Remaining useful life prediction of lithium battery based on ACNN-Mogrifier LSTM-MMD

被引:16
作者
Li, Zihan [1 ]
Li, Ai [1 ]
Bai, Fang [2 ]
Zuo, Hongfu [3 ]
Zhang, Ying [1 ,3 ]
机构
[1] Nanjing Forestry Univ, Coll Automobile & Traff Engn, Nanjing 210037, Peoples R China
[2] Nanjing Res Inst Elect Engn, Nanjing 210023, Peoples R China
[3] Nanjing Univ Aeronaut & Astronaut, Coll Civil Aviat, Nanjing 211106, Peoples R China
基金
中国国家自然科学基金;
关键词
lithium battery life prediction; attention mechanism; convolutional neural network; Mogrifier LSTM; transfer learning; NETWORK;
D O I
10.1088/1361-6501/ad006d
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Predicting the remaining useful life (RUL) of lithium batteries is crucial for predicting battery failure and health management. Accurately estimating the RUL allows for timely maintenance and replacement of batteries that pose safety risks. To enhance the safety and reliability of lithium battery operations, this paper proposes a lithium battery life prediction model, attention mechanism-convolutional neural network (ACNN)-Mogrifier long and short-term memory network (LSTM)-maximum mean discrepancy (MMD), based on ACNN, Mogrifier LSTM, and MMD Feature Transfer Learning. Firstly, the capacity degradation data from historical life experiments of lithium batteries in both source and target domains are extracted. The whale optimization algorithm (WOA) is employed to optimize the parameters of variational modal decomposition, enabling the decomposition of the historical capacity degradation data into multiple intrinsic mode functions (IMFs) components. Secondly, highly correlated IMF components are identified using the Pearson correlation coefficient (Pearson) to reconstruct the capacity sequence, which characterizes the capacity degradation information of the lithium batteries. These reconstructed sequences are inputs to the ACNN model to extract features from the capacity degradation data. The extracted features are then utilized to compute MMD values, quantifying the distribution differences between the two domains. The Mogrifier LSTM neural network estimates the capacity values of the source and target domains and calculates the loss functions by comparing them to the actual capacity values. These loss functions, along with the computed MMD values, are combined to obtain the combined loss function of the model. Finally, the ACNN-Mogrifier LSTM-MMD is applied to the target domain data to formulate the lithium battery RUL prediction model. The effectiveness of the proposed method is validated using CACLE and NASA lithium battery datasets, The experimental results demonstrate that the predicted error of the RUL for the B5 battery is less than 6% for mean absolute percentage error (MAPE) and less than 1 for RULError . Similarly, the RUL prediction error for the B6 battery is below 10% for MAPE and less than 1 for RULError . This indicates higher accuracy compared to other prediction methods, along with improved robustness and practicality.
引用
收藏
页数:16
相关论文
共 50 条
[31]   Remaining Useful Life Prediction of Turbofan Engines Using CNN-LSTM-SAM Approach [J].
Li, Jie ;
Jia, Yuanjie ;
Niu, Mingbo ;
Zhu, Wei ;
Meng, Fanxi .
IEEE SENSORS JOURNAL, 2023, 23 (09) :10241-10251
[32]   Deep residual LSTM with domain-invariance for remaining useful life prediction across domains [J].
Fu, Song ;
Zhang, Yongjian ;
Lin, Lin ;
Zhao, Minghang ;
Zhong, Shi-sheng .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2021, 216
[33]   Application of state of health estimation and remaining useful life prediction for lithium-ion batteries based on AT-CNN-BiLSTM [J].
Zhao, Feng-Ming ;
Gao, De-Xin ;
Cheng, Yuan-Ming ;
Yang, Qing .
SCIENTIFIC REPORTS, 2024, 14 (01)
[34]   State of health and remaining useful life estimation of lithium-ion battery based on parallel deep learning methods [J].
Zhu, Sichen ;
Li, Chaoran ;
Ruan, Peng ;
Zhou, Shoubin ;
Li, Jianke ;
Luo, Shan ;
Li, Menghan ;
Zhang, Qiang .
INTERNATIONAL JOURNAL OF ELECTROCHEMICAL SCIENCE, 2025, 20 (05)
[35]   A data-driven prediction model for the remaining useful life prediction of lithium-ion batteries [J].
Feng, Juqiang ;
Cai, Feng ;
Li, Huachen ;
Huang, Kaifeng ;
Yin, Hao .
PROCESS SAFETY AND ENVIRONMENTAL PROTECTION, 2023, 180 :601-615
[36]   Remaining useful life prediction based on denoising technique and deep neural network for lithium-ion capacitors [J].
Yang, Hao ;
Wang, Penglei ;
An, Yabin ;
Shi, Changli ;
Sun, Xianzhong ;
Wang, Kai ;
Zhang, Xiong ;
Wei, Tongzhen ;
Ma, Yanwei .
ETRANSPORTATION, 2020, 5
[37]   An enhanced CNN-LSTM remaining useful life prediction model for aircraft engine with attention mechanism [J].
Li, Hao ;
Wang, Zhuojian ;
Li, Zhe .
PEERJ COMPUTER SCIENCE, 2022, 8
[38]   Remaining useful life prediction by degradation distribution transport health indicator and consolidated memory stabilized LSTM [J].
Zhu, Ting ;
Chen, Zhen ;
Zhou, Di ;
Chen, Zhaoxiang ;
Pan, Ershun .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2025, 236
[39]   Remaining Useful Life Prediction for Bearings Based on a Gated Recurrent Unit [J].
Que, Zijun ;
Jin, Xiaohang ;
Xu, Zhengguo .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70
[40]   Prediction of remaining useful life of turbofan engine based on optimized model [J].
Liu, Yuefeng ;
Zhang, Xiaoyan ;
Guo, Wei ;
Bian, Haodong ;
He, Yingjie ;
Liu, Zhen .
2021 IEEE 20TH INTERNATIONAL CONFERENCE ON TRUST, SECURITY AND PRIVACY IN COMPUTING AND COMMUNICATIONS (TRUSTCOM 2021), 2021, :1473-1477