Optimal 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 st...
With increasing pressure on water resources availability and dependability and constraints due to en...
Optimal management policies for water reservoir operation are generally designed via stochastic dyna...
Historically, the two most widely practiced methods for optimal reservoir operation have been dynami...
Changes in demand, various hydrological inputs, and environmental stressors are among issues that wa...
Reservoir systems operations are challenging given that they must function to meet conflicting goals...
We explore the use of deep reinforcement learning to provide strategies for long term scheduling of ...
2011 Spring.Includes bibliographical references.Complex water resources systems often involve a wide...
The main objective of reservoir operations planning is to determine the optimum operation policies ...
Although being one of the most important approaches to design optimal water reservoir operating poli...
A general control policy framework based on deep reinforcement learning (DRL) is introduced for clos...
Oil and gas field development optimization, which involves the determination of the optimal number o...
Abstract: After development of any optimization model a post-optimization simulation is needed for t...
Today the oil and gas industry is in the midst of a digital revolution of reducing cost and gaining ...
Dispatching strategies for gas turbines (GTs) are changing in modern electricity grids. A growing in...
Multi-reservoir systems management is complex because of the uncertainty on future events and the va...
With increasing pressure on water resources availability and dependability and constraints due to en...
Optimal management policies for water reservoir operation are generally designed via stochastic dyna...
Historically, the two most widely practiced methods for optimal reservoir operation have been dynami...
Changes in demand, various hydrological inputs, and environmental stressors are among issues that wa...
Reservoir systems operations are challenging given that they must function to meet conflicting goals...
We explore the use of deep reinforcement learning to provide strategies for long term scheduling of ...
2011 Spring.Includes bibliographical references.Complex water resources systems often involve a wide...
The main objective of reservoir operations planning is to determine the optimum operation policies ...
Although being one of the most important approaches to design optimal water reservoir operating poli...
A general control policy framework based on deep reinforcement learning (DRL) is introduced for clos...
Oil and gas field development optimization, which involves the determination of the optimal number o...
Abstract: After development of any optimization model a post-optimization simulation is needed for t...
Today the oil and gas industry is in the midst of a digital revolution of reducing cost and gaining ...
Dispatching strategies for gas turbines (GTs) are changing in modern electricity grids. A growing in...
Multi-reservoir systems management is complex because of the uncertainty on future events and the va...
With increasing pressure on water resources availability and dependability and constraints due to en...
Optimal management policies for water reservoir operation are generally designed via stochastic dyna...
Historically, the two most widely practiced methods for optimal reservoir operation have been dynami...