Online Estimation of Internal Short Circuit Resistance for Large-Format Lithium-Ion Batteries Combining a Reconstruction Method of Model-Predicted Voltage
Abstract
:1. Introduction
2. Related Works
2.1. Modeling of Normal and ISC Batteries
2.2. Fundamental of Online ISC Resistance Estimation
3. Proposed Online ISC Resistance Estimation Method
3.1. SOC Estimation Method for the ISC Battery
- Initialization: Set the process noise variance , measurement noise variance , particle population size ; randomly generate as initial particles () and set their initial weights .
- Recursively update weights of particles according to Equations (5)–(8).
- Resampling of particles: particle degradation is a common phenomenon of the PF, resulting in a decrease in the number of effective particles. It can be evaluated according to the following indicator:
- Recursively update system state estimation result: update the system state estimation result according to the Monte Carlo integration, written as
3.2. Reconstruction Method of the Model-Predicted Voltage of the ISC Battery
3.3. Online SOC and ISC Resistance Co-estimation Method
- Initialization: Set the value of and initialize PF, as introduced in Section 3.1.
- Recursively update the operation data of the battery pack, including the measured load current and voltage of each battery . Meanwhile, input into the normal battery model to obtain the model-predicted voltage of normal batteries ().
- Update the RMPV of the ISC battery according to Equation (13).
- Update through the PF-based SOC estimation process for the ISC battery as introduced in Section 3.1. Importantly, in this step, the measured voltage of the ISC battery is replaced with the RMPV as the system output variable, namely making .
- Update and in turn according to Equation (3), respectively.
- Although noises will be eliminated by the PF to a great certain, the residual noises induced in whose calculation process contains a backward differential for will become significant relative to the slight true value. Thus, needs to be further filtered to obtain the final ISC resistance estimation result. The Kalman filter (KF) is adopted in this paper, which has an excellent filtering ability for white noise [21]. The KF based filtering process for can be achieved according to Equations (14)–(18).
- Update the ISC resistance estimation result by substituting and into Equation (3).
4. Data Acquisition
4.1. Experiment Details
4.2. Results Discussion
5. Method Validation
5.1. Validation of RMPV
5.2. Validation of SOC and ISC resistance Estimation Accuracy
5.3. Validation of Tracking Capability to ISC Resistance Variation
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Statistics | 100 Ω-ER Test | 10 Ω-ER Test | ||
---|---|---|---|---|
RMPV-Based | MV-Based | RMPV-Based | MV-Based | |
MAE (%) | 0.20 | 1.01 | 0.21 | 1.00 |
MAAE (%) | 0.37 | 2.86 | 0.69 | 2.12 |
Statistics | 100 Ω-ER Test | 10 Ω-ER Test | ||
---|---|---|---|---|
RMPV-Based | MV-Based | RMPV-Based | MV-Based | |
MAE (Ω) | 18.47 | 80.94 | 0.65 | 7.74 |
MAAE (Ω) | 39.96 | 84.92 | 2.00 | 82.28 |
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Chen, A.; Zhang, W.; Sun, B.; Li, H.; Fan, X. Online Estimation of Internal Short Circuit Resistance for Large-Format Lithium-Ion Batteries Combining a Reconstruction Method of Model-Predicted Voltage. World Electr. Veh. J. 2022, 13, 170. https://doi.org/10.3390/wevj13090170
Chen A, Zhang W, Sun B, Li H, Fan X. Online Estimation of Internal Short Circuit Resistance for Large-Format Lithium-Ion Batteries Combining a Reconstruction Method of Model-Predicted Voltage. World Electric Vehicle Journal. 2022; 13(9):170. https://doi.org/10.3390/wevj13090170
Chicago/Turabian StyleChen, Anci, Weige Zhang, Bingxiang Sun, Hao Li, and Xinyuan Fan. 2022. "Online Estimation of Internal Short Circuit Resistance for Large-Format Lithium-Ion Batteries Combining a Reconstruction Method of Model-Predicted Voltage" World Electric Vehicle Journal 13, no. 9: 170. https://doi.org/10.3390/wevj13090170
APA StyleChen, A., Zhang, W., Sun, B., Li, H., & Fan, X. (2022). Online Estimation of Internal Short Circuit Resistance for Large-Format Lithium-Ion Batteries Combining a Reconstruction Method of Model-Predicted Voltage. World Electric Vehicle Journal, 13(9), 170. https://doi.org/10.3390/wevj13090170