To solve the problem of optimal control for nonlinear system, Actor Critic Designs (ACD) can be utilized which use the concept of Reinforcement learning (RL) and function approximators such as Neural networks (NN). Traditional ACD methods require a model NN that needs to be trained offline. Recently, research focus has been shifted to model-free approaches that do not require any model information beforehand and can be applied for online control. This thesis furthers the online methods in ACD by developing Incremental Model based Action Dependent Dual Heuristic Programming (IADDHP). In IADDHP, local system dynamics is identified online which does not require any priori knowledge about the system thus making it essentially ‘model-free’. Expe...
This paper proposes a novel adaptive dynamic programming method, called Incremental model-based Glob...
OnlineAdaptive Flight Control is interesting in the context of growing complexity of aircraft system...
The scarcity of information regarding dynamics and full-state feedback increases the demand for a mo...
Online Reinforcement Learning is a possible solution for adaptive nonlinear flight control. In this ...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
Recent advancements in fault-tolerant flight control have involved model-free offline and online Rei...
Reinforcement learning is used as a type of adaptive flight control. Adaptive Critic Design (ACD) is...
Reinforcement learning is used as a type of adaptive flight control. Adaptive Critic Design (ACD) is...
A nonlinear control system comprising a network of networks is taught by the use of a two-phase lear...
Conventional discrete reinforcement learning methods fail in providing satisfactory performance for ...
Online Adaptive Flight Control is interesting in the context of growing complexity of aircraft syste...
Online Adaptive Flight Control is interesting in the context of growing complexity of aircraft syste...
Reinforcement Learning (RL) methods are relatively new in the field of aerospace guidance, navigatio...
This paper proposes a novel adaptive dynamic programming method, called Incremental model-based Glob...
OnlineAdaptive Flight Control is interesting in the context of growing complexity of aircraft system...
The scarcity of information regarding dynamics and full-state feedback increases the demand for a mo...
Online Reinforcement Learning is a possible solution for adaptive nonlinear flight control. In this ...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
In recent years Adaptive Critic Designs (ACDs) have been applied to adaptive flight control of uncer...
Recent advancements in fault-tolerant flight control have involved model-free offline and online Rei...
Reinforcement learning is used as a type of adaptive flight control. Adaptive Critic Design (ACD) is...
Reinforcement learning is used as a type of adaptive flight control. Adaptive Critic Design (ACD) is...
A nonlinear control system comprising a network of networks is taught by the use of a two-phase lear...
Conventional discrete reinforcement learning methods fail in providing satisfactory performance for ...
Online Adaptive Flight Control is interesting in the context of growing complexity of aircraft syste...
Online Adaptive Flight Control is interesting in the context of growing complexity of aircraft syste...
Reinforcement Learning (RL) methods are relatively new in the field of aerospace guidance, navigatio...
This paper proposes a novel adaptive dynamic programming method, called Incremental model-based Glob...
OnlineAdaptive Flight Control is interesting in the context of growing complexity of aircraft system...
The scarcity of information regarding dynamics and full-state feedback increases the demand for a mo...