This paper presents the application and design of a novel stochastic optimal control methodology based on the Q-learning method for solving the automatic generation control (AGC) under the new control performance standards (CPS) for the North American Electric Reliability Council (NERC). The aims of CPS are to relax the control constraint requirements of AGC plant regulation and enhance the frequency dispatch support effect from interconnected control areas. The NERC's CPS-based AGC problem is a dynamic stochastic decision problem that can be modeled as a reinforcement learning (RL) problem based on the Markov decision process theory. In this paper, the Q-learning method is adopted as the RL core algorithm with CPS values regarded as the re...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...
The goal of average reward reinforcement learning is to maximize the long-term average rewards of a ...
A novel hybrid Q-learning algorithm is introduced for the design of a linear adaptive optimal regula...
The NERC's control performance standard (CPS) based automatic generation control (AGC) problem is a ...
This paper proposes a stochastic optimal relaxed control methodology based on reinforcement learning...
AbstractThis paper formulates automatic generation control (AGC) for the power dispatch center as a ...
This study presents an improved hierarchical reinforcement learning (HRL) approach to deal with the ...
This paper presents a novel hierarchical correlated Q-learning (HCEQ) algorithm to solve the dynamic...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
This paper proposes a multiagent (MA) smart generation control (SGC) scheme for the coordination of ...
xv, 179 leaves : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EE 2013 ZhouWith...
AbstractConsidering our depleting resources, efficient energy production and transmission is the nee...
This paper formulates the automatic generation control (AGC) problem as a stochastic multistage deci...
Introduction: The emerging “net-zero carbon” police will accelerate the large-scale penetration of r...
peer reviewedIn this paper we present the basic principles of supervised learning and reinforcement ...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...
The goal of average reward reinforcement learning is to maximize the long-term average rewards of a ...
A novel hybrid Q-learning algorithm is introduced for the design of a linear adaptive optimal regula...
The NERC's control performance standard (CPS) based automatic generation control (AGC) problem is a ...
This paper proposes a stochastic optimal relaxed control methodology based on reinforcement learning...
AbstractThis paper formulates automatic generation control (AGC) for the power dispatch center as a ...
This study presents an improved hierarchical reinforcement learning (HRL) approach to deal with the ...
This paper presents a novel hierarchical correlated Q-learning (HCEQ) algorithm to solve the dynamic...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
This paper proposes a multiagent (MA) smart generation control (SGC) scheme for the coordination of ...
xv, 179 leaves : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EE 2013 ZhouWith...
AbstractConsidering our depleting resources, efficient energy production and transmission is the nee...
This paper formulates the automatic generation control (AGC) problem as a stochastic multistage deci...
Introduction: The emerging “net-zero carbon” police will accelerate the large-scale penetration of r...
peer reviewedIn this paper we present the basic principles of supervised learning and reinforcement ...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...
The goal of average reward reinforcement learning is to maximize the long-term average rewards of a ...
A novel hybrid Q-learning algorithm is introduced for the design of a linear adaptive optimal regula...