Electrical power systems are increasing in size, complexity, as well as dynamics due to the growing integration of renewable energy resources, which have sporadic power generation. This necessitates the development of near real-time power system algorithms, demanding lower computational complexity regarding the power system size. Considering the growing trend in the collection of historical measurement data and recent advances in the rapidly developing deep learning field, the main goal of this paper is to provide a review of recent deep learning-based power system monitoring and optimization algorithms. Electrical utilities can benefit from this review by re-implementing or enhancing the algorithms traditionally used in energy management systems (EMS) and distribution management systems (DMS).
翻译:电力系统的规模、复杂性和动态因可再生能源的日益一体化而正在增加,而可再生能源的一体化有零星的发电,这就需要开发近实时电力系统算法,要求降低电力系统规模的计算复杂性;考虑到收集历史测量数据方面的趋势日益增长,以及迅速发展的深层学习领域最近取得的进展,本文件的主要目标是审查最近深层学习的电力系统监测和优化算法;通过重新实施或加强能源管理系统和配电管理系统传统上使用的算法,电力公用事业可受益于这一审查。</s>