Silvio Ferrero

Certification of autoencoder-based models for dynamical systems

Deplano, Diego;Giua, Alessandro;Franceschelli, Mauro
Ultimo
2025-01-01

Abstract

Deep learning models have emerged as powerful tools for modeling complex dynamical systems, offering data-driven alternatives to traditional identification techniques. Among them, autoencoder-based architectures have gained popularity due to their ability to extract low-dimensional latent representations starting from high-dimensional information. However, a major challenge persists: assessing the reliability of these models, especially in control tasks where prediction errors can have critical consequences. In this work, we propose an optimization-based certification approach to quantify the worst-case prediction error of ReLU-activated autoencoder models of dynamical systems. By formulating a targeted Mixed-Integer Quadratic Programming, our approach identifies data sequences that maximize the deviation between the model’s predicted output and the true system response.
2025
Inglese
2025 IEEE 64th Conference on Decision and Control (CDC)
979-8-3315-2627-6
979-8-3315-2628-3
IEEE
401
406
6
2025 IEEE 64th Conference on Decision and Control (CDC)
Esperti anonimi
9-12 December, 2025
Rio de Janeiro, Brasil
internazionale
scientifica
Deep learning; Autoencoders; Predictive models; Data models; System identification; Reliability; Quadratic programming; Data mining; Dynamical systems; Certification
no
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Ledda, Marco; Deplano, Diego; Giua, Alessandro; Franceschelli, Mauro
273
4
4.1 Contributo in Atti di convegno
partially_open
info:eu-repo/semantics/conferencePaper
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