The Pump Scheduling Problem: A Real-World Scenario for Reinforcement Learning
The Pump Scheduling Problem: A Real-World Scenario for Reinforcement Learning
Deep Reinforcement Learning (DRL) has demonstrated impressive results in domains such as games and robotics, where task formulations are well-defined. However, few DRL benchmarks are grounded in complex, real-world environments, where safety constraints, partial observability, and the need for hand-engineered task representations pose significant challenges. To help bridge this gap, we introduce a testbed based on the pump scheduling problem in a real-world water distribution facility. The task involves controlling pumps to ensure a reliable water supply while minimizing energy consumption and respecting the constraints of the system. Our testbed includes a realistic simulator, three years of high-resolution (1-minute) operational data from human-led control, and a baseline RL task formulation. This testbed supports a wide range of research directions, including offline RL, safe exploration, inverse RL, and multi-objective optimization.
Harald Roclawski、Laurent Vercouter、Henrique Donancio
水能利用、水电站工程水利工程施工
Harald Roclawski,Laurent Vercouter,Henrique Donancio.The Pump Scheduling Problem: A Real-World Scenario for Reinforcement Learning[EB/OL].(2022-10-20)[2025-08-02].https://arxiv.org/abs/2210.11111.点此复制
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