Digital Twin-Supported Battery State Estimation Based on TCN-LSTM Neural Networks and Transfer Learning[J]. 中国电机工程学会电力与能源系统学报(英文), 2025,11(2):567-579.
Kai Zhao, Ying Liu, Yue Zhou, et al. Digital Twin-Supported Battery State Estimation Based on TCN-LSTM Neural Networks and Transfer Learning[J]. Csee journal of power and energy systems, 2025, 11(2): 567-579.
Digital Twin-Supported Battery State Estimation Based on TCN-LSTM Neural Networks and Transfer Learning[J]. 中国电机工程学会电力与能源系统学报(英文), 2025,11(2):567-579. DOI: 10.17775/CSEEJPES.2024.00900.
Kai Zhao, Ying Liu, Yue Zhou, et al. Digital Twin-Supported Battery State Estimation Based on TCN-LSTM Neural Networks and Transfer Learning[J]. Csee journal of power and energy systems, 2025, 11(2): 567-579. DOI: 10.17775/CSEEJPES.2024.00900.
Digital Twin-Supported Battery State Estimation Based on TCN-LSTM Neural Networks and Transfer Learning
Estimating battery states such as State of Charge (SOC) and State of Health (SOH) is an essential component in developing energy storage technologies
which require accurate estimation of complex and nonlinear systems. A significant challenge is extracting pertinent spatial and temporal features from original battery data
which is crucial for efficient battery management systems. The emergence of digital twin (DT) technology offers a novel opportunity for performance monitoring and management of lithium-ion batteries
enhancing collaborative capacity among different battery state estimation techniques and enabling optimal operation of battery storage units. In this study
we propose a DT-supported battery state estimation method
in collaboration with the temporal convolutional network (TCN) and the long short-term memory (LSTM)
to address the challenge of feature extraction. Firstly
we introduce a 4-layer hierarchical DT to overcome computational and data storage limitations in conventional battery management systems. Secondly
we present an online algorithm
TCN-LSTM for battery state estimation. Compared to conventional methods
TCN-LSTM outperforms other cyclic networks in various sequence modelling tasks and exhibits reduced reliance on the initial state conditions of the battery. Our methodology employs transfer learning to dynamically adjust the neural network parameters based on fresh data
ensuring real-time updating and enhancing the DT's accuracy. Focusing on SOC
SOH and Remaining Useful Life (RUL) estimation
our model demonstrates exceptional results. When testing with 90 cycle data
the average root mean square error (RMSE) values for SOC
SOH
and RUL are 1.1 %
0.8%
and 0.9 % respectively
significantly outperforming traditional CNN's 2.2%
2.0% and 3.6% and others. These results un-equivocally demonstrate the contribution of the DT model to battery management
highlighting the outstanding robustness of our proposed method
showcasing consistent performance across various conditions and superior adaptability compared to other models.