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Deep Learning based VPP Active Power Dispatching Equivalent Modelling for Global Dispatching Optimization

机译:基于深度学习的VPP有功功率调度等效模型用于全局调度优化

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The active power dispatching equivalent model of the virtual power plant (VPP) and the global dispatching optimization issue of a regional power system integrated with the VPP equivalent model are studied in this paper. Considering the feasibility of a dispatched active power output curve for VPP, the active power dispatching equivalent model of the VPP is built as two equivalent models. One is the feasibility equivalent model trained by fine trees based on the data sets of the active power output curve of the VPP and its feasibility flag, and the other one is the cost equivalent model trained as a deep neural network based on the data sets of the active power output curve and its daily generation cost. Global dispatching issue is formulated as a multi-objective optimization model and solved by NSGAII algorithm. The active power dispatching equivalent model and the multi-objective optimization model is verified by case study, and results show that the proposed VPP equivalent model makes it possible for the power dispatching center to schedule VPP’s optimal power generation plan so as to maximize the generation revenue of the VPP and minimize the total generation cost of the system.
机译:研究了虚拟电厂的有功调度等效模型和集成有该模型的区域电力系统的全局调度优化问题。考虑到VPP分配有功功率输出曲线的可行性,将VPP的有功功率分配等效模型构建为两个等效模型。一个是基于VPP的有功功率输出曲线及其可行性标志的数据集由细树训练的可行性等效模型,另一种是基于VPP的数据集训练为深度神经网络的成本等效模型。有功功率输出曲线及其每日发电成本。将全局调度问题表述为一个多目标优化模型,并通过NSGAII算法进行求解。通过实例验证了有功调度等效模型和多目标优化模型,结果表明,提出的VPP等效模型使调度中心有可能调度VPP的最优发电计划,从而最大程度地增加发电收益。 VPP的成本,并最大程度地降低了系统的总发电成本。

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