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An Adaptive Deep Neural Network with Transfer Learning for State-of-Charge Estimations of Battery Cells

机译:具有转移学习的自适应深度神经网络,用于电池单元的荷电状态估计

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This paper proposes a new adaptive learning model for capacity estimation of lithium-ion battery cells. The proposed deep neural network transfers knowledge from other cells and adapts its behavior by exponentially weighting the data from the historical cells using a custom weighting function. The proposed model is shown to achieve state-of-art with an MAE of 0.56% when compared with three other traditional transfer learning and adaptive learning models for Li-ion battery cells. Details of the model followed by derivations and experimental results are provided.
机译:本文提出了一种新的自适应学习模型,用于锂离子电池的容量估计。拟议的深度神经网络从其他单元格转移知识,并通过使用自定义加权函数对历史单元格中的数据进行指数加权来适应其行为。与其他三个传统的锂离子电池转移学习和自适应学习模型相比,所提出的模型显示出最先进的MAE为0.56%。提供了模型的详细信息,然后提供了推导和实验结果。

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