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首页> 外文期刊>Journal of power sources >State-of-charge sequence estimation of lithium-ion battery based on bidirectional long short-term memory encoder-decoder architecture
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State-of-charge sequence estimation of lithium-ion battery based on bidirectional long short-term memory encoder-decoder architecture

机译:基于双向长短期记忆编码器-解码器架构的锂离子电池充电状态序列估计

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摘要

State-of-charge (SOC) estimation of lithium-ion batteries based on deep learning techniques has been receiving considerable attention. However, most deep-learning-based methods focus on SOC estimation at fixed ambient temperatures and cannot provide useful indications for battery state in real-world scenarios because batteries usually experience varying temperatures during operation. In this study, an encoder-decoder with bidirectional long short-term memory (LSTM) is proposed for estimating the SOC at different temperature conditions. This end-to-end model can learn sequential information from the measurement sequences to characterize battery dynamics for sequence estimation. Introducing the bidirectional LSTMs into the encoder-decoder enables the model to capture the long-term dependencies of the measurement sequences from both past and future directions to increase the estimation accuracy. The proposed method is evaluated on public battery datasets under dynamic loading profiles. Validation with an experimental dataset shows that this method of considering the sequential contexts and bidirectional dependencies of battery measurement data can accurately estimate the SOC at different ambient temperatures. In particular, the mean absolute errors are as low as 1.07% at varying temperatures. The proposed method can improve the reliability and availability of battery management systems for monitoring the battery state under varying ambient conditions.
机译:基于深度学习技术的锂离子电池的荷电状态(SOC)估计已受到广泛关注。但是,大多数基于深度学习的方法都侧重于固定环境温度下的SOC估算,并且在现实世界中无法为电池状态提供有用的指示,因为电池在工作期间通常会经历变化的温度。在这项研究中,提出了一种具有双向长短期记忆(LSTM)的编解码器,用于估计不同温度条件下的SOC。这种端到端模型可以从测量序列中学习顺序信息,以表征电池动力学特性,以进行序列估计。将双向LSTM引入编码器/解码器后,该模型可以捕获过去和将来方向上测量序列的长期依赖性,从而提高估计精度。在动态负载曲线下,对公共电池数据集评估了该方法。通过实验数据集进行的验证表明,这种考虑电池测量数据的顺序上下文和双向依存关系的方法可以准确估算不同环境温度下的SOC。特别是,在变化的温度下,平均绝对误差低至1.07%。所提出的方法可以提高用于监视变化的环境条件下的电池状态的电池管理系统的可靠性和可用性。

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