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电动汽车双层优化模型的充放电调度策略

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传统的分时电价策略虽然一定程度上可以改善电动汽车无序充电所产生的电网日负荷峰谷差加大、负荷率降低等状况,但易产生新的负荷高峰,并且当前多目标优化等策略削峰填谷效果欠佳或用户参与度不高.针对上述问题,提出一种基于双层优化模型的调度策略以充分考虑电网和用户两侧需求.第 1 层模型以优化电网日负荷方差最小为目标函数;第2 层优化模型建立以车主充电成本最小以及保证用户出行需求的目标函数,然后用改进的粒子群-模拟退火算法对双层优化模型进行循环迭代求解,并将第 2 层优化后的结果反馈给第 1 层,以此循环优化,输出最终结果.对比优化前后的负荷曲线,结果表明:与当前优化策略相比,所提出的基于双层优化模型的V2G调度策略能有效降低新的负荷高峰及负荷峰谷差,减少参与V2G的用户成本,实现两侧双赢.
Charge and discharge scheduling strategies for electric vehicle double-layer optimization models
Against the backdrop of carbon peaking and carbon neutrality,electric vehicles(EV)have become increasingly popular as they use cleaner energy,achieve higher efficiency and have made breakthroughs in energy storage.They promise to effectively address the current energy shortage and environmental pollution problems.However,disordered EV charging brings many challenges to the power grid,and greatly affects the safety and reliability of the power grid.Although the traditional time-of-use electricity price strategy has improved the negative impacts of disorderly EV charging,such as the increase of daily load peak-valley difference and the decrease of load rate,it is easy to produce new load peaks and the effect of the current multi-objective optimization strategy is unsatisfactory.The current Vehicle-to-Grid(V2G)technology is able to solve the fundamental problem,requiring a reasonable and efficient EV charging and discharging scheduling strategy.This paper aims to establish a mathematical model of charging and discharging load,improve the particle swarm optimization(PSO)algorithm,and study the orderly charging and discharging optimization strategy and its effect.First,based on the national household travel survey(NHTS)data,this study deeply analyzes the EV's driving range,charging start time,charging end time and battery state of charge at the beginning of charging,and establishes the EV charging load model.The EV charging load is simulated and analyzed by Monte Carlo method.The simulation results show that a large number of EVs are connected to the distribution network,and the peak-to-valley difference of the daily load curve increases significantly.The disorderly charging load will have a huge impact on the safe operation of the distribution network.Although the load curve guided by the time-of-use electricity price has a certain peak clipping effect,the effect is not good and a new load peak is generated.Second,in the case of long parking time and large number of EVs,the PSO method easily gives rise to such problems as local extremum.Considering the characteristics of the EV bi-level optimization model and the advantages and disadvantages of particle swarm and simulated annealing(SA)algorithm,this paper uses the improved PSO-SA hybrid algorithm to solve the above two-layer model.The PSO-SA algorithm addresses the problem when the PSO algorithm falls into the local optimum while the SA algorithm is employed to perturb and optimize the optimal solution obtained by the current PSO,trying to jump out of the local optimal search for a better solution.Our results show the improved PSO-SA achieves a higher efficiency and better optimization accuracy.Third,this paper proposes a scheduling strategy based on EV bi-level optimization model that fully considers the needs of both the power grid and users.By controlling the charging and discharging power of EVs in different time periods within a day,this paper considers various constraints such as transformer and EV charging and discharging power,and uses the improved PSO-SA algorithm to optimize the first layer model to obtain the daily load curve considering only the demand of the grid side.Taking the first-stage optimization results as constraints,this paper obtains the second-level optimization strategy based on user-side requirements.Taking the minimum charging and discharging cost of the owner as the optimization objective and considering the various constraints of the layer model,this paper obtains the optimization results of the second layer model.The charging and discharging power optimization results of EV in each time period obtained by the second layer model are fed back to the upper layer for the next cycle.The upper and lower models iterate repeatedly until the results meet the termination conditions.Finally,the optimal solution of EV optimal scheduling based on the two-layer model is obtained.Compared with the load curves before and after optimization,our results show the proposed V2G scheduling strategy based on the bi-level optimization model effectively reduces the load peak-valley differences,increases the load rate and reduces the power costs for EV owners.

electric vehiclesV2Gcharge and discharge optimization schedulingbi-level optimization modelimproved particle swarm-simulated annealing algorithm

马永翔、王希鑫、闫群民、孔志战、淡文国

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陕西理工大学 电气工程学院,陕西 汉中 723001

陕西省电力有限公司,西安 710048

乌兰察布电业局,内蒙古 乌兰察布 012000

电动汽车 V2G技术 充放电优化调度 双层优化模型 改进粒子群-模拟退火算法

国家自然科学基金一般面上项目陕西省教育厅重点科学研究计划项目

6217614620JS018

2024

重庆理工大学学报
重庆理工大学

重庆理工大学学报

CSTPCD北大核心
影响因子:0.567
ISSN:1674-8425
年,卷(期):2024.38(3)
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