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首页> 外文期刊>IEEE Transactions on Power Electronics >SOC Estimation of Li-ion Batteries With Learning Rate-Optimized Deep Fully Convolutional Network
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SOC Estimation of Li-ion Batteries With Learning Rate-Optimized Deep Fully Convolutional Network

机译:锂离子电池的SOC估计学习率优化深度全卷积网络

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摘要

In this letter, we train deep learning (DL) models to estimate the state-of-charge (SOC) of lithium-ion (Li-ion) battery directly from voltage, current, and battery temperature values. The deep fully convolutional network model is proposed for its novel architecture with learning rate optimization strategies. The proposed model is capable of estimating SOC at constant and varying ambient temperature on different drive cycles without having to be retrained. The model also outperformed other commonly used DL models such as the LSTM, GRU, and CNN on an open source Li-ion battery dataset. The model achieves 0.85% root mean squared error (RMSE) and 0.7% mean absolute error (MAE) at 25 degrees C and 2.0% RMSE and 1.55% MAE at varying ambient temperature (-20-25 degrees C).
机译:在这封信中,我们培养深度学习(DL)模型来估计直接从电压,电流和电池温度值估计锂离子(锂离子)电池的充电状态(SOC)。深度完全卷积的网络模型,提出了具有学习率优化策略的新型架构。所提出的模型能够在不同驱动循环上以恒定和变化的环境温度估计SOC,而无需再培训。该模型还优于其他常用的DL型号,例如LSTM,GU和CNN在开源LI离子电池数据集上。该模型在25℃和2.0%RMSE和1.55%MAE处实现0.85%的均方根误差(RMSE)和0.7%的误差(MAE),在不同的环境温度(-20-25℃)。

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