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논문 기본 정보

자료유형
학술저널
저자정보
Seong Jun Yoon (Busan University of Foreign Studies) Teresssa Talluri (Korea Institute of Industrial Technology) Amarnathvarma Angani (Korea Institute of Industrial Technology) Hee Tae Chung (Busan University of Foreign Studies) Kyoo Jae Shin (Busan University of Foreign Studies)
저널정보
대한전자공학회 IEIE Transactions on Smart Processing & Computing IEIE Transactions on Smart Processing & Computing Vol.14 No.2
발행연도
2025.4
수록면
280 - 296 (17page)
DOI
10.5573/IEIESPC.2025.14.2.280

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초록· 키워드

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The increase in battery temperatures results in the critical risks, including explosions, therefore need of efficient thermal management is increasing. In this point of view, we proposed a novel approach to battery thermal control, employing hot soaking and cold soaking experiments for the first time to identify phase change materials (PCMs) that enhance battery safety under temperature conditions. Machine learning methods such as Llng short-term memory (LSTM) and random forest (RF) models were applied and thermal performance was investigated in lithium polymer pouch batteries integrated with PCMs for fast and accurate prediction. Experiments were conducted at normal temperature of 25℃, hot temperature of 50℃, and cold temperature of −10℃. Thermal performance metrics such as maximum temperature and thermal gradient ΔT were measured during discharge of the battery. In this study we selected PCMs such as RT15, RT31, EG5, EG26, and EG28 to evaluate the performance with LSTM and RF are applied to predict temperature variations influencing thermal behavior. Results indicated that EG26 and EG28 PCMs, significantly improved thermal performance under extreme conditions. The LSTM model demonstrated high predictive accuracy of 99% compared to RF model with 97%. This integrated model approach provided both high predictive accuracy and valuable insights into battery thermal performance, underscoring the importance of PCM selection to ensure battery longevity and stability across diverse environments.

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Abstract
1. Introduction
2. Analysis of PCMs for Battery Thermal Management
3. Proposed Neural Network Aging Algorithm for Battery Thermal Management
4. Proposed Battery Aging Training
5. Experimental Results and Discussion
6. Conclusion
References

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