A Comparison of Baseline Models and a Transformer Network for SOC Prediction in Lithium-Ion Batteries
- URL: http://arxiv.org/abs/2410.17049v1
- Date: Tue, 22 Oct 2024 14:27:43 GMT
- Title: A Comparison of Baseline Models and a Transformer Network for SOC Prediction in Lithium-Ion Batteries
- Authors: Hadeel Aboueidah, Abdulrahman Altahhan,
- Abstract summary: The ability of a battery management system to accurately estimate the state of charge can help alleviate this problem.
The paper compares different neural network-based models and common regression models for SOC estimation.
Results of various experiments conducted on data obtained from natural driving cycles of the BMW i3 battery show that the decision tree outperformed all other models.
- Score: 0.0
- License:
- Abstract: Accurately predicting the state of charge of Lithium-ion batteries is essential to the performance of battery management systems of electric vehicles. One of the main reasons for the slow global adoption of electric cars is driving range anxiety. The ability of a battery management system to accurately estimate the state of charge can help alleviate this problem. In this paper, a comparison between data-driven state-of-charge estimation methods is conducted. The paper compares different neural network-based models and common regression models for SOC estimation. These models include several ablated transformer networks, a neural network, a lasso regression model, a linear regression model and a decision tree. Results of various experiments conducted on data obtained from natural driving cycles of the BMW i3 battery show that the decision tree outperformed all other models including the more complex transformer network with self-attention and positional encoding.
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