基于模型预测控制的智能电网用户侧能源管理优化策略

Ting Zhang, Yue Xiang, Jianwei Yang, T. Zang
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引用次数: 0

摘要

提出了一种基于模型预测控制的多时间尺度协调优化调度模型,实现了智能电网用户侧的能源管理优化。首先,构建了包括七个部分的智能电网用户侧模型,该模型比以往的研究更加全面和具体。其次,提出了基于模型预测控制的多时间尺度最优调度控制策略。以1天内总成本最小为目标,建立了日前经济优化模型。然后采用混合整数非线性规划方法求解模型。以日调度与当日实际产出误差最小为目标,建立了日内滚动最优调度模型。然后采用基于模型预测控制的滚动时域优化策略对模型进行求解,实现了对日计划的跟踪。最后,将该策略应用于北京市智能电网用户侧。仿真结果验证了优化策略的可行性和有效性。同时,分析了不同参数(预测时域和机组爬升率)对能量调度结果的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Management Optimization Strategy of User Side in Smart Grid Based on Model Predictive Control
This paper proposes a multi-time scale coordinated optimal scheduling model based on model predictive control, which realizes energy management optimization of user side in smart grid. Firstly, the model of user side in smart grid including seven parts is constructed, which is more comprehensive and specific than previous research. Secondly, a multi-time scale optimal scheduling control strategy based on model predictive control is proposed. With the objective of minimizing the total cost in one day, a day-ahead economic optimization model has established. Then the model is solved by mixed integer non-linear programming. With the objective of minimizing the error between the daily scheduling and the actual output of the day, the intra-day rolling optimal scheduling model is established. Then the tracking of the daily schedule is realized by solving the model with rolling time-domain optimization strategy, which is based on model predictive control. Finally, the strategy is applied to a user side in smart grid in Beijing. The simulation results verify the feasibility and effectiveness of the optimization strategy. At the same time, the influence of different parameters (prediction time domain and unit climbing rate) on energy scheduling results is analyzed.
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