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arxiv: 1506.00685 · v1 · pith:CBGFVY2Unew · submitted 2015-06-01 · 💻 cs.SY · cs.SY· math.OC

Model-based reinforcement learning for infinite-horizon approximate optimal tracking

classification 💻 cs.SY cs.SYmath.OC
keywords learningmodel-basedoptimalreinforcementtrackingapproximatedevelopedinfinite-horizon
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This paper provides an approximate online adaptive solution to the infinite-horizon optimal tracking problem for control-affine continuous-time nonlinear systems with unknown drift dynamics. Model-based reinforcement learning is used to relax the persistence of excitation condition. Model-based reinforcement learning is implemented using a concurrent learning-based system identifier to simulate experience by evaluating the Bellman error over unexplored areas of the state space. Tracking of the desired trajectory and convergence of the developed policy to a neighborhood of the optimal policy are established via Lyapunov-based stability analysis. Simulation results demonstrate the effectiveness of the developed technique.

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