A critical aspect of power systems research is the availability of suitable data, access to which is limited by privacy concerns and the sensitive nature of energy infrastructure. This lack of data, in turn, hinders the development of modern research avenues such as machine learning approaches or stochastic formulations. To overcome this challenge, this paper proposes a systematic, data-driven framework for reconstructing high-fidelity time series, using publicly-available grid snapshots and historical data published by transmission system operators. The proposed approach, from geo-spatial data and generation capacity reconstruction, to time series disaggregation, is applied to the French transmission grid. Thereby, synthetic but highly realistic time series data, spanning multiple years with a 5-minute granularity, is generated at the individual component level.
翻译:电力系统研究的一个关键方面是提供合适的数据,这些数据的获取受到隐私问题和能源基础设施敏感性质的限制,而缺乏数据又阻碍现代研究途径的发展,如机器学习方法或随机配方等,为克服这一挑战,本文件提出一个系统的数据驱动框架,利用可公开获得的电网照片和传输系统操作员公布的历史数据,重建高不忠时间序列,从地理空间数据和生成能力重建到时间序列分类,在法国输电网中采用拟议方法,从地理空间数据和生成能力重建到时间序列分类,在单个组成部分一级生成合成但高度现实的时间序列数据,多年以来都有5分钟的颗粒度。