Abstract
AbstractPhotovoltaics supply a growing share of power to the electric grid worldwide. To mitigate resource intermittency issues, these systems are increasingly being paired with electrochemical energy storage devices, e.g., Li-ion batteries, for which ensuring long and safe operation is critical. However, in this operation framework, secondary Li-ion batteries undergo sporadic usage, which prevents the application of standard diagnostic methods. Here, we propose a diagnostic methodology that uses machine learning algorithms trained directly on data obtained from photovoltaic charging of Li-ion batteries. The training is carried out on synthetic voltage data at various degradation conditions calculated from clear sky model irradiance data. The method is validated using synthetic voltage responses calculated from plane of array irradiance observations for a photovoltaic system located in Maui, HI, USA. We report an average root mean square error of 2.75% obtained for more than 10,000 different degradation paths with 25% or less degradation on the Li-ion cells.
Publisher
Springer Science and Business Media LLC
Subject
General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary
Reference54 articles.
1. Mackenzie/SEIA, W. US Solar Market Insight; Wood Mackenzie/SEIA (2021).
2. Bolinger, M., Seel, J., Warner, C. & Robson, D. Utility-Scale Solar, 2021 Edition. (Lawrence Berkeley National Laboratory, 2021).
3. EIA. Battery Storage in the United States: An Update on Market Trends (2021).
4. Che, Y., Hu, X., Lin, X., Guo, J. & Teodorescu, R. Health prognostics for lithium-ion batteries: mechanisms, methods, and prospects. Energy Env. Sci. https://doi.org/10.1039/d2ee03019e (2023).
5. von Bülow, F. & Meisen, T. A review on methods for state of health forecasting of lithium-ion batteries applicable in real-world operational conditions. J. Energy Storage https://doi.org/10.1016/j.est.2022.105978 (2023).
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