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A Deep Learning Method with Ensemble Learning for Capacity Estimation of Lithium-ion Battery

机译:具有锂离子电池容量估计的集合学习的深度学习方法

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The accurate estimation of the capacity of lithium-ion batteries can help us better understand its working state. However, there are some intractable problems including poor adaptability and robustness in current data-driven models which affect their estimation accuracy. The advance in deep learning and ensemble learning introduces brand-new data-driven methods to solve this problem. This paper proposes a comprehensive model of lithium-ion capacity estimation involving deep learning and ensemble learning structure. In this model, based on the effectiveness of deep learning in feature extraction, an autoencoder (AE) is used to extract features, and a deep neural network (DNN) is adopted for the estimation of lithium-ion capacity. On the other side, we take a random forest (RF) method to ensure the stability and robustness of the capacity estimation model. These two models were integrated to build an ensemble model called EADNN-RF. The ensemble model is applied to a dataset of lithium-ion batteries via the accelerated test taken by NASA, and the prediction effect of the model is compared with ADNN and RF. The results of the controlled trial demonstrate that the proposed ADNN-ERF method which is more accurate and robust than the other similar data-driven methods.
机译:锂离子电池容量的准确估计可以帮助我们更好地了解其工作状态。然而,存在一些难触性问题,包括影响其估计精度的当前数据驱动模型中的适应性和稳健性。深度学习和集合学习的进步介绍了全新的数据驱动方法来解决这个问题。本文提出了涉及深度学习和集合学习结构的锂离子容量估算综合模型。在该模型中,基于在特征提取中深度学习的有效性,用于提取特征的自动化器(AE),并采用深神经网络(DNN)来估计锂离子容量。在另一边,我们采用随机森林(RF)方法来确保容量估计模型的稳定性和稳健性。这两个模型被集成以构建一个名为EADNN-RF的集合模型。通过NASA的加速试验将该集合模型应用于锂离子电池的数据集,与ADNN和RF进行比较模型的预测效果。受控试验的结果表明,所提出的ADNN-ERF方法比其他类似的数据驱动方法更准确且鲁棒。

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