Towards a State of Health Definition of Lithium Batteries through Electrochemical Impedance Spectroscopy
Abstract
:1. Introduction
- Time domain-based methods, in which a pulse current is used to evaluate the IR value like, for example, in [37], which investigates the battery IRs with current pulses at different SOC values in the range between 90% and 10% for a cycle and calendar life test.
- Frequency domain-based methods, in which EIS measurements at different scan frequencies are used to obtain an impedance spectrum and to estimate its variation with the aging of the cells. For instance, in [38,39,40], these methods are used to construct a dataset for Machine Learning-based battery prognostic techniques or aging modeling of different Lithium-ion cells’ technologies.
2. Materials and Methods
2.1. Device under Test (DUT)
2.2. Testing Procedure
- The first battery is discharged using a fast Constant Current profile at a 3C-rate (i.e., 7.5 A current).
- The second battery is discharged using a nominal Constant Current at a 1C-rate (i.e., 2.5 A current).
2.3. Experimental Setup
- A Laboratory Battery Test System (LBT 5V-30A) by Arbin (Arbin Instruments, College Station, TX, USA): a bi-directional power supply capable of charging and discharging simultaneously and, with different methodologies, up to 16 channels. The system can collect data with a maximum log frequency of 100 Hz and a resolution of 24 bits. The maximum current and voltage rates allowed are 30 A and 5 V, respectively.
- A Gamry Interface 5000E EIS instrument (Gamry Instruments, Warminster, PA, USA): it can perform EIS measurements in a range between 10 μHz and 100 kHz when integrated with the LBT system.
- A 21084HC Datalogger by Arbin (Arbin Instruments, College Station, TX, USA): it is connected to the external case of the batteries with T-type thermocouples. This has the aim of monitoring the overheating of the cells, in order to avoid the temperature increasing above the safety thresholds.
2.4. Equivalent Circuit Model Used
- A resistance, R0, to indicate the DC IR of the battery.
- An RL element to represent the Ohmic-Inductive behavior at high-frequency.
- Two RC elements to describe the different effects of Charge Transfer Losses and SEI degradation in the intermediate frequencies that generally generate one or two arches in impedance spectra, depending on the chemistry and SOC of the battery.
- A Warburg element, modeled as , that describes a linear trend at lower frequencies, due to diffusion mechanisms.
3. Results
3.1. Impedance Spectrum Analysis
- After 150 cycles, the maximum module variation is 1.89 mΩ for the first cell and 1.75 mΩ for the second one.
- At the end of the test, the maximum variation ranges are 9.71 mΩ and 14.38 mΩ, respectively.
3.2. Discharge Capacity vs. Internal Resistance
3.3. Differences in Each Region’s Trend at Different SOH Conditions
- New cell condition.
- Minimum Impedance Condition ().
- 80% SOH condition, the most common definition of End Of Life (EOL) conditions derived from automotive standards.
- 70% SOH condition, which is a valid alternative for the EOL in alternative fields.
- End of the test (i.e., 350 cycles, which represents approximately 50% SOH).
- In the Warburg zone, the linear trend’s slope decreases in a monotonic way for both the cells tested. The total percentage reduction results equal to 13.32%, for the fast discharged battery and 28.24%, for the cell aged under nominal conditions. It is important to emphasize that the most significant decrease in the diffusion coefficient is collocated in the portion of the cells’ life between 70% SOH and the end of the test.
- The mid-frequency (MF) arc’s size follows the behavior of the impedance, with a decreasing trend until the condition, to then increase with the rest of the cycles. The more significant variations in the central arc are seen for the 1C-rate discharged battery that passes from the 5.5633 mΩ width at the initial condition to the value of 10.0368 mΩ at the end of the test.
- For the high-frequency (HF) region, it is possible to notice a different progression in linear trends’ slopes for the two batteries. In fact, while for the second battery, the variations in the slope follow the impedance behavior, the other cell exhibits a decreasing progression. This is probably due to the higher impedance values at the high frequency shown by the first cell.
Condition | IR [mΩ] | Warburg Zone Slope | MF Arc Width [mΩ] | HF Zone Slope |
---|---|---|---|---|
New Cell | 42.7 | 0.9433 | 4.7744 | −3.6568 |
42.4 | 0.9214 | 4.7452 | −3.6688 | |
80% SOH | 43.9 | 0.9163 | 4.9993 | −3.6369 |
70% SOH | 44.8 | 0.8952 | 5.4978 | −3.6262 |
End of Test | 47.5 | 0.8176 | 7.1494 | −3.5999 |
Condition | IR [mΩ] | Warburg Zone Slope | MF Arc Width [mΩ] | HF Zone Slope |
---|---|---|---|---|
New Cell | 45.9 | 1.0847 | 5.5633 | −3.9735 |
Zmin | 40.2 | 0.9773 | 4.6964 | −3.9635 |
80% SOH | 41.1 | 0.9213 | 6.3300 | −4.1198 |
70% SOH | 43.7 | 0.8763 | 7.8592 | −4.2398 |
End of Test | 45.9 | 0.7784 | 10.0368 | −4.3426 |
4. Discussion
5. Conclusions
- The cycle aging of the battery affects the various regions of the impedance spectrum differently, with more significant variations visible on the mid-frequency arc and the low-frequency linear zone.
- A quicker aging impact caused by a faster discharge profile of the cell has been discovered in the “first life stage” (until 80% SOH is reached) of a Li–Mn battery, with a higher overall impedance and an approximately linear capacity drop.
- Under nominal discharge conditions, a sensible change in the degradation trend in the “second life phase” (after 80% SOH threshold) has been discovered, with higher impacts on the mid-frequency degradation mechanisms and on the reduction in the diffusion coefficient in the Warburg region.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Discharge Rate | Discharge Capacity Function Slope [Ah/Cycle] | |
---|---|---|
3C-rate | −0.0033 | |
1C-rate | −0.0014 (until 150th cycle) | −0.0064 (150th–end) |
Discharge Rate | IR Function Slope [mΩ/Cycle] | |
3C-rate | −0.0182 (until 50th cycle) | 0.0199 (50th–end) |
1C-rate | −0.0457 (until 80th cycle) | 0.0282 (80th–end) |
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Patrizi, G.; Canzanella, F.; Ciani, L.; Catelani, M. Towards a State of Health Definition of Lithium Batteries through Electrochemical Impedance Spectroscopy. Electronics 2024, 13, 1438. https://doi.org/10.3390/electronics13081438
Patrizi G, Canzanella F, Ciani L, Catelani M. Towards a State of Health Definition of Lithium Batteries through Electrochemical Impedance Spectroscopy. Electronics. 2024; 13(8):1438. https://doi.org/10.3390/electronics13081438
Chicago/Turabian StylePatrizi, Gabriele, Fabio Canzanella, Lorenzo Ciani, and Marcantonio Catelani. 2024. "Towards a State of Health Definition of Lithium Batteries through Electrochemical Impedance Spectroscopy" Electronics 13, no. 8: 1438. https://doi.org/10.3390/electronics13081438
APA StylePatrizi, G., Canzanella, F., Ciani, L., & Catelani, M. (2024). Towards a State of Health Definition of Lithium Batteries through Electrochemical Impedance Spectroscopy. Electronics, 13(8), 1438. https://doi.org/10.3390/electronics13081438