyamupangedengu, Cuthbert; Dorrell, David G.

N/A

IEEE Southern Power Electronics Conference

2025

2025 IEEE 10th Southern Power Electronics Conference (SPEC)

979-8-3315-7189-4

979-8-3315-7188-7

DOIhttps://doi.org/10.1109/SPEC64875.2025.11376854

https://ieeexplore.ieee.org/document/11376854



Sodium-ion batteries (SIBs) are becoming progressively more prevalent as a feasible substitute for lithium-ion batteries (LIBs) due to the rising need for affordable and sustainable energy storage on a worldwide scale. Because sodium is abundant and relatively inexpensive, SIBs seem appealing. However, the intricacy of their electrochemical properties, which includes ion transport, intercalation kinetics, and thermal characteristics poses a hindrance to their broad adoption. Current available classical algorithms struggle with scalability, nonlinearity, and computational intensity of electrical vehicle (EV) battery models. This paper proposes a quantum-assisted state estimation framework tailored to enhance predictive accuracy and computational robustness of battery state estimation using a hybrid quantum-classical model. Our approach proposes utilizing simulated data derived from a physics-based pseudo-twodimensional (P2D) electrochemical model to train and validate a variational quantum circuit (VQC) designed for state of charge (SOC) and voltage prediction. Although no quantum hardware execution is performed in this study, rather this work introduces a framework and simulation-ready methodology for future deployment. The results show theoretical viability and potential for superior (hybrid) quantum performance compared to classical-only models, laying the groundwork for quantumenhanced battery management systems.



Khanyisile Masemola thanks the Council for Scientific and Industrial Research (CSIR), South Africa for funding her studies.


Last updated on 16/02/2026 07:37:21 AM