4.6 Article

Tensor Network-Based MIMO Volterra Model for Lithium-Ion Batteries

Journal

IEEE TRANSACTIONS ON CONTROL SYSTEMS TECHNOLOGY
Volume 31, Issue 4, Pages 1493-1506

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCST.2022.3232894

Keywords

Batteries; equivalent circuit model (ECM); system identification; tensor network (TN); Volterra model

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Accurate battery modeling is crucial for optimizing battery performance. This article presents a tensor network-based Volterra double-capacitor model for lithium-ion batteries, which improves prediction accuracy compared to traditional models. Experimental results demonstrate that the proposed model outperforms existing models, making it a promising tool for future battery applications.
Accurate battery modeling is fundamental for the battery management system to function well and extract the full potential from a battery without violating constraints. In this article, a tensor network (TN)-based Volterra double-capacitor (VDC) model for lithium-ion batteries is developed to improve the prediction performance of the nonlinear double-capacitor (NDC) model. It is shown that the VDC model maintains the advantages of the NDC model to account for the rate capacity effect and the voltage recovery effect. In addition, the VDC model is capable of predicting both static and dynamic nonlinearities simultaneously in a more accurate way. To estimate the TN-cores in the VDC model, a Bond Core Sweeping Algorithm is proposed and shown to lead to a low-rank representation. A comparison based on experimental data demonstrates that the VDC model gives greater prediction accuracy than the NDC model and Thevenin model, showing significant promise to enhance future battery applications.

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