论基板、块和状态:电力系统规划中的分布式能源扩散模型、用例和前沿

F. Heymann, Joel Villavicencio Gastelu, Anselmo Rajabo Anselmo, J. Melo
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引用次数: 0

摘要

由于新的家庭能源技术的不断采用,人们越来越努力地分析这些行为模式,并预测未来在空间和时间上的动态。同样,电力系统规划者和政策制定者的目标是评估大规模采用能源技术的影响。本文介绍了可用于模拟大规模采用分布式能源的时空模型的主要数据源和构建块。我们解释了通过这些方法获得的估计/预测的优势以及建模者和决策者在实施过程中面临的限制。最后,我们概述了电力系统中这些模型的各种用例,概述了这些领域中每种模型类型的优点和障碍。这种比较显示了一种趋势,即基于人工智能的计算量更大、更复杂的基于模型的方法,例如基于代理的建模,主要应用于消费者特征描述或配电网络规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Substrates, Blocks and States: Distributed Energy Resources’ Diffusion Models, Use Cases and Frontiers in Power System Planning
Due to the ongoing adoption of new household energy technologies, there has been an increasing effort to analyze these behavioral patterns and predict future dynamics in space and time. Likewise, power system planners and policy makers aim to assess the effects of large-scale adoption of energy technologies. This paper presents the principal data sources and building blocks for spatiotemporal models that can be used to simulate the large-scale adoption of distributed energy resources. We explain the advantages of the estimates/forecasts obtained by these methods and limitations modelers and decision-makers face during implementation. Finally, we provide an overview over the various use cases for such models in power systems, outlining the advantages and barriers of each model typology for these domains. This comparison shows a trend towards computationally heavier and more complex models-based approaches rooted in Artificial Intelligence, such as Agent-based Modelling, mainly applied to consumer characterization or electricity distribution network planning.
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