Coordinated Optimization of Multi-station Integration Systems Considering Uncertainties

Chupeng Xiao, Wenqing Li, Liangliang Zhu, Meng Yu, Chunyan Zhang, Jie Gao, S. Bian
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Abstract

Under the general development trend of the power Internet of Things, multi-station integration with high computing efficiency and local load consumption will become the main form of the future energy system. However, with the large number of renewable energy stations and charging stations connected into multi-station integration systems, the uncertainties and volatilities of new energy output and charging time of charging stations adversely affect the economic, efficient, and stable operation of the system. To achieve the economic, efficient, and stable operation of multi-station integration energy system, this paper establishes an integration station model with five stations in one: substation, charging station, energy storage station, data center station and renewable energy station. This paper adopts Monte Carlo simulation method to obtain renewable energy station output scenarios and K-means algorithm to perform scenario reduction. Probability density function is used to describe the uncertainty of random charging at charging station. Considering time-of-use price, a multi-objective optimization model is established with respect to costs and risks. NSGA-II and multi-attribute decision method are combined to find the optimal solution. The simulation results show that the proposed method significantly reduces the total operating cost and risk of the system, indicating that the proposed model and method are feasible.
考虑不确定性的多站集成系统协调优化
在电力物联网的大发展趋势下,具有高计算效率和本地负荷消耗的多站集成将成为未来能源系统的主要形式。然而,随着可再生能源电站和充电站大量接入多站集成系统,充电站新能源输出和充电时间的不确定性和波动性对系统的经济、高效、稳定运行产生不利影响。为实现多站集成能源系统经济、高效、稳定运行,本文建立了变电站、充电站、储能站、数据中心站和可再生能源站五站合一的集成电站模型。本文采用蒙特卡罗模拟法获得可再生能源站输出情景,采用K-means算法进行情景约简。采用概率密度函数描述充电站随机充电的不确定性。考虑分时电价,建立了考虑成本和风险的多目标优化模型。结合NSGA-II和多属性决策方法寻找最优解。仿真结果表明,所提方法显著降低了系统的总运行成本和风险,表明所提模型和方法是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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