Accurate estimation of battery state of health (SOH) during fast charging is crucial for the management of electric vehicle batteries. However, challenges remain due to the lack of training data for individual target batteries, and there is a need for personalized models to account for variations in charging and discharging behavior.
In a study published in IEEE Transactions on Transportation Electrification, a team led by Prof. CHEN Zhongwei and Assoc. Prof. MAO Zhiyu from the Dalian Institute of Chemical Physics (DICP) of the Chinese Academy of Sciences, along with Prof. FENG Jiangtao from Xi'an Jiaotong University, developed a novel two-stage federated transfer learning framework for accurate SOH prediction using fast charging segments while preserving the user privacy.
In this framework, multiple distributed batteries first collaborate to train a global model through federated learning, sharing only model parameters. This allows the system to learn general battery behavior without exposing private data. The global model is then fine-tuned with a small amount of local data from a target battery, generating a personalized model that captures its unique charging and discharging characteristics.
This federated transfer framework is built on a lightweight convolutional neural network enhanced with a channel attention mechanism. Experimental results on the public fast charging battery dataset showed that it outperforms both locally trained models and traditional federated learning methods.
In addition, the framework has been integrated into the second-generation battery digital brain (PBSRD Digit core model), enabling intelligent battery management. It also has been applied to launch a vertical intelligent customer service system in the energy storage field for Shuangdeng Group, advancing automation and intelligence in the energy storage industry.
"This federated transfer learning technology provides solid technical support for our intelligent customer service system," said Prof. CHEN.
Journal
IEEE Transactions on Transportation Electrification
Method of Research
Commentary/editorial
Subject of Research
Not applicable
Article Title
A federated transfer learning framework for lithium-ion battery state of health estimation based on fast-charging segments
Article Publication Date
31-Jul-2025