Experimentally Validated Coulomb Counting Method for Battery State-of-Charge Estimation under Variable Current Profiles
Abstract
:1. Introduction
2. Battery Management System
3. Coulomb Counting Method
4. Generic Battery Model
- ✓
- The charge model (i* < 0)
- ✓
- The discharge model (i* > 0)
- ✓
- Limitations
- -
- The minimum no-load battery voltage is 0 V and the maximum battery voltage is equal to 2 × .
- -
- The minimum capacity of the battery is 0 Ah and the maximum capacity is .
- ✓
- Assumptions
- -
- The internal resistance is supposed as a constant value during the charge and the discharge cycles and does not vary with the amplitude of the current.
- -
- The parameters of the model are deduced from discharge characteristics and assumed to be the same for charging.
- -
- The capacity of the battery does not change with the amplitude of the current (no Peukert effect).
- -
- The model does not take the temperature into account.
- -
- The self-discharge of the battery is not represented. It can be represented by adding a large resistance in parallel with the battery terminals.
- -
- The battery has no memory effect.
5. Experimental Method and Description
- Lead–acid battery
- Clamp meter
- DC power supply
- Variable resistor (handmade)
- -
- Discharging with constant C-rates: a variable resistor is connected (for adjustment to variable C-rates, that is to reach discharge current at 0.25 C, 0.17 C, and 0.09 C respectively) with the battery. Consequently, the voltage and the discharge current are measured after every 5 min by using a clamp meter. After 3.05, 5.41, and 10.25 h, respectively (corresponding to the associated C-rate), it reaches the lower permissible limit of discharge voltage (cut-off voltage) 10.10, 10.37, and 10.39 V each. Afterwards, the discharge resistance is disconnected. The discharge resistance equaled Rdisch = [0.96–1] Ω, [1.42–1.50] Ω, and [2.69–3] Ω, with the ambient temperature T = 26.7°, 28.6°, and 26.1 °C.
- -
- Discharging with variable C-rates: the variable resistor is connected (for adjustment to variable C-rates discharge current 0.23 C, 0.115 C, and 0.057 C, respectively. These values of C-rates correspond to having three resistances connected in parallel. The value of each resistance is 3.225 Ω. During the first period, the discharge is performed at 0.23 C until 1.11 h. After that, the first resistance is disconnected, then the discharge continues at 0.115 C until 4.44 h. At this point, the second resistance is also disconnected. The discharge is pursued then with 0.057 C until 7.23 h, and at this moment, even the last resistance is disconnected, and the experiment is stopped. The battery voltage and discharging current are measured every 5 min with a clamp meter during the whole experimental session. After 7.23 h, the end of discharge is reached (cut-off voltage) which is equal to 10.39 V. At this point, the discharge resistance is completely disconnected. It is also worth mentioning that the ambient temperature equaled T = 27.1 °C (approx.) during the experimental session.
6. Results and Discussion
7. Conclusions and Perspectives
Author Contributions
Funding
Conflicts of Interest
Abbreviations
SOC | State of charge |
Ah | Ampere hour |
OCV | Open circuit voltage |
AC | Alternative current |
SOH | State of health |
CC | Constant current |
CV | Constant voltage |
CN | Nominal capacity of the battery |
Coulomb efficiency | |
I(τ) | The current versus time (negative during charge and positive during discharge) |
Vbatt | The battery voltage (V) |
E0 | The constant battery voltage (V) |
K | The polarization constant (V/(Ah)) or polarization resistance (Ω) |
Q | The battery capacity (Ah) |
=∫Idt: actual battery charge (Ah) | |
A | The exponential voltage (V) |
B | The exponential capacity (Ah) − 1 |
R | The internal resistance (Ω) |
I | The battery current (A) |
i* | The filtered current (A) |
Idis | The value of the current of discharge |
SOC0 | Initial state of charge |
SOCmin | Minimum state of charge |
SOCexp | Experimental state of charge |
SOCth | Theoretical state of charge |
Vchint | Initial charge voltage |
Vchend | End charge voltage |
Tchsum | Simulation charge time |
Vdisint | Initial discharge voltage |
Vdisend | End discharge voltage |
Tdissum | Simulation discharge time |
VRLA | Valve regulated lead–acid battery |
BMS | Battery management system |
VCU | Vehicle control unit |
SOP | State of power |
RUL | Remaining useful life |
DOD | Depth of discharge |
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Methodology | Benefits | Drawbacks | Precision | Sturdiness |
---|---|---|---|---|
Method based on characteristic param |
|
| poor | good |
Ampere-hour integral approach |
|
| average | poor |
Model-driven estimation approach |
|
| excellent | excellent |
Method of data-driven estimation |
|
| excellent | poor |
C-Rates of Discharge | 0.25 C | 0.17 C | 0.09 C | Different C-Rates |
---|---|---|---|---|
Nominal voltage (V) | 12 | 12 | 12 | 12 |
Rated capacity (Ah) | 52 | 52 | 52 | 52 |
Initial state-of-charge (%) | 100 | 100 | 100 | 100 |
Max. capacity (Ah) | 40.1999 | 53.8 | 47.5 | 47.5 |
Fully charged voltage (V) | 12.7 | 12.8 | 12.9 | 12.9 |
Nominal discharge current (A) | 13 | 8.84 | 4.68 | 12 |
Internal resistance (Ω) | 0.0055 | 0.0055 | 0.0055 | 0.0055 |
Capacity (Ah) @ nominal voltage | 38.2 | 44.80 | 46 | 46 |
Exp. zone [Voltage(V), capacity(Ah)] | [12.7, 2.5] | [12.8, 1.9] | [12.9, 2.225] | [12.9, 2.225] |
Cells per unit | 6 |
Voltage per unit | 12 V |
Capacity | 52 Ah @ 20 h-rate to 1.75 V per cell @25 °C (77 °F) |
Weight | Approx. 18 Kg (39.68 lbs.) |
Maximum discharge current | 500 A (5 s) |
Internal resistance | Approx. 5.5 mΩ |
Operating temperature range | Discharge: −15 °C~50 °C (5 °F~122 °F) Charge: −15 °C~40 °C (5 °F~104 °F) Storage: −15 °C~40 °C (5 °F~104 °F) |
Float charging voltage | 13.5 to 13.8 VDC/unit Average at 25 °C (77 °F) |
Maximum charging current limit | 15.6 A |
Equalization and cycle service | 14.4 to 15.0 VDC/unit Average at 25 °C (77 °F) |
Self discharge | Batteries can be stored for 6 months at 25 °C (77 °F). |
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Zine, B.; Bia, H.; Benmouna, A.; Becherif, M.; Iqbal, M. Experimentally Validated Coulomb Counting Method for Battery State-of-Charge Estimation under Variable Current Profiles. Energies 2022, 15, 8172. https://doi.org/10.3390/en15218172
Zine B, Bia H, Benmouna A, Becherif M, Iqbal M. Experimentally Validated Coulomb Counting Method for Battery State-of-Charge Estimation under Variable Current Profiles. Energies. 2022; 15(21):8172. https://doi.org/10.3390/en15218172
Chicago/Turabian StyleZine, Bachir, Haithem Bia, Amel Benmouna, Mohamed Becherif, and Mehroze Iqbal. 2022. "Experimentally Validated Coulomb Counting Method for Battery State-of-Charge Estimation under Variable Current Profiles" Energies 15, no. 21: 8172. https://doi.org/10.3390/en15218172
APA StyleZine, B., Bia, H., Benmouna, A., Becherif, M., & Iqbal, M. (2022). Experimentally Validated Coulomb Counting Method for Battery State-of-Charge Estimation under Variable Current Profiles. Energies, 15(21), 8172. https://doi.org/10.3390/en15218172