The following publications are possibly variants of this publication:
- Life prediction model of lithium-ion batteries in the early-cycle stage based on convolutional long short-term memory with attention mechanismChen Zhang, Lifeng Wu. indin 2022: 456-462 [doi]
- Remaining useful life prediction of lithium-ion battery based on new health factor in long short-term memory networkZhen Zhang, Peishun Liu, Wenqiang Ge, Yiwan Lai. icdlt 2023: 103-108 [doi]
- Improved anti-noise adaptive long short-term memory neural network modeling for the robust remaining useful life prediction of lithium-ion batteriesShunli Wang, Yongcun Fan, Siyu Jin, Paul Takyi-Aninakwa, Carlos Fernandez. ress, 230:108920, 2023. [doi]
- Long Short-Term Memory Recurrent Neural Network for Remaining Useful Life Prediction of Lithium-Ion BatteriesYongzhi Zhang, Rui Xiong, Hongwen He, Michael G. Pecht. tvt, 67(7):5695-5705, 2018. [doi]
- Capacity Prediction and Validation of Lithium-Ion Batteries Based on Long Short-Term Memory Recurrent Neural NetworkZheng Chen 0008, Qiao Xue, Yitao Wu, Shiquan Shen, Yuanjian Zhang, Jiangwei Shen. access, 8:172783-172798, 2020. [doi]
- A Multiscale Entropy-Based Long Short Term Memory Model for Lithium-Ion Battery PrognosticsAlireza Namdari, Zhaojun Steven Li. icphm 2021: 1-6 [doi]
- The Lithium-ion Battery Nonlinear Aging Knee-Point Prediction Based on Sliding Window with Stacked Long Short-Term Memory Neural NetworkHeze You, Jiangong Zhu, Xueyuan Wang, Bo Jiang, Hao Sun, Xuezhe Wei, Guangshuai Han, Haifeng Dai. ivs 2022: 206-211 [doi]
- Transfer Learning With Long Short-Term Memory Network for State-of-Health Prediction of Lithium-Ion BatteriesYandan Tan, Guangcai Zhao. tie, 67(10):8723-8731, 2020. [doi]
- Fast capacity prediction of lithium-ion batteries using aging mechanism-informed bidirectional long short-term memory networkXiaodong Xu, Shengjin Tang, Xuebing Han, Languang Lu, Yu Wu, Chuanqiang Yu, Xiaoyan Sun, Jian Xie, Xuning Feng, Minggao Ouyang. ress, 234:109185, June 2023. [doi]