Artificial agents are promising for realtime power system operations, particularly, to compute remedial actions for congestion management. Currently, these agents are limited to only autonomously run by themselves. However, autonomous agents will not be deployed any time soon. Operators will still be in charge of taking action in the future. Aiming at designing an assistant for operators, we here consider humans in the loop and propose an original formulation for this problem. We first advance an agent with the ability to send to the operator alarms ahead of time when the proposed actions are of low confidence. We further model the operator's available attention as a budget that decreases when alarms are sent. We present the design and results of our competition "Learning to run a power network with trust" in which we benchmark the ability of submitted agents to send relevant alarms while operating the network to their best.
翻译:人工代理商对实时电力系统操作很有希望, 特别是, 以计算充电系统操作的补救行动。 目前, 这些代理商仅限于由自己自主操作。 但是, 自动代理商不会很快被部署。 运营商将来仍然负责采取行动。 为了设计操作员的助理, 我们在这里考虑人类在循环中, 并提出这一问题的原始配方。 我们首先在拟议行动缺乏信心时提前向操作员发送警报的能力。 我们进一步将操作员的可用关注度作为在发出警报时减少的预算模型。 我们展示了我们竞争的“ 学习如何运行一个信任的电力网络” 的设计和结果, 我们测试了提交代理商在运行网络时是否有能力以最佳方式发送相关警报。