Publication | Closed Access
Off-Policy Actor-Critic Structure for Optimal Control of Unknown Systems With Disturbances
229
Citations
42
References
2015
Year
Optimal ControlEngineeringOptimal Control MethodRobust ControlOff-policy Actor-critic StructureIntelligent ControlProcess ControlAdaptive ControlSystems EngineeringUnknown DisturbancesBusinessMathematical Control TheoryIntelligent SystemsRobot LearningLearning ControlLinear ControlIntegral Reinforcement LearningUnknown Systems
An optimal control method is developed for unknown continuous-time systems with unknown disturbances in this paper. The integral reinforcement learning (IRL) algorithm is presented to obtain the iterative control. Off-policy learning is used to allow the dynamics to be completely unknown. Neural networks are used to construct critic and action networks. It is shown that if there are unknown disturbances, off-policy IRL may not converge or may be biased. For reducing the influence of unknown disturbances, a disturbances compensation controller is added. It is proven that the weight errors are uniformly ultimately bounded based on Lyapunov techniques. Convergence of the Hamiltonian function is also proven. The simulation study demonstrates the effectiveness of the proposed optimal control method for unknown systems with disturbances.
| Year | Citations | |
|---|---|---|
Page 1
Page 1