Power networks, responsible for transporting electricity across large geographical regions, are complex infrastructures on which modern life critically depend. Variations in demand and production profiles, with increasing renewable energy integration, as well as the high voltage network technology, constitute a real challenge for human operators when optimizing electricity transportation while avoiding blackouts. Motivated to investigate the potential of AI methods in enabling adaptability in power network operation, we have designed a L2RPN challenge to encourage the development of reinforcement learning solutions to key problems present in the next-generation power networks. The NeurIPS 2020 competition was well received by the international community attracting over 300 participants worldwide. The main contribution of this challenge is our proposed comprehensive 'Grid2Op' framework, and associated benchmark, which plays realistic sequential network operations scenarios. The Grid2Op framework, which is open-source and easily re-usable, allows users to define new environments with its companion GridAlive ecosystem. Grid2Op relies on existing non-linear physical power network simulators and let users create a series of perturbations and challenges that are representative of two important problems: a) the uncertainty resulting from the increased use of unpredictable renewable energy sources, and b) the robustness required with contingent line disconnections. In this paper, we give the competition highlights. We present the benchmark suite and analyse the winning solutions, including one super-human performance demonstration. We propose our organizational insights for a successful competition and conclude on open research avenues. Given the challenge success, we expect our work will foster research to create more sustainable solutions for power network operations.
翻译:电力网络负责在大地理区域运输电力,是现代生活赖以生存的复杂基础设施。随着可再生能源一体化程度的提高以及高电压网络技术,需求与生产情况的变化,以及高电压网络技术,在优化电力运输的同时避免停电,对人类运营者构成真正的挑战。Grid2Op框架是开放源头的,易于再使用,允许用户以其相伴的GridAlive生态系统来定义新的环境。Grid2Op挑战依赖于现有的非线性有形电力网络模拟器,让用户创造一系列挑战性和挑战,这代表着两个重要问题:a) 未来“Grid2Op”框架和相关基准,它提供了现实的接连网络操作情景。Grid2Op框架是开放源的,便于重新使用,使用户能够以其相伴的网络生态系统定义新的环境。Grid2Op利用现有的非线性有形电力网络模拟器,让用户产生一系列的触动性挑战和挑战,这代表着两个重要问题:我们目前使用不可预测的研究渠道所产生的不确定性,我们所需要的升级性研究网络,我们所需要的最终分析。