DNN‐based temperature prediction of large‐scale battery pack

Author:

Kim Jiwon1,Ha Rhan2

Affiliation:

1. Department of Computer Science Yonsei University Seoul South Korea

2. Department of Computer Engineering Hongik University Seoul South Korea

Abstract

AbstractTemperature monitoring is critical for estimating the available capacity of Lithium‐ion batteries. In electric vehicle applications using large‐scale battery packs, monitoring individual cell temperature is challenging due to difficulties in sensor management. To address this issue, a sensor‐less battery temperature prediction technique is proposed that ensures both accuracy and rapid runtime execution using deep learning. A deep neural network‐based temperature prediction model is introduced that utilizes short sequences of battery voltage and discharge current. An adaptive sequence length strategy is then devised to ensure high accuracy and responsiveness, covering the non‐identically distributed nature of the data. The proposed technique is experimentally validated with commercial batteries, verifying its accuracy and rapid execution.

Publisher

Institution of Engineering and Technology (IET)

Subject

Electrical and Electronic Engineering

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