基于蓄热电锅炉负荷参与消纳风电的市场激励方法
A Market Incentive Method Based on the Thermal Storage Electric Boiler Load Participating in Wind Power Consumption
DOI: 10.12677/SG.2021.115031, PDF,    国家科技经费支持
作者: 罗世刚, 窦常永, 黎启明:国网甘肃省电力公司,甘肃 兰州;张雨薇, 李 潇, 刘文颖:新能源电力系统国家重点实验室(华北电力大学),北京
关键词: 蓄热电锅炉负荷消纳风电市场激励Thermal Storage Electric Boiler Load Wind Power Consumption Market Incentives
摘要: 随着风电接入电网比例的不断提高,冬季供暖期常规电源调峰能力不足造成的风电消纳受阻问题凸显。通过市场交易激励蓄热电锅炉企业挖掘调节潜力参与消纳风电是一种可行的新举措。基于此,本文提出了基于蓄热电锅炉负荷参与消纳风电的市场激励方法。首先,提出基于蓄热电锅炉负荷参与消纳风电控制的市场激励机理及模式,其次对风电场和蓄热电锅炉企业的收益进行了分析建模,然后,提出了基于蓄热电锅炉负荷参与消纳风电的市场激励方法,最后利用某区域电网运行数据进行仿真计算,验证了所提方法的可行性和有效性。
Abstract: With the continuous increase of the proportion of wind power connected to the grid, the problem of wind power consumption blocked due to insufficient peak shaving capacity of conventional power sources during the winter heating period has become prominent. It is a feasible new measure to encourage thermal storage electric boiler enterprises to tap the adjustment potential and participate in the consumption of wind power through market transactions. Based on this, this paper proposes a market incentive method based on the thermal storage electric boiler load participating in wind power consumption. First, the market incentive mechanism and mode based on the thermal storage electric boiler load participating in the wind power consumption control are proposed. Secondly, the income of wind farms and thermal storage electric boiler enterprises is analyzed and modeled. Then, a market incentive method based on the thermal storage electric boiler load participating in wind power consumption is proposed. Finally, the operation data of a certain regional power grid is used for simulation to verify the feasibility and effectiveness of the proposed method.
文章引用:罗世刚, 窦常永, 张雨薇, 李潇, 黎启明, 刘文颖. 基于蓄热电锅炉负荷参与消纳风电的市场激励方法[J]. 智能电网, 2021, 11(5): 323-333. https://doi.org/10.12677/SG.2021.115031

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