2015
DOI: 10.1002/acs.2631
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Approximate optimal adaptive control for weakly coupled nonlinear systems: A neuro‐inspired approach

Abstract: Summary This paper proposes a new approximate dynamic programming algorithm to solve the infinite‐horizon optimal control problem for weakly coupled nonlinear systems. The algorithm is implemented as a three‐critic/four‐actor approximators structure, where the critic approximators are used to learn the optimal costs, while the actor approximators are used to learn the optimal control policies. Simultaneous continuous‐time adaptation of both critic and actor approximators is implemented, a method commonly known… Show more

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Cited by 3 publications
(1 citation statement)
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“…The paper by García‐Carrillo, Vamvoudakis, and Hespanha proposes a new approximate dynamic programming algorithm to solve the infinite‐horizon optimal control problem for weakly coupled nonlinear systems. The algorithm is implemented as a three‐critic/four‐actor approximators structure, where the critic approximators are used to learn the optimal costs, while the actor approximators are used to learn the optimal control policies.…”
Section: Editorialmentioning
confidence: 99%
“…The paper by García‐Carrillo, Vamvoudakis, and Hespanha proposes a new approximate dynamic programming algorithm to solve the infinite‐horizon optimal control problem for weakly coupled nonlinear systems. The algorithm is implemented as a three‐critic/four‐actor approximators structure, where the critic approximators are used to learn the optimal costs, while the actor approximators are used to learn the optimal control policies.…”
Section: Editorialmentioning
confidence: 99%