可再生能源
温室气体
环境经济学
碳纤维
电
计算机科学
发电
能源供应
能源规划
可靠性(半导体)
高效能源利用
电力系统
环境科学
能量(信号处理)
功率(物理)
工程类
经济
复合数
统计
电气工程
物理
生物
量子力学
数学
生态学
算法
作者
Xianqing Chen,Wei Dong,Lizhong Yang,Qiang Yang
标识
DOI:10.1016/j.renene.2023.03.030
摘要
With the development of multi-energy systems and the urgent demand for low-carbon energy provision, the regional integrated energy system (IES) is considered an efficient paradigm to improve energy efficiency and carbon emission reduction. The optimal capacity planning of different IES components is considered a non-trivial task due to the uncertainties of renewable power generation and various demands (e.g., electricity, heating and cooling) as well as the carbon emission constraints. This paper addresses this challenge and presents a scenario-based robust optimal planning solution for the regional low-carbon IES fully considering the economic cost, carbon emission and energy supply reliability. The operational uncertainties of different forms of energy sources and demands are characterized by a controllable generative adversarial network (GAN). The proposed method is extensively assessed based on an IES case study in China through a comparative analysis, the numerical results show that compared with the traditional planning method, the proposed capacity planning solution can reduce the total cost by 4.24% and the carbon emissions by 42.61%, the effectiveness and benefits of the planning solution have been effectively confirmed.
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