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Interpretable and sensorless lithium-ion battery temperature estimation: A Temporal Fusion Transformer approach
Journal article   Peer reviewed

Interpretable and sensorless lithium-ion battery temperature estimation: A Temporal Fusion Transformer approach

Mingyao Ma, Qian Xu, Qiang Chen, Tingzhi Jiang and Hai Wang
Journal of energy storage, Vol.131(Part B), 117414
2025

Abstract

Accurate estimation of surface temperature in lithium-ion batteries is crucial for safety, performance, and longevity in applications. In this study, we propose a sensorless and interpretable lithium-ion battery surface temperature estimation model based on Temporal Fusion Transformer (TFT). Our model utilizes physical quantities derived from the analysis of the battery’s equivalent circuit model, a simplified thermal model, and the electrochemical reaction process as inputs for temperature estimation. The advanced TFT model, equipped with a multi-head interpretable attention mechanism, is employed for accurate temperature estimation. Experimental results demonstrate that our proposed model achieves maximum temperature errors below 1 °C under various driving conditions and fluctuating ambient temperatures (−10 °C to 20 °C), meeting the expected outcomes. Furthermore, we enhance the interpretability of the model by variable-based ante-hoc and post-hoc strategy. This methodology provides a dependable and economical substitute for conventional sensor-based methods in battery management systems, offering implications for improved battery performance and safety.

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UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#7 Affordable and Clean Energy
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