风力发电
数学优化
连接词(语言学)
高斯分布
投标
聚类分析
概率密度函数
可再生能源
电力系统
计算机科学
数学
工程类
功率(物理)
计量经济学
经济
统计
电气工程
物理
量子力学
微观经济学
作者
Shunfu Lin,Chitao Liu,Yunwei Shen,Fangxing Li,Dongdong Li,Yang Fu
标识
DOI:10.1109/tsg.2021.3119939
摘要
Uncertainty introduces both significant complexity and the high risk of suboptimal investment decisions into power system planning. Considering the multiple uncertainties of wind and solar power output, load demands, and energy prices as well as pollutant emission factors during the planning period, a multi-scenario stochastic programming model of an integrated energy system (IES) is constructed in this paper. Scenarios of wind and solar power output are generated based on non-parametric kernel density estimation and the Frank-Copula function; scenarios of load demands are generated through DeST software, and energy prices and pollutant emission factors are generated corresponding to a uniform distribution. Then the generated scenario results of wind and solar power output and load demands are reduced by ${k}$ -means clustering; the generated scenarios of energy prices and pollutant emission factors are reduced by discrete approximation of continuous distribution based on Gaussian quadrature. An illustrative example with 8 cases is performed to analyze the influences of each uncertain parameter on the optimal configuration and economy of the IES.
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