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基于BiLSTM-Transformer的铅酸电池剩余容量预测
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作者 唐丽 魏冰凌 +1 位作者 王蕴敏 高鑫哲 《电池》 北大核心 2026年第1期142-148,共7页
通过超声波检测技术与深度学习模型的结合,实现对铅酸电池剩余容量的精确预测。选取变电站主要使用的4种铅酸电池作为研究对象,提出一种双向长短期记忆网络(BiLSTM)-Transformer混合深度学习模型。首先,利用超声波检测技术获取代表电池... 通过超声波检测技术与深度学习模型的结合,实现对铅酸电池剩余容量的精确预测。选取变电站主要使用的4种铅酸电池作为研究对象,提出一种双向长短期记忆网络(BiLSTM)-Transformer混合深度学习模型。首先,利用超声波检测技术获取代表电池容量的超声波信号特征,结合BiLSTM网络处理时间序列数据,捕捉电池状态数据的长期依赖关系,并通过Transformer模型的多头注意力机制提取全局特征,增强预测的准确性。实验结果显示,BiLSTM-Transformer模型的健康状态(SOH)预测误差均控制在0.3%内,相较于传统方法,该混合模型在预测精度和泛化能力上均有显著提升。 展开更多
关键词 铅酸电池 健康状态(SOH) 特征提取 超声波无损检测 bilstm-transformer模型
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Model-data Hybrid Driven SOC Estimation for Energy Storage Batteries Using AFF-RLS and BiLSTM-Transformer
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作者 Guangxue Wang Hongchun Shu +3 位作者 Botao Shi Jiannan Li Haoming Liu Shunguang Lei 《Protection and Control of Modern Power Systems》 2026年第2期89-106,共18页
Energy storage batteries operating under high levels of renewable energy integration face signifi-cant power fluctuations and frequent charge-discharge cycles,leading to substantial errors and uncertainties in state-o... Energy storage batteries operating under high levels of renewable energy integration face signifi-cant power fluctuations and frequent charge-discharge cycles,leading to substantial errors and uncertainties in state-of-charge(SOC)estimation at short time scales.To address this challenge,this paper proposes a novel SOC estimation method by integrating adaptive forgetting factor recursive least squares(AFF-RLS)with a data-driven hybrid architecture based on bidirectional long short-term memory(BiLSTM)and Transformer model.A second-order equivalent RC circuit model is con-structed,and AFF-RLS is employed for real-time identi-fication of model parameters,which are subsequently used as input features for the BiLSTM-Transformer model.The learning rate is dynamically adjusted based on error variation,and network parameters are optimized using the Adam algorithm.The method is validated using experimental data obtained from lead-carbon batteries,with its reliability and robustness verified through widely accepted performance metrics,including mean absolute error,mean absolute percentage error,root mean square error,and the coefficient of determination.Comparative experiments against convolutional neural network,Transformer,and LSTM-based models indicate that the proposed SOC estimation method consistently achieves lower estimation errors within 1.5%across varying state-of-health,demonstrating superior accuracy and robustness. 展开更多
关键词 Energy storage batteries state-of-charge estimation AFF-RLS bilstm-transformer adaptive learning rate state-of-health.
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