Izenburua
Li-ion Battery State-of-Charge estimation algorithm with CNN-LSTM and Transfer Learning using synthetic training dataBeste instituzio
IkerlanBertsioa
Postprinta
Eskubideak
© 2022 The AuthorsSarbidea
Sarbide irekiaNon argitaratua
35th International Electric Vehicle Symposium & Exhibition Gako-hitzak
Machine Learning
Transfer Learning
lithium-ion batteries
State-of-Charge ... [+]
Transfer Learning
lithium-ion batteries
State-of-Charge ... [+]
Machine Learning
Transfer Learning
lithium-ion batteries
State-of-Charge
Artificial Neural Network [-]
Transfer Learning
lithium-ion batteries
State-of-Charge
Artificial Neural Network [-]
Laburpena
The development of State-of-Charge (SoC) algorithms for Li-ion batteries involves carrying out different laboratory tests with the money and time that this entails. Furthermore, such laboratory labour ... [+]
The development of State-of-Charge (SoC) algorithms for Li-ion batteries involves carrying out different laboratory tests with the money and time that this entails. Furthermore, such laboratory labours must typically be repeated for each new Li-ion cell reference. In order to minimise this issue, this work proposes a new approach for developing SoC algorithms, using a Recurrent Neural Network in combination with a Transfer Learning method. The latter technique will make possible to take advantage of the data generated for previously tested cell references and use it for the development of a SoC estimation algorithm for a new cell reference. This work provides a proof-of-concept for the proposed approach, using synthetic data generated from electrochemical models, which describes the behaviour of different Li-ion cell references. [-]