학술논문

State-of-Health Estimation of Li-Ion Batteries Using Semiparametric Adaptive Transfer Learning
Document Type
Periodical
Source
IEEE Transactions on Transportation Electrification IEEE Trans. Transp. Electrific. Transportation Electrification, IEEE Transactions on. 10(1):1080-1088 Mar, 2024
Subject
Transportation
Aerospace
Components, Circuits, Devices and Systems
Power, Energy and Industry Applications
Batteries
Task analysis
Estimation
Data models
Transfer learning
Adaptation models
Aging
Adaptive transfer learning
Gaussian process regression (GPR)
lithium-ion battery (LIB)
state of health (SoH)
Language
ISSN
2332-7782
2372-2088
Abstract
For lithium-ion batteries (LIBs), precise state-of-health (SoH) estimation can provide direction for reasonable use, minimize battery failure rates, and extend battery life. Data-driven methods are promising for SoH estimation, since they work effectively without requiring human interaction and have great nonlinear prediction capabilities. The majority of studies also found that the training data were sufficient. However, in real-world contexts, data collection is frequently time-consuming and expensive. This article suggests using transfer learning to make the model less dependent on data for tracking battery SoH. Many approaches assume training and testing data have the same distribution. Due to distribution mismatch, a model that works for one dataset may not for another. We propose an adaptive transfer learning technique relying on Gaussian processes regression (AT-GPR) in this research. Automatically evaluating source-to-target task similarity can construct learning systems. Bayesian semiparametric transfer kernel proposed to learn target task model. Battery cyclic aging data from two publicly available datasets in various working environments are considered to validate the suggested method. The experiments show that AT-GPR generates reliable prediction results; however, only 20% of the overall dataset is made up of training data.