earticle

논문검색

Device and Module

A Study on the Lifetime Prediction of Lithium-Ion Batteries Based on the Long Short-Term Memory Model of Recurrent Neural Networks

초록

영어

Due to the recent emphasis on carbon neutrality and environmental regulations, the global electric vehicle (EV) market is experiencing rapid growth. This surge has raised concerns about the recycling and disposal methods for EV batteries. Unlike traditional internal combustion engine vehicles, EVs require unique and safe methods for the recovery and disposal of their batteries. In this process, predicting the lifespan of the battery is essential. Impedance and State of Charge (SOC) analysis are commonly used methods for this purpose. However, predicting the lifespan of batteries with complex chemical characteristics through electrical measurements presents significant challenges. To enhance the accuracy and precision of existing measurement methods, this paper proposes using a Long Short-Term Memory (LSTM) model, a type of deep learning-based recurrent neural network, to diagnose battery performance. The goal is to achieve safe classification through this model. The designed structure was evaluated, yielding results with a Mean Absolute Error (MAE) of 0.8451, a Root Mean Square Error (RMSE) of 1.3448, and an accuracy of 0.984, demonstrating excellent performance.

목차

Abstract
1. Introduction
2. Design of the LSTM Model Structure
3. Implementation of the LSTM Model
4. Conclusion
5. Acknowledgement
References

저자정보

  • Sang-Bum Kim Professar, Department of Robotdrone Engineering, Honam University, Korea

참고문헌

    ※ 기관로그인 시 무료 이용이 가능합니다.

    • 4,000원

    0개의 논문이 장바구니에 담겼습니다.