LAPSE:2023.30025
Published Article
LAPSE:2023.30025
Learning to Calibrate Battery Models in Real-Time with Deep Reinforcement Learning
April 14, 2023
Abstract
Lithium-ion (Li-I) batteries have recently become pervasive and are used in many physical assets. For the effective management of the batteries, reliable predictions of the end-of-discharge (EOD) and end-of-life (EOL) are essential. Many detailed electrochemical models have been developed for the batteries. Their parameters are calibrated before they are taken into operation and are typically not re-calibrated during operation. However, the degradation of batteries increases the reality gap between the computational models and the physical systems and leads to inaccurate predictions of EOD/EOL. The current calibration approaches are either computationally expensive (model-based calibration) or require large amounts of ground truth data for degradation parameters (supervised data-driven calibration). This is often infeasible for many practical applications. In this paper, we introduce a reinforcement learning-based framework for reliably inferring calibration parameters of battery models in real time. Most importantly, the proposed methodology does not need any labeled data samples of observations and the ground truth parameters. The experimental results demonstrate that our framework is capable of inferring the model parameters in real time with better accuracy compared to approaches based on unscented Kalman filters. Furthermore, our results show better generalizability than supervised learning approaches even though our methodology does not rely on ground truth information during training.
Keywords
intelligent maintenance, lithium-ion batteries, model calibration, reinforcement learning
Suggested Citation
Unagar A, Tian Y, Chao MA, Fink O. Learning to Calibrate Battery Models in Real-Time with Deep Reinforcement Learning. (2023). LAPSE:2023.30025
Author Affiliations
Unagar A: ETH Zürich, Rämistrasse 101, 8092 Zürich, Switzerland [ORCID]
Tian Y: ETH Zürich, Rämistrasse 101, 8092 Zürich, Switzerland [ORCID]
Chao MA: ETH Zürich, Rämistrasse 101, 8092 Zürich, Switzerland [ORCID]
Fink O: ETH Zürich, Rämistrasse 101, 8092 Zürich, Switzerland [ORCID]
Journal Name
Energies
Volume
14
Issue
5
First Page
1361
Year
2021
Publication Date
2021-03-02
ISSN
1996-1073
Version Comments
Original Submission
Other Meta
PII: en14051361, Publication Type: Journal Article
Record Map
Published Article

LAPSE:2023.30025
This Record
External Link

https://doi.org/10.3390/en14051361
Publisher Version
Download
Files
Apr 14, 2023
Main Article
License
CC BY 4.0
Meta
Record Statistics
Record Views
147
Version History
[v1] (Original Submission)
Apr 14, 2023
 
Verified by curator on
Apr 14, 2023
This Version Number
v1
Citations
Most Recent
This Version
URL Here
https://psecommunity.org/LAPSE:2023.30025
 
Record Owner
Auto Uploader for LAPSE
Links to Related Works
Directly Related to This Work
Publisher Version