Current rapid changes in climate increase the urgency to change energy production and consumption management, to reduce carbon and other green-house gas production. In this context, the French electricity network management company RTE (R{\'e}seau de Transport d'{\'E}lectricit{\'e}) has recently published the results of an extensive study outlining various scenarios for tomorrow's French power management. We propose a challenge that will test the viability of such a scenario. The goal is to control electricity transportation in power networks, while pursuing multiple objectives: balancing production and consumption, minimizing energetic losses, and keeping people and equipment safe and particularly avoiding catastrophic failures. While the importance of the application provides a goal in itself, this challenge also aims to push the state-of-the-art in a branch of Artificial Intelligence (AI) called Reinforcement Learning (RL), which offers new possibilities to tackle control problems. In particular, various aspects of the combination of Deep Learning and RL called Deep Reinforcement Learning remain to be harnessed in this application domain. This challenge belongs to a series started in 2019 under the name "Learning to run a power network" (L2RPN). In this new edition, we introduce new more realistic scenarios proposed by RTE to reach carbon neutrality by 2050, retiring fossil fuel electricity production, increasing proportions of renewable and nuclear energy and introducing batteries. Furthermore, we provide a baseline using state-of-the-art reinforcement learning algorithm to stimulate the future participants.
翻译:目前气候的迅速变化增加了改变能源生产和消费管理的紧迫性,减少了碳和其他绿色气体生产。在这方面,法国电力网络管理公司RTE(R'el'eau de Transport d'E'E'compectriit t'e})最近公布了一项广泛研究的结果,其中概述了未来法国电力管理的各种设想。我们提出了一个挑战,将检验这种设想的可行性。目标是控制电力网络中的电力运输,同时追求多种目标:平衡生产和消费,最大限度地减少高能损失,以及保持人员和设备的安全,特别是避免灾难性的失败。尽管应用本身就提供了一个目标,但这项挑战也旨在推动人工智能智能(AI)分支中的先进技术,称为“强化学习”,为处理控制问题提供了新的可能性。特别是,“深度学习”和“深度强化学习”的组合的各个方面仍有待在这个应用领域加以利用。这一挑战始于2019年以“学习如何运行一个现实的电力网络”为名的系列(L2RPN), 并且“不断更新的能源生产”, 通过这个新版本,我们引入了一种可再生能源, 将一个更精确的能源升级的能源升级的模型, 以更新的能源升级的模型, 。