Litcius/Paper detail

A Physics-Informed Composite Network for Modeling of Electrochemical Process of Large-Scale Lithium-Ion Batteries

Bing-Chuan Wang, Zhen-Dong Ji, Yong Wang, Han‐Xiong Li, Zhongmei Li

2024IEEE Transactions on Industrial Informatics22 citationsDOI

Abstract

Accurately modeling the electrochemical process of large-scale lithium-ion batteries (LLBs), which involves estimating the electrochemical state distributions within the process, is crucial for the design and management of LLBs. A two-dimensional (2-D) physics-based model can describe the electrochemical process of LLBs accurately. However, due to the presence of complex partial differential equations (PDEs), solving the model becomes a challenging task. This article develops a physics-informed composite network (PICN) as a surrogate model of the 2-D physics-based model. Specifically, PICN consists of four deep neural networks (DNNs) to estimate the distributions of four key electrochemical states, respectively. Since the architecture of PICN is inspired by PDE characteristics, it can achieve high accuracies with four lightweight DNNs. Additionally, by incorporating physics and data, PICN achieves accurate estimations using limited data. It can even estimate the electrochemical state distributions that may not be measured directly. Moreover, PICN presents a low-frequency information-based pretraining strategy and a two-stage loss balance strategy to address the convergence failure and loss imbalance that may arise in the training of PICN. PICN is a new attempt to model the electrochemical process of LLBs by integrating physics with data. Extensive experiments show that it is better than state-of-the-art models.

Topics & Concepts

Lithium (medication)ElectrochemistryIonScale (ratio)Process (computing)Materials scienceComposite numberComputer scienceNuclear engineeringProcess engineeringNanotechnologyPhysicsEngineeringElectrodeComposite materialQuantum mechanicsEndocrinologyOperating systemMedicineAdvanced Battery Technologies Research
A Physics-Informed Composite Network for Modeling of Electrochemical Process of Large-Scale Lithium-Ion Batteries | Litcius