Backstepping Control of PDEs on Domains with Graph-Monotone Boundaries
Mohamed Camil Belhadjoudja

TL;DR
This paper introduces a novel backstepping control approach for PDEs on complex domains with graph-monotone boundaries, avoiding the limitations of domain extension methods and enabling more straightforward control design.
Contribution
It proposes a new framework for backstepping control on non-parallelepiped, asymmetric domains, expanding applicability beyond traditional symmetry-based methods.
Findings
Domain extension method is unnecessary for certain asymmetric domains.
A control strategy similar to parallelepiped domains can be applied to complex shapes.
The approach simplifies control design for PDEs on non-standard domains.
Abstract
Despite the extensive body of work on backstepping for one-dimensional PDEs, results in higher dimensions remain comparatively limited. Most available methods either exploit particular symmetries of the PDE or address problems posed on parallelepiped domains. To the best of our knowledge, the only approach that enables the design of backstepping controllers on non-parallelepiped regions without symmetry assumptions is the domain extension technique. This method, however, presents several drawbacks. In particular, the control input at each time instant is obtained by simulating a PDE on an extended domain, from which the actual input on the original domain is approximated. By contrast, in the one-dimensional setting, once the time-independent backstepping gain kernel is known, the control input can be computed in closed form as a feedback depending solely on the state at that same…
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Taxonomy
TopicsStability and Controllability of Differential Equations · Control and Stability of Dynamical Systems · Model Reduction and Neural Networks
