事务性记忆
调度(生产过程)
阶段(地层学)
计算机科学
分布式计算
工程类
运营管理
知识管理
古生物学
生物
作者
Meng Song,Xiaoyuan Xu,Ciwei Gao,Zheng Yan,Mohammad Shahidehpour
标识
DOI:10.17775/cseejpes.2022.05300
摘要
Thermostatically controlled loads (TCLs) have huge thermal inertia and are promising resources to promote consumption of renewable energy sources (RESs) for carbon reduction. Thus, this paper employs the virtual power plant (VPP) to regulate TCLs to address problems caused by RESs. Specifically, a two-stage VPP scheduling framework based on multi-time scale coordinated control of TCLs is proposed to address forecast errors of variable RES power output. In the first stage (hour time scale), TCLs are controlled as virtual generators to mitigate forecast errors between hour-ahead and day-ahead RES power. In the second stage (minute time scale), TCLs are regulated as virtual batteries to mitigate forecast errors between intra-hour and hour-ahead RES power. To respect wills and preferences of end-users, a transactive energy (TE) market within VPP is built to guide TCL behaviors via the price mechanism. Moreover, a stochastic VPP schedule using the Wasserstein-metric-based distributionally robust optimization method is developed to consider RES power uncertainties, and its solution process is transformed into a computationally tractable mixed-integer linear programming problem based on the affine decision rule and duality theory. The proposed method is effectively validated by comparison with robust optimization and stochastic optimization. Simulation results demonstrate the proposed two-stage VPP scheduling method employs TCL flexibilities more comprehensively to mitigate RES output power forecast errors in VPP operations.
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