Abstract
AbstractThe increased adoption of lithium-iron-phosphate batteries, in response to the need to reduce the battery manufacturing process’s dependence on scarce minerals and create a resilient and ethical supply chain, comes with many challenges. The design of an effective and high-performing battery management system (BMS) for such technology is one of those challenges. In this work, a physics-based model describing the two-phase transition operation of an iron-phosphate positive electrode—in a graphite anode battery—is integrated with a machine-learning model to capture the hysteresis and path-dependent behavior during transient operation. The machine-learning component of the proposed “hybrid” model is built upon the knowledge of the electrochemical internal states of the battery during charge and discharge operation over several driving profiles. The hybrid model is experimentally validated over 15 h of driving, and it is shown that the machine-learning component is responsible for a small percentage of the total battery behavior (i.e., it compensates for voltage hysteresis). The proposed modeling strategy can be used for battery performance analysis, synthetic data generation, and the development of reduced-order models for BMS design.
Publisher
Springer Science and Business Media LLC
Reference44 articles.
1. Frith, J. EV Battery Prices Risk Reversing Downward Trend as Metals Surge. (Bloomberg, 2021).
2. Kumar, V. Lithium Ion Battery Supply Chain Technology Development and Investment Opportunities. (Benchmark Minerval Intelligence, 2020).
3. Padhi, A. K., Nanjundaswamy, K. S. & Goodenough, J. B. Phospho-olivines as positive-electrode materials for rechargeable lithium batteries. J. Electrochem. Soc. 144, 1188 (1997).
4. Li, X., Xiao, M., Choe, S. Y. & Joe, W. T. Modeling and analysis of LiFePO4/carbon battery considering two-phase transition during galvanostatic charging/discharging. Electrochim. Acta 155, 447–457 (2015).
5. Niarchos, N. The Dark Side of Congo’s Cobalt Rush (The New Yorker, 2021).
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