Wang, Xinrun and Nair, Tarun and Li, Haoyang and Sheng Reuben Wong, Yuh and Kelkar, Nachiket and Vaidyanathan, Srinivas and Nayak, Rajat and An, Bo and Krishnaswamy, Jagdish and Tambe, Milind (2020) Efficient Reservoir Management through Deep Reinforcement Learning. arXiv.

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Abstract

Dams impact downstream river dynamics through flow regulation and disruption of upstream-downstream linkages. However, current dam operation is far from satisfactory due to the inability to respond the complicated and uncertain dynamics of the upstream-downstream system and various usages of the reservoir. Even further, the unsatisfactory dam operation can cause floods in downstream areas. Therefore, we leverage reinforcement learning (RL) methods to compute efficient dam operation guidelines in this work. Specifically, we build offline simulators with real data and different mathematical models for the upstream inflow, i.e., generalized least square (GLS) and dynamic linear model (DLM), then use the simulator to train the state-of-the-art RL algorithms, including DDPG, TD3 and SAC. Experiments show that the simulator with DLM can efficiently model the inflow dynamics in the upstream and the dam operation policies trained by RL algorithms significantly outperform the human-generated policy.

Item Type: Article
Additional Information: Copyright of this article belongs to the authors.
Subjects: A ATREE Publications > G Journal Papers
Divisions: SM Sehgal Foundation Centre for Biodiversity and Conservation
Depositing User: Ms Library Staff
Date Deposited: 09 Dec 2025 09:26
Last Modified: 09 Dec 2025 09:26
URI: http://archives.atree.org/id/eprint/1281

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