人工神经网络
均方误差
学习迁移
基础(拓扑)
人工智能
计算机科学
深度学习
模式识别(心理学)
数学
统计
数学分析
作者
Iman Babaeiyazdi,Afshin Rezaei‐Zare,Shahab Shokrzadeh
出处
期刊:IEEE Transactions on Transportation Electrification
日期:2022-04-25
卷期号:9 (1): 886-895
被引量:22
标识
DOI:10.1109/tte.2022.3170230
摘要
In this study, transfer learning (TL) technique is used in conjunction with deep neural network (DNN) to predict the capacity of lithium-ion batteries. First, the base DNN model is trained and validated based on the source dataset containing electrochemical impedance spectroscopy (EIS) measurement at temperatures of 25 °C and 35 °C. Then, the base DNN model is retrained and validated using different proportions, i.e., the first 50% and 20% of the target dataset, which contains EIS measurement at the temperature of 45 °C. This will create a new model called DNN-TL carrying the knowledge from the base model. The DNN-TL model is used to predict the second proportions, i.e., the second 50% and 80% of the target dataset considered as missing data. The maximum mean absolute percentage error (MAPE), when the first 50% and 20% of the target dataset are used for retraining DNN-TL with no fixed-layer, is found to be 0.605% and 0.999%, respectively, which indicates the accuracy of the model to estimate the capacity of batteries. The average $R$ -squared of 0.9683 is achieved by DNN-TL with no fixed-layer indicating the goodness of its fit and its capability to follow the actual missing datasets.
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