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Decoupled Data-Based Approach for Learning to Control Nonlinear Dynamical Systems | IEEE Journals & Magazine | IEEE Xplore

Decoupled Data-Based Approach for Learning to Control Nonlinear Dynamical Systems


Abstract:

This article addresses the problem of learning the optimal control policy for a nonlinear stochastic dynamical. This problem is subject to the “curse of dimensionality” a...Show More

Abstract:

This article addresses the problem of learning the optimal control policy for a nonlinear stochastic dynamical. This problem is subject to the “curse of dimensionality” associated with the dynamic programming method. This article proposes a novel decoupled data-based control (D2C) algorithm that addresses this problem using a decoupled, “open-loop–closed-loop,” approach. First, an open-loop deterministic trajectory optimization problem is solved using a black-box simulation model of the dynamical system. Then, closed-loop control is developed around this open-loop trajectory by linearization of the dynamics about this nominal trajectory. By virtue of linearization, a linear quadratic regulator based algorithm can be used for this closed-loop control. We show that the performance of D2C algorithm is approximately optimal. Moreover, simulation performance suggests a significant reduction in training time compared to other state-of-the-art algorithms.
Published in: IEEE Transactions on Automatic Control ( Volume: 67, Issue: 7, July 2022)
Page(s): 3582 - 3589
Date of Publication: 30 August 2021

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