Identification For Control Based on Neural Networks: Approximately Linearizable Models
- URL: http://arxiv.org/abs/2409.15858v2
- Date: Thu, 3 Oct 2024 10:59:15 GMT
- Title: Identification For Control Based on Neural Networks: Approximately Linearizable Models
- Authors: Maxime Thieffry, Alexandre Hache, Mohamed Yagoubi, Philippe Chevrel,
- Abstract summary: This work presents a control-oriented identification scheme for efficient control design and stability analysis of nonlinear systems.
Neural networks are used to identify a discrete-time nonlinear state-space model to approximate time-domain input-output behavior.
The network is constructed such that the identified model is approximately linearizable by feedback, ensuring that the control law trivially follows from the learning stage.
- Score: 42.15267357325546
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This work presents a control-oriented identification scheme for efficient control design and stability analysis of nonlinear systems. Neural networks are used to identify a discrete-time nonlinear state-space model to approximate time-domain input-output behavior of a nonlinear system. The network is constructed such that the identified model is approximately linearizable by feedback, ensuring that the control law trivially follows from the learning stage. After the identification and quasi-linearization procedures, linear control theory comes at hand to design robust controllers and study stability of the closed-loop system. The effectiveness and interest of the methodology are illustrated throughout the paper on popular benchmarks for system identification.
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