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考虑车网互动的区域电网优化调度。

Optimal dispatching of regional power grid considering vehicle network interaction.

机构信息

Economic and Technical Research Institute of State Grid Henan Electric Power Company, Henan, China.

Department of Automation, North China Electric Power University, Hebei, China.

出版信息

PLoS One. 2024 Jul 16;19(7):e0297855. doi: 10.1371/journal.pone.0297855. eCollection 2024.

Abstract

When large-scale electric vehicles are connected to the grid for unordered charging, it will seriously affect the stability and security of the power system. To solve this problem, this paper proposes a regional power network optimization scheduling method considering vehicle network interaction. Initially, based on the user behavior characteristics and charging and discharging characteristics of electric vehicles, a charging and discharging behavior model of electric vehicles was established. Based on the Monte Carlo sampling algorithm, the scheduling upper and lower limits of each scheduling cycle of electric vehicles were described, and the scheduling potential of each scheduling cycle of electric vehicles was obtained. Then, the electricity price is then used as an incentive parameter to guide EV users to charge during periods of low electricity prices and participate in discharge during periods of peak electricity prices. Aiming at the highest economic efficiency, the best consumption effect of new energy and the smoothest demand-side power curve of regional power grid, a three-objective optimal dispatching model was established. In the later stage, uncertainty factors are taken into consideration by introducing the concept of interval numbers, and an interval multi-objective optimization dispatching model is established. The two dispatching models are solved by NSGA-II algorithm and improved NSGA-II algorithm, and the Pareto solution set is obtained. Finally, based on the analytic Hierarchy Process (AHP), the optimal scheduling scheme is determined. The Monte Carlo sampling method is used to simulate the user side charging demand, and the effectiveness of this method is verified. In addition, the results of the interval multi-objective optimization model and the deterministic multi-objective optimization model are compared, and it is proved that the solution results of the interval multi-objective model are more adaptive, practical and robust to the uncertain factors.

摘要

当大规模电动汽车无序接入电网充电时,会严重影响电力系统的稳定性和安全性。针对这一问题,本文提出了一种计及车网互动的区域电网优化调度方法。首先,基于用户行为特性和电动汽车充放电特性,建立电动汽车的充放电行为模型。基于蒙特卡罗抽样算法,描述各调度周期电动汽车的调度上下限,并获取各调度周期电动汽车的调度潜力。然后,利用电价作为激励参数,引导电动汽车用户在电价低谷时段充电,在电价高峰时段放电。针对区域电网经济效益最高、新能源消纳效果最佳、需求侧负荷曲线最平滑的目标,建立了三目标优化调度模型。在后期,通过引入区间数的概念,考虑不确定性因素,建立区间多目标优化调度模型。采用 NSGA-II 算法和改进的 NSGA-II 算法对两个调度模型进行求解,得到 Pareto 解集。最后,基于层次分析法(AHP)确定最优调度方案。采用蒙特卡罗抽样法对用户侧充电需求进行模拟,验证了该方法的有效性。此外,还对区间多目标优化模型和确定性多目标优化模型的结果进行了对比,证明了区间多目标模型的解更具有适应性、实用性和对不确定因素的稳健性。

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