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Hierarchical model-based predictive control of a power plant portfolio

机译:基于层次模型的电厂组合预测控制

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One of the main difficulties in large-scale implementation of renewable energy in existing power systems is that the production from renewable sources is difficult to predict and control. For this reason, fast and efficient control of controllable power producing units - so-called "portfolio control" -becomes increasingly important as the ratio of renewable energy in a power system grows. As a consequence, tomorrow's "smart grids." require highly flexible and scalable control systems compared to conventional power systems. This paper proposes a hierarchical model-based predictive control design for power system portfolio control, which aims specifically at meeting these demands. The design involves a two-layer hierarchical structure with clearly defined interfaces that facilitate an object-oriented implementation approach. The same hierarchical structure is reflected in the underlying optimisation problem, which is solved using Dantzig-Wolfe decomposition. This decomposition yields improved computational efficiency and better scalability compared to centralised methods. The proposed control scheme is compared to an existing, state-of-the-art portfolio control system (operated by DONG Energy in Western Denmark) via simulations on a real-world scenario. Despite limited tuning, the new controller shows improvements in terms of ability to track reference production as well as economic performance.
机译:现有电力系统中大规模实施可再生能源的主要困难之一是难以预测和控制可再生资源的生产。因此,随着电力系统中可再生能源比例的增长,对可控发电单元的快速有效控制(所谓的“投资组合控制”)变得越来越重要。结果,就是明天的“智能电网”。与常规电源系统相比,需要高度灵活和可扩展的控制系统。本文提出了一种用于电力系统组合控制的基于层次模型的预测控制设计,旨在专门满足这些需求。该设计涉及两层层次结构,该结构具有明确定义的接口,这些接口有助于实现面向对象的实现方法。相同的层次结构反映在基础优化问题中,该问题使用Dantzig-Wolfe分解解决。与集中式方法相比,这种分解可提高计算效率和更好的可伸缩性。通过对真实场景的仿真,将拟议的控制方案与现有的,最新的投资组合控制系统(由丹麦西部的DONG Energy运营)进行比较。尽管进行了有限的调整,但新控制器在跟踪参考产量和经济性能方面显示出了改进。

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