Research on the Optimal Charging Strategy for Li-Ion Batteries Based on Multi-Objective Optimization
Abstract
:1. Introduction
2. Li-Ion Battery Modeling and VMCC Simulation
2.1. Battery Equivalent Circuit Model
2.2. Battery Parameter Estimation
2.3. Battery Thermal Model
2.4. Simulation of the VMCC Charging Strategy
Algorithm 1. Pseudo code of the VMCC charging strategy. |
VMCC (n, k,,,,, , ).
2: charging step update: k = k + 1 3: SOC update: SOC(k) = SOC(k − 1) + 4: if thend 5: break 6: end if 7: battery parameters update: , 8: 9: charging time update: 10: charged capacity update: 11: polarization voltage update: 12: battery terminal voltage update: 13: energy loss update: 14: temperature update: 15: if then 16: stage number update: n = n + 1 17: if n + 1 > then 18: break 19: else 20: charging current update: 21: end if 22: end if 23: Output , and |
3. Experimental Setup and Battery Parameter Estimation
3.1. Experimental Setup
3.2. Battery Parameter Estimation
4. Multi-Object Optimization Problem Formulation
4.1. Problem Formulation
4.2. Constraint Conditions
5. MOPSO Based MCC Optimization
5.1. Multi-Object Optimization
- Step 1
- Particle initialization. An m-size population with random positions and zero velocities is generated. The position of the i-th particle is represented as and the velocity of the i-th particle is represented as , where n is the dimension of the search space.
- Step 2
- Evaluate the particles according to the simulation result of the MCC charging strategy.
- Step 3
- Store the nondominated particles in the repository (REP) and update the REP.
- Step 4
- Update the speed and velocity of each particle according to the following equations:To determine , the explored objectives are meshed with hypercubes, and a fitness value is assigned to the hypercubes containing more than one particle with the following function:Then is selected by applying a roulette-wheel selection.
- Step 5
- Convergence determination. Compare the average fitness value of the current particle swarm with the previous particle swarm; if the difference is less than the threshold value α, the search procedure is terminated.
- Step 6
- Repeat the steps from Step 2 to Step 5 until the best point is found or a fixed number of iterations has been reached.
5.2. Parameter Setting
5.3. Multi-Objective Decision Making
6. Results and Discussion
6.1. Impact of Stage Numbers
6.2. Impact of Cut-Off Voltage
6.3. Impact of Weight Factors
6.4. Experimental Comparison with the Traditional Charging Strategies
7. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Min, H.; Sun, W.; Li, X.; Guo, D.; Yu, Y.; Zhu, T.; Zhao, Z. Research on the Optimal Charging Strategy for Li-Ion Batteries Based on Multi-Objective Optimization. Energies 2017, 10, 709. https://doi.org/10.3390/en10050709
Min H, Sun W, Li X, Guo D, Yu Y, Zhu T, Zhao Z. Research on the Optimal Charging Strategy for Li-Ion Batteries Based on Multi-Objective Optimization. Energies. 2017; 10(5):709. https://doi.org/10.3390/en10050709
Chicago/Turabian StyleMin, Haitao, Weiyi Sun, Xinyong Li, Dongni Guo, Yuanbin Yu, Tao Zhu, and Zhongmin Zhao. 2017. "Research on the Optimal Charging Strategy for Li-Ion Batteries Based on Multi-Objective Optimization" Energies 10, no. 5: 709. https://doi.org/10.3390/en10050709
APA StyleMin, H., Sun, W., Li, X., Guo, D., Yu, Y., Zhu, T., & Zhao, Z. (2017). Research on the Optimal Charging Strategy for Li-Ion Batteries Based on Multi-Objective Optimization. Energies, 10(5), 709. https://doi.org/10.3390/en10050709