电力系统
可再生能源
发电
风力发电
基本负荷发电厂
水力发电
灵活性(工程)
功率(物理)
帕累托原理
多目标优化
化石燃料
工程类
经济调度
计算机科学
工艺工程
环境科学
分布式发电
汽车工程
废物管理
电气工程
经济
运营管理
管理
物理
机器学习
量子力学
作者
Alireza Akbari‐Dibavar,Behnam Mohammadi‐Ivatloo,Kazem Zare,Tohid Khalili,Ali Bidram
标识
DOI:10.1109/tia.2021.3079329
摘要
Despite the increasing level of renewable power generation in power grids, fossil fuel power plants still have a significant role in producing carbon emissions. The integration of carbon capturing and storing systems to the conventional power plants can significantly reduce the spread of carbon emissions. In this article, the economic-emission dispatch of combined renewable and coal power plants equipped with carbon capture systems is addressed in a multiobjective optimization framework. The power system's flexibility is enhanced by hydropower plants, pumped hydro storage, and demand response program. The wind generation and load consumption uncertainties are modeled using stochastic programming. The dc power flow model is implemented on a modified IEEE 24-bus test system. Solving the problem resulted in an optimal Pareto frontier, while the fuzzy decision-making method found the best solution. The sensitivity of the objective functions concerning the generation-side is also investigated.
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