Gillioz Marc, Dubuis Guillaume, Jacquod Philippe
School of Engineering, University of Applied Sciences and Arts of Western Switzerland HES-SO, 1951, Sion, Switzerland.
Department of Quantum Matter Physics, University of Geneva, CH-1211, Geneva, Switzerland.
Sci Data. 2025 Jan 28;12(1):168. doi: 10.1038/s41597-025-04479-x.
With the ongoing energy transition, power grids are evolving fast. They operate more and more often close to their technical limit, under more and more volatile conditions. Fast, essentially real-time computational approaches to evaluate their operational safety, stability and reliability are therefore highly desirable. Machine Learning methods have been advocated to solve this challenge, however they are heavy consumers of training and testing data, while historical operational data for real-world power grids are hard if not impossible to access. This manuscript presents a large synthetic dataset of power injections in an electric transmission grid model of continental Europe, and describes the algorithm developed for its generation. The method allows one to generate arbitrarily large time series from the knowledge of the grid - the admittance of its lines as well as the location, type and capacity of its power generators - and aggregated power consumption data, such as the national load data given by ENTSO-E. The obtained datasets are statistically validated against real-world data.
随着能源转型的不断推进,电网正在迅速发展。它们越来越频繁地在接近技术极限的情况下运行,且运行条件越来越不稳定。因此,迫切需要快速、基本实时的计算方法来评估其运行安全性、稳定性和可靠性。机器学习方法已被提倡用于应对这一挑战,然而它们对训练和测试数据的需求量很大,而实际电网的历史运行数据即使并非无法获取,也是很难获得的。本文给出了一个关于欧洲大陆输电电网模型中功率注入的大型合成数据集,并描述了为生成该数据集而开发的算法。该方法允许人们根据电网知识——线路导纳以及发电机的位置、类型和容量——以及聚合的电力消耗数据(如ENTSO-E给出的国家负荷数据)生成任意长的时间序列。所获得的数据集根据实际数据进行了统计验证。