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An online optimal dispatch schedule for CCHP microgrids based on model predictive control

机译:基于模型预测控制的CCHP微电网在线最优调度计划

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Combined cooling, heating, and power (CCHP) systems have been widely applied in various kinds of buildings. Most operation strategies for CCHP microgrids are designed based on day-ahead profiles. However, prediction error for renewable energy resources (RES) and load leads to suboptimal operation in dispatch scheduling. In this paper, we propose an online optimal operation approach for CCHP microgrids based on model predictive control with feedback correction to compensate for prediction error. This approach includes two hierarchies: 1) rolling optimization; and 2) feedback correction. In the rolling part, a hybrid algorithm based on integrating time series analysis and Kalman filters is used to forecast the power for RES and load. A rolling optimization model is established to schedule operation according to the latest forecast information. The rolling dispatch scheduling is then adjusted based on ultrashort-term error prediction. The feedback correction model is applied to minimize the adjustments and to compensate for prediction error. A case study demonstrates the effectiveness of the proposed approach with better matching between demand and supply.
机译:组合的制冷,供暖和电力(CCHP)系统已广泛应用于各种建筑物中。 CCHP微电网的大多数运行策略都是基于日前配置文件设计的。但是,可再生能源(RES)和负荷的预测误差导致调度调度中的次优操作。在本文中,我们提出了一种基于模型预测控制和反馈校正的CCHP微电网在线最优运行方法,以补偿预测误差。此方法包括两个层次结构:1)滚动优化;和2)反馈校正。在滚动部分中,基于时间序列分析和卡尔曼滤波器的混合算法用于预测RES和负载的功率。建立滚动优化模型,根据最新的预测信息调度运行。然后基于超短期误差预测来调整滚动调度计划。应用反馈校正模型以最小化调整并补偿预测误差。案例研究证明了所提出的方法在需求和供应之间更好地匹配的有效性。

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