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Computational intelligence based optimization of hierarchical virtual power plants

机译:基于计算智能的分层虚拟电厂优化

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In the context of renewable energy sources, virtual power plants (VPP) are regarded as a key technology for an intelligent control of the complex, decentralized, distributed and heterogeneous power generation process. However, an economic and ecological control of a VPP turns out to be a highly critical task: due to the strongly varying characteristics of VPPs, in terms of complexity, technology mix, environmental conditions and target objectives to be optimized during operation, the control of an individual VPP needs to be able to effectively take into account all of those individual constraints. Therefore, we propose in this paper an abstract control methodology for a VPP in combination with computational intelligence (CI) metaheuris-tics, which is designed to be flexibly applicable for different VPP sizes, target objectives and power plant types. The methodology furthermore provides the possibility to build hierarchical VPPs as they are often demanded by the system operators. To demonstrate the effectiveness of the control methodology, three exemplary optimization targets are considered and applied to different compositions of flat/hierarchical VPPs: the minimization of operating reserve requirements, the minimization of CO_2 emissions and the maximization of the power plant flexibility. Furthermore, the methodology is combined and evaluated with three exemplary CI metaheuristics: simulated annealing (SA), particle swarm optimization (PSO) and ant colony optimization (ACO). To legitimize the use of such advanced CI metaheuristics for the optimization problem, gradient descent optimization (GDO) as a traditional optimization technique is regarded as well. On the basis of concrete example scenarios as well as extensive, aggregated test runs, the results show that the control methodology is capable of efficiently optimizing various compositions of VPPs towards the given objectives.
机译:在可再生能源的背景下,虚拟发电厂(VPP)被视为智能控制复杂,分散,分布式和异质发电过程的关键技术。然而,VPP的经济和生态控制结果是一个非常关键的任务:由于VPP的特点强烈,在复杂性,技术组合,环境条件和目标期间在运行期间进行优化,控制个人VPP需要能够有效地考虑所有的所有限制。因此,我们在本文中提出了一种抽象的VPP与计算智能(CI)Metaheuris-TICS的抽象控制方法,该方法旨在灵活地适用于不同的VPP尺寸,目标目标和发电厂类型。方法进一步提供了构建分层VPP的可能性,因为系统运营商通常需要它们。为了证明控制方法的有效性,考虑了三种示例性优化目标并应用于不同的平面/分层VPP的组合物:操作储备要求的最小化,最小化CO_2排放和发电厂灵活性的最大化。此外,用三种示例性CI型培育方法组合和评估方法:模拟退火(SA),粒子群优化(PSO)和蚁群优化(ACO)。为了合法化使用这种先进的CI成形管道的优化问题,也认为梯度下降优化(GDO)也被认为是传统的优化技术。在具体的示例场景以及广泛的汇总测试运行的基础上,结果表明,控制方法能够有效地优化朝向给定的目标的各种VPP组成。

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