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A Dantzig-Wolfe Decomposition Algorithm for Linear Economic MPC of a Power Plant Portfolio

机译:电厂组合线性经济mpC的Dantzig-Wolfe分解算法

摘要

Recently, the interest in renewable energy sources is increasing. In the short future, their penetration in the power systems will be signicantly higher than today. Denmark is working on achieving its goal by 2020 of having 30% of the energy production provided by renewable sources. 50% of the total power consumption is expected to stem from wind turbines. Due to the inherent stochasticity in renewable energy systems (RES), their energy production is usually complicated to forecast and control. The aim of the smart grid in which consumers as well as producers are controlled is to allow for larger variation in the power production due to the signicant amount of renewable energy. The multiple power generators and consumers must be coordinated to balance the supply and demand for power at all times. The aim of this study is to examine a control technique for large scale distributed energy systems (DES), where a signicant amount of renewable energy sources are present. Economic Model Predictive Control (MPC) is applied to control the power generators, minimizing the cost and producing the amount of energy required. We examine the large scale scenario, where multiple power generators and consumers such as e.g. electrical vehicles, heat pumps for domestic heating, and refrigeration and cooling systems must be controlled to balance the supply and demand for power. The system is very large scale. To address the large scale of the system and be able to compute the control decisions within a sample period, Dantzig-Wolfe decomposition is used for solution of the resulting linear program describing the Economic MPC of such systems. The controller obtained has been tested by simulations of a power portfolio system.
机译:近来,对可再生能源的兴趣正在增加。在不久的将来,它们在电力系统中的渗透率将大大高于今天。丹麦正在努力实现其到2020年的目标,即将可再生能源提供的能源产量占30%。预计总功耗的50%来自风力涡轮机。由于可再生能源系统(RES)固有的随机性,其能源生产通常难以预测和控制。控制智能电网的目的是控制消费者和生产者,因为可再生能源的数量巨大,因此发电量的变化更大。必须协调多个发电机和用户,以始终保持电力的供需平衡。这项研究的目的是研究存在大量可再生能源的大规模分布式能源系统(DES)的控制技术。经济模型预测控制(MPC)用于控制发电机,从而最大程度地降低成本并产生所需的能量。我们研究了大型场景,其中有多个发电机和消费者,例如电动汽车,用于家庭供暖的热泵以及制冷和冷却系统必须受到控制,以平衡电力的供需。该系统规模非常大。为了解决系统的大规模问题并能够在一个采样周期内计算控制决策,将Dantzig-Wolfe分解用于求解描述此类系统的经济MPC的所得线性程序。获得的控制器已通过电力投资组合系统的仿真进行了测试。

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