Adaptive dynamic programming (ADP) controller is a powerful neural network based control technique that has been investigated, designed, and tested in a wide range of applications for solving optimal control problems in complex systems. The performance of ADP controller is usually obtained by long training periods because the data usage efficiency is low as it discards the samples once used. Experience replay is a powerful technique showing potential to accelerate the training process of learning and control. However, its existing design can not be directly used for model-free ADP design, because it focuses on the forward temporal difference (TD) information (e.g., state-action pair) between the current time step and the future time step, a...
This thesis develops approximate dynamic programming (ADP) strategies suitable for process control p...
Dynamic Programming (DP) is a principled way to design optimal controllers for certain classes of no...
In this paper, we present a new adaptive dynamic programming approach by integrating a reference net...
Stability analysis and controller design are among the most important issues in feedback control pro...
Humans have the ability to make use of experience while performing system identification and selecti...
Humans have the ability to make use of experience while performing system identification and selecti...
Humans have the ability to make use of experience while selecting their control actions for distinct...
Some three decades ago, certain computational intelligence methods of reinforcement learning were re...
In this dissertation, optimal switching in switched systems using adaptive dynamic programming (ADP)...
In this dissertation, optimal switching in switched systems using adaptive dynamic programming (ADP)...
In this dissertation, optimal switching in switched systems using adaptive dynamic programming (ADP)...
Two distinguishing features of humanlike control vis-a-vis current technological control are the abi...
Adaptive dynamic programming (ADP) and reinforcement learning are quite relevant to each other when ...
Adaptive dynamic programming (ADP) and reinforcement learning are quite relevant to each other when ...
Two distinguishing features of humanlike control vis-a-vis current technological control are the abi...
This thesis develops approximate dynamic programming (ADP) strategies suitable for process control p...
Dynamic Programming (DP) is a principled way to design optimal controllers for certain classes of no...
In this paper, we present a new adaptive dynamic programming approach by integrating a reference net...
Stability analysis and controller design are among the most important issues in feedback control pro...
Humans have the ability to make use of experience while performing system identification and selecti...
Humans have the ability to make use of experience while performing system identification and selecti...
Humans have the ability to make use of experience while selecting their control actions for distinct...
Some three decades ago, certain computational intelligence methods of reinforcement learning were re...
In this dissertation, optimal switching in switched systems using adaptive dynamic programming (ADP)...
In this dissertation, optimal switching in switched systems using adaptive dynamic programming (ADP)...
In this dissertation, optimal switching in switched systems using adaptive dynamic programming (ADP)...
Two distinguishing features of humanlike control vis-a-vis current technological control are the abi...
Adaptive dynamic programming (ADP) and reinforcement learning are quite relevant to each other when ...
Adaptive dynamic programming (ADP) and reinforcement learning are quite relevant to each other when ...
Two distinguishing features of humanlike control vis-a-vis current technological control are the abi...
This thesis develops approximate dynamic programming (ADP) strategies suitable for process control p...
Dynamic Programming (DP) is a principled way to design optimal controllers for certain classes of no...
In this paper, we present a new adaptive dynamic programming approach by integrating a reference net...