Electric Vehicle Battery Swapping Station Planning Method Based on Improved Immune Genetic Algorithm
ID:144
Submission ID:144 View Protection:ATTENDEE
Updated Time:2025-10-19 16:01:03 Hits:95
Poster Presentation
Start Time:2025-11-09 09:12 (Asia/Shanghai)
Duration:1min
Session:[P] Poster presentation » [P1] 1.Renewable energy system
No files
Abstract
With the increasing popularity of battery swapping mode, modeling and optimizing the layout of battery swapping stations (BSS) has become a critical issue affecting the economic profitability of operators. This paper proposes a BSS planning strategy that explicitly considers electric vehicle (EV) user behavior and queuing effects. The proposed method aims to minimize the total construction investment of BSS and introduces a travel chain model to characterize the battery exchange behavior of electric vehicles. Then, to solve the resulting optimization problem, the immune genetic algorithm (IGA) is enhanced with the Levy flight mechanism, thereby improving its ability to escape local optima. Simulation results demonstrate that, compared with conventional methods, the proposed algorithm achieves significantly faster convergence while ensuring solution quality.
Keywords
Electric vehicles,Battery swapping mode,Immune genetic algorithm,Battery swap station planning
Speaker


Comment submit