• Title of article

    Integral reinforcement learning and experience replay for adaptive optimal control of partially-unknown constrained-input continuous-time systems

  • Author/Authors

    Modares، نويسنده , , Hamidreza and Lewis، نويسنده , , Frank L. and Naghibi-Sistani، نويسنده , , Mohammad-Bagher، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2014
  • Pages
    10
  • From page
    193
  • To page
    202
  • Abstract
    In this paper, an integral reinforcement learning (IRL) algorithm on an actor–critic structure is developed to learn online the solution to the Hamilton–Jacobi–Bellman equation for partially-unknown constrained-input systems. The technique of experience replay is used to update the critic weights to solve an IRL Bellman equation. This means, unlike existing reinforcement learning algorithms, recorded past experiences are used concurrently with current data for adaptation of the critic weights. It is shown that using this technique, instead of the traditional persistence of excitation condition which is often difficult or impossible to verify online, an easy-to-check condition on the richness of the recorded data is sufficient to guarantee convergence to a near-optimal control law. Stability of the proposed feedback control law is shown and the effectiveness of the proposed method is illustrated with simulation examples.
  • Keywords
    Integral reinforcement learning , Experience replay , optimal control , INPUT CONSTRAINTS , NEURAL NETWORKS
  • Journal title
    Automatica
  • Serial Year
    2014
  • Journal title
    Automatica
  • Record number

    1449623