Identifying degradation patterns of lithium ion batteries from impedance spectroscopy using machine learning.
Yunwei ZhangQiaochu TangYao ZhangJiabin WangUlrich StimmingAlpha A LeePublished in: Nature communications (2020)
Forecasting the state of health and remaining useful life of Li-ion batteries is an unsolved challenge that limits technologies such as consumer electronics and electric vehicles. Here, we build an accurate battery forecasting system by combining electrochemical impedance spectroscopy (EIS)-a real-time, non-invasive and information-rich measurement that is hitherto underused in battery diagnosis-with Gaussian process machine learning. Over 20,000 EIS spectra of commercial Li-ion batteries are collected at different states of health, states of charge and temperatures-the largest dataset to our knowledge of its kind. Our Gaussian process model takes the entire spectrum as input, without further feature engineering, and automatically determines which spectral features predict degradation. Our model accurately predicts the remaining useful life, even without complete knowledge of past operating conditions of the battery. Our results demonstrate the value of EIS signals in battery management systems.
Keyphrases
- ion batteries
- solid state
- healthcare
- machine learning
- health information
- high resolution
- public health
- mental health
- single molecule
- dual energy
- gold nanoparticles
- deep learning
- optical coherence tomography
- social media
- artificial intelligence
- health promotion
- computed tomography
- magnetic resonance
- human health
- ionic liquid
- molecular dynamics
- contrast enhanced
- electron transfer