Recovering nonlinear dynamics from non-uniform observations: A physics-based identification approach with practical case studies
Cesare Donati, Martina Mammarella, Fabrizio Dabbene, Carlo Novara, Constantino Lagoa

TL;DR
This paper introduces a physics-based identification framework capable of accurately recovering nonlinear system dynamics from non-uniform, incomplete, or aggregated observational data, supported by theoretical analysis and practical case studies.
Contribution
It presents a novel, flexible approach combining physical principles with black-box models to handle diverse non-uniform data scenarios in system identification.
Findings
Successfully identified parameters from real data with missing samples.
Accurately reconstructed dynamics of a Lotka-Volterra system with aggregated observations.
Theoretical bounds on estimation errors due to non-uniform measurements.
Abstract
Uniform and smooth data collection is often infeasible in real-world scenarios. In this paper, we propose an identification framework to effectively handle the so-called non-uniform observations, i.e., data scenarios that include missing measurements, multiple runs, or aggregated observations. The goal is to provide a general approach for accurately recovering the overall dynamics of possibly nonlinear systems, allowing the capture of the system behavior over time from non-uniform observations. The proposed approach exploits prior knowledge by integrating domain-specific, interpretable, physical principles with black-box approximators, proving significant flexibility and adaptability in handling different types of non-uniform measurements, and addressing the limitations of traditional linear and black-box methods. The description of this novel framework is supported by a theoretical…
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Taxonomy
TopicsControl Systems and Identification · Neural Networks and Applications · Fault Detection and Control Systems
