Multiscale Dual-path Feature Aggregation Network for Remaining Useful Life Prediction of Lithium-Ion Batteries
About
Targeted maintenance strategies, ensuring the dependability and safety of industrial machinery. However, current modeling techniques for assessing both local and global correlation of battery degradation sequences are inefficient and difficult to meet the needs in real-life applications. For this reason, we propose a novel deep learning architecture, multiscale dual-path feature aggregation network (MDFA-Net), for RUL prediction. MDFA-Net consists of dual-path networks, the first path network, multiscale feature network (MF-Net) that maintains the shallow information and avoids missing information, and the second path network is an encoder network (EC-Net) that captures the continuous trend of the sequences and retains deep details. Integrating both deep and shallow attributes effectively grasps both local and global patterns. Testing conducted with two publicly available Lithium-ion battery datasets reveals our approach surpasses existing top-tier methods in RUL forecasting, accurately mapping the capacity degradation trajectory.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| State of Health Prediction | NASA Li-ion Battery #06 | RMSE0.0374 | 19 | |
| RUL Forecasting | NASA Battery Dataset B0018 | E_RMSE0.0343 | 9 | |
| RUL Forecasting | NASA Battery Dataset Average | E_RMSE0.0333 | 9 | |
| RUL Forecasting | NASA Battery Dataset B0007 | E_RMSE0.0262 | 9 | |
| RUL Forecasting | NASA Battery Dataset B0005 | E_RMSE0.0352 | 9 | |
| RUL prediction | CALCE | R20.9828 | 7 |