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contributor authorWei Xu
contributor authorFanlin Meng
contributor authorWeisi Guo
contributor authorXia Li
contributor authorGuangtao Fu
date accessioned2022-01-31T23:57:17Z
date available2022-01-31T23:57:17Z
date issued8/1/2021
identifier other%28ASCE%29WR.1943-5452.0001409.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4270636
description abstractOptimal operation of hydropower reservoir systems is a classical optimization problem of high dimensionality and stochastic nature. A key challenge lies in improving the interpretability of operation strategies, i.e., the cause–effect relationship between system outputs (or actions) and contributing variables such as states and inputs. This paper reports for the first time a new deep reinforcement learning (DRL) framework for optimal operation of reservoir systems based on deep Q-networks (DQNs), which provides a significant advance in understanding the performance of optimal operations. DQN combines Q-learning and two deep artificial neural networks (ANNs), and acts as the agent to interact with the reservoir system through learning its states and providing actions. Three knowledge forms of learning considering the states, actions, and rewards were constructed to improve the interpretability of operation strategies. The impacts of these knowledge forms and DRL learning parameters on operation performance were analyzed. The DRL framework was tested on the Huanren hydropower system in China, using 400-year synthetic flow data for training and 30-year observed flow data for verification. The discretization levels of reservoir water level and energy output yield contrasting effects: finer discretization of water level improved performance in terms of annual hydropower generated and hydropower production reliability; however, finer discretization of hydropower production can reduce search efficiency, and thus the resulting DRL performance. Compared with benchmark algorithms including dynamic programming, stochastic dynamic programming, and decision tree, the proposed DRL approach can effectively factor in future inflow uncertainties when determining optimal operations and can generate markedly higher hydropower. This study provides new knowledge of the performance of DRL in the context of hydropower system characteristics and data input features, and shows promise for potentially being implemented in practice to derive operation policies that can be updated automatically by learning from new data.
publisherASCE
titleDeep Reinforcement Learning for Optimal Hydropower Reservoir Operation
typeJournal Paper
journal volume147
journal issue8
journal titleJournal of Water Resources Planning and Management
identifier doi10.1061/(ASCE)WR.1943-5452.0001409
journal fristpage04021045-1
journal lastpage04021045-15
page15
treeJournal of Water Resources Planning and Management:;2021:;Volume ( 147 ):;issue: 008
contenttypeFulltext


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