Litcius/Paper detail

Advancing state of health estimation for electric vehicles: Transformer-based approach leveraging real-world data

Kosaku Nakano, Sophia Vögler, Kenji Tanaka

2024Advances in Applied Energy34 citationsDOIOpen Access PDF

Abstract

The widespread adoption of electric vehicles (EVs) underscores the urgent need for innovative approaches to estimate their lithium-ion batteries’ state of health (SOH), which is crucial for ensuring safety and efficiency. This study introduces SOH-TEC, a transformer encoder-based model that processes raw time-series battery and vehicle-related data from a single EV trip to estimate the SOH. Unlike conventional methods that rely on lab-experimented battery cycle data, SOH-TEC utilizes real-world EV operation data, enhancing practical application. The model is trained and evaluated on a real-world dataset collected over nearly three years from three EVs. This dataset includes reliable SOH labels obtained through periodic constant-current full-discharge tests using a chassis dynamometer. Despite the challenges posed by noisy EV real-world data, the model shows high accuracy, with a mean absolute error of 0.72% and a root mean square error of 1.17%. Moreover, our proposed pre-training strategies with unlabeled data, particularly SOH ordinal comparison, significantly enhance the model’s performance; using only 50% of the labeled data achieves results nearly identical to those obtained with the full dataset. Self-attention map analysis reveals that the model primarily focuses on stationary or consistent driving periods to estimate SOH. While the study is constrained by a dataset featuring repetitive driving patterns, it highlights the significant potential of transformer for SOH estimation in EVs and offers valuable insights for future data collection and model development. • A transformer for estimating battery health in electric vehicles is proposed. • A real-world electric vehicle dataset with reliable state of health labels is used. • Our model accurately estimates state of health using single-trip operation data. • Pre-training with unlabeled data enhances the model’s predictive performance. • Attention intensity analysis clarifies the model’s estimation process.

Topics & Concepts

TransformerComputer scienceEstimationState (computer science)EngineeringElectrical engineeringSystems engineeringVoltageAlgorithmAdvanced Battery Technologies ResearchElectric Vehicles and InfrastructureFault Detection and Control Systems