Comparison of Lithium-Ion Battery Models for Simulating Storage Systems in Distributed Power Generation
Abstract
:1. Introduction
- As simple as possible;
- As accurately as necessary; and
- Easy to implement in an electronic circuit simulator.
- Which goals are achieved with the models?
- Which parameterization options are available?
- Which simulation environment is provided for implementation?
2. Overview of Battery Models
2.1. Mathematical and Electrochemical Models
2.2. Thermal Models
2.3. Electrical Models
2.3.1. Thevenin-Based Electrical Model
2.3.2. Rint Electrical Model
2.3.3. Runtime-Based Electrical Model
2.3.4. Impedance-Based Electrical Model
2.3.5. Shepherd’s Model
2.3.6. Generic Library Model
3. Case Study
3.1. Implementation of the Thevenin-Based Model
3.2. Implementation of the Rint Model
3.3. Implementation of the Shepherd’s Model
3.4. Implementation of the Generic Library Model
3.5. Model Validation
3.5.1. Predicting I–V Performance
3.5.2. Predicting SOC Performance
4. Discussion
5. Conclusions
Funding
Acknowledgments
Conflicts of Interest
References
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<100 kWh | 0.1–1 MWh | 1 MWh–1 GWh | |
---|---|---|---|
<1 h | lead-acid lithium-ion lithium-air | lead-acid lithium-ion lithium-sulphur | lead-acid lithium-ion |
<1 day | lead-acid lithium-ion vanadium-redox sodium-sulphur sodium-nickel-chloride lithium-sulphur | lead-acid lithium-ion vanadium-redox sodium-sulphur sodium-nickel-chloride zinc-air lithium-air | lead-acid vanadium-redox sodium-sulphur sodium-nickel-chloride |
>1 day | lead-acid lithium-ion vanadium-redox sodium-sulphur sodium-nickel-chloride zinc-air lithium-sulphur | vanadium-redox sodium-sulphur sodium-nickel-chloride | vanadium-redox |
Energy/Capacity | Nominal Voltage | Maximum Discharge Current/Power |
---|---|---|
/ |
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Hinz, H. Comparison of Lithium-Ion Battery Models for Simulating Storage Systems in Distributed Power Generation. Inventions 2019, 4, 41. https://doi.org/10.3390/inventions4030041
Hinz H. Comparison of Lithium-Ion Battery Models for Simulating Storage Systems in Distributed Power Generation. Inventions. 2019; 4(3):41. https://doi.org/10.3390/inventions4030041
Chicago/Turabian StyleHinz, Hartmut. 2019. "Comparison of Lithium-Ion Battery Models for Simulating Storage Systems in Distributed Power Generation" Inventions 4, no. 3: 41. https://doi.org/10.3390/inventions4030041
APA StyleHinz, H. (2019). Comparison of Lithium-Ion Battery Models for Simulating Storage Systems in Distributed Power Generation. Inventions, 4(3), 41. https://doi.org/10.3390/inventions4030041