基于充电曲线数据的混合CNN-LSTM电池剩余使用寿命预测

Huzaifi Hafizhahullah, A. R. Yuliani, H. Pardede, A. Ramdan, Vicky Zilvan, Dikdik Krisnandi, Jimmy Kadar
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引用次数: 0

摘要

电池作为一次能源设备持续使用会导致容量退化。准确预测电池剩余使用寿命(RUL)对于避免系统功能故障是必要的。本研究提出了基于卷积神经网络(CNN)和长短期记忆(LSTM)混合深度模型的数据驱动电池RUL预测方法。利用CNN和LSTM对多个可测数据并行提取特征。CNN提取多通道充电曲线特征,LSTM提取放电曲线历史容量数据特征,这些特征与时间相关。比较了单模型LSTM和混合模型CNN-LSTM的误差指标。结果表明,在平均绝对百分比误差情况下,混合模型的性能优于单一模型,最高可达37% ~ 61%。
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A Hybrid CNN-LSTM for Battery Remaining Useful Life Prediction with Charging Profiles Data
The capacity degradation of battery can occur due to continuously used as primary energy source equipment. An accurate prediction of battery remaining useful life (RUL) is necessary to avoid system functionality failure. This study proposes battery RUL prediction using data-driven method based on a hybrid deep model of Convolutional Neural Networks (CNN) and Long-Short Term Memory (LSTM). CNN and LSTM are used to extract features from multiple measurable data in parallel. CNN extracts features of multi-channel charging profiles, whereas LSTM extracts features of historical capacity data of discharging profiles which related to time dependency. An error index is compared between single model LSTM and hybrid model CNN-LSTM. The result indicates that the proposed hybrid model outperforms the single model by up to 37%-61% in case of mean absolute percentage error.
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