2024
DOI: 10.1002/rnc.7630
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Concurrent learning for adaptive pontryagin's maximum principle of nonlinear systems with inequality constraints

Bin Zhang,
Yuqi Zhang,
Yingmin Jia

Abstract: In this article, a finite‐horizon adaptive Pontryagin's maximum principle is presented for nonlinear systems with state inequality constraints. Concurrent learning (CL) technique is adopted to identify the unknown parameters of the dynamic systems. Based on the identification model, a novel adaptive iterative algorithm under the Pontryagin's framework is introduced to learn the finite‐horizon optimal control solution. Convergence analysis of the algorithm is provided by showing that the cost function sequence … Show more

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