用人工神经网络建模预测直接油冷电池的热性能和电性能

IF 4.6 4区 化学 Q2 ELECTROCHEMISTRY
Batteries Pub Date : 2023-11-16 DOI:10.3390/batteries9110559
K. Garud, Jeong-Woo Han, Seong-Guk Hwang, Moo-Yeon Lee
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引用次数: 0

摘要

由于现有商用间接液体冷却技术的局限性,人们开始关注用于下一代电动汽车电池热管理的直接液体冷却技术。要实现用于电池热管理的直接液体冷却的商业化,需要建立一个反映性能和运行参数的广泛数据库。开发预测模型可以生成这一参考数据库,从而以最少的实验工作量设计出有效的冷却系统。在本研究中,人工神经网络(ANN)建模被用于预测基于各种操作条件的直接油冷电池的热性能和电性能。实验是在采用直接油冷却的 18650 电池模块上进行的,为开发神经网络模型生成学习数据。神经网络模型的开发将油温、油流速和放电率作为输入操作条件,将最高温度、温差、传热系数和电压作为输出热性能和电性能。建议的神经网络模型包括两种算法,一种是具有切线-正余弦(Tan-Sig)传递函数的 Levenberg-Marquardt (LM)训练变体,另一种是具有对数-正余弦(Log-Sig)传递函数的变体。与具有相同结构的 ANN_LM-Log 算法相比,具有 3-10-10-4 结构的 ANN_LM-Tan 算法在所有工作条件下都能准确预测热性能和电性能。考虑到所有输入和输出参数,ANN_LM-Tan 算法和 ANN_LM-Log 算法的最大预测误差分别限制在 ±0.97% 和 ±4.81% 以内。基于最大判定系数(R2)和方差系数(COV)分别为 0.99 和 1.65,建议使用 ANN_LM-Tan 算法准确预测直接油冷电池的热性能和电性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network Modeling to Predict Thermal and Electrical Performances of Batteries with Direct Oil Cooling
The limitations of existing commercial indirect liquid cooling have drawn attention to direct liquid cooling for battery thermal management in next-generation electric vehicles. To commercialize direct liquid cooling for battery thermal management, an extensive database reflecting performance and operating parameters needs to be established. The development of prediction models could generate this reference database to design an effective cooling system with the least experimental effort. In the present work, artificial neural network (ANN) modeling is demonstrated to predict the thermal and electrical performances of batteries with direct oil cooling based on various operating conditions. The experiments are conducted on an 18650 battery module with direct oil cooling to generate the learning data for the development of neural network models. The neural network models are developed considering oil temperature, oil flow rate, and discharge rate as the input operating conditions and maximum temperature, temperature difference, heat transfer coefficient, and voltage as the output thermal and electrical performances. The proposed neural network models comprise two algorithms, the Levenberg–Marquardt (LM) training variant with the Tangential-Sigmoidal (Tan-Sig) transfer function and that with the Logarithmic-Sigmoidal (Log-Sig) transfer function. The ANN_LM-Tan algorithm with a structure of 3-10-10-4 shows accurate prediction of thermal and electrical performances under all operating conditions compared to the ANN_LM-Log algorithm with the same structure. The maximum prediction errors for the ANN_LM-Tan and ANN_LM-Log algorithms are restricted within ±0.97% and ±4.81%, respectively, considering all input and output parameters. The ANN_LM-Tan algorithm is suggested to accurately predict the thermal and electrical performances of batteries with direct oil cooling based on a maximum determination coefficient (R2) and variance coefficient (COV) of 0.99 and 1.65, respectively.
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来源期刊
Batteries
Batteries Energy-Energy Engineering and Power Technology
CiteScore
4.00
自引率
15.00%
发文量
217
审稿时长
7 weeks
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