Physics-Informed Pontryagin Neural Networks for Path-Constrained Optimal Control Problems

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1 Scopus citations

Abstract

Solving constrained optimal control problems (OCPs) is essential to ensure safety in real-world scenarios. Recent machine learning techniques have shown promise in addressing OCPs. This paper introduces a novel methodology for solving OCPs with path constraints using physics-informed neural networks. Specifically, Pontryagin neural networks (PoNNs), which solve the boundary value problem arising from the indirect method and Pontryagin minimum principle, are extended to handle path constraints. In this new formulation, path constraints are incorporated into the Hamiltonian through additional Lagrange multipliers, which are treated as optimization variables. The complementary slackness conditions are enforced by ensuring the zero value of the Fischer– Burmeister function within the loss functions to be minimized. This approach adds minimal complexity to the original PoNN framework, as it avoids the need for continuation methods, penalty functions, or additional differential equations, which are often required in traditional methods to solve path-constrained OCPs via the indirect method. Numerical results for a fixed-time energy-optimal rendezvous with various path constraints and a constrained optimal rocket ascent demonstrate the effectiveness of the proposed method in solving path-constrained OCPs.

Original languageEnglish (US)
Pages (from-to)1861-1877
Number of pages17
JournalJournal of Guidance, Control, and Dynamics
Volume48
Issue number8
DOIs
StatePublished - Aug 2025
Externally publishedYes

ASJC Scopus subject areas

  • Control and Systems Engineering
  • Aerospace Engineering
  • Space and Planetary Science
  • Applied Mathematics
  • Electrical and Electronic Engineering

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