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Adaptive and Predictive Energy Management Strategy for Online Optimal Power Dispatch from VPPs with Renewable Energy and Energy Storage

机译:具有可再生能源和储能的VPPS在线最佳功率调度的自适应和预测能源管理策略

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Virtual power plant (VPP) aggregates heterogeneous distributed energy resources through a cloud-based access control system providing efficient centralized management, visibility and control. Most of the operation strategies for VPPs are designed based on the day-ahead profiles. However, prediction errors of the renewable energy sources and the load demands can lead to a sub-optimal operation in the dispatch scheduling. In this paper, an adaptive and predictive energy management strategy for an online optimal operation of VPPs is proposed based on the model predictive control technique with a feedback correction to compensate for the prediction error. This strategy is divided in to two sections: a) rolling horizon optimization; and b) feedback control based error correction. In the rolling horizon optimization, a hybrid prediction algorithm based on the integration of the time series analysis and the Kalman filters is used to forecast the output powers of the renewable energy sources and the load demands. The rolling horizon optimization model is implemented as a mixed-integer linear program (MILP) to schedule the operation in accordance with the latest forecast information. The power dispatch schedule is then adjusted based on ultra-short-term error prediction. The feedback control-based error correction is applied to minimize the adjustments for compensating the prediction error and is implemented as a linear program (LP). The proposed strategy is implemented on a VPP in a practical distribution system in New South Wales (NSW), Australia. The simulation results demonstrate the effectiveness of the proposed strategy with better tracking of the actual available resources and a minimal mismatch between demand and supply.
机译:虚拟电厂(VPP)通过基于云的访问控制系统提供高效的集中管理,可视性和控制聚集异构分布式能源。对于大多数的的VPP操作策略的设计基础上,提前一天的轮廓。然而,的可再生能源和所述负载需求预测误差可导致在调度调度的次优操作。在本文中,为的VPP的在线优化运行的自适应和预测能量管理策略是基于与一个反馈校正,以补偿预测误差的模型预测控制技术提出。这一战略中分为两个部分:1)滚动优化;和b)基于反馈控制的纠错。在滚动优化,基于时间序列分析的一体化和卡尔曼滤波器的混合预测算法是用来预测的可再生能源和所述负载需求的输出功率。的滚动优化模型被实现为混合整数线性规划(MILP)来调度在按照最新的预测信息的操作。然后,电力调度计划是基于超短期预测误差调整。在基于控制反馈误差校正应用于最小化用于补偿的预测误差的调整以及被实现为线性程序(LP)。拟议的战略是在新南威尔士州(NSW),澳大利亚实际分配系统中的VPP实施。仿真结果表明,与实际可用资源的更好的跟踪和需求与供给之间的不匹配最小所提出的策略的有效性。

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