A Physics-Informed Scenario Approach with Data Mitigation for Safety Verification of Nonlinear Systems
For engineers verifying safety of nonlinear systems with imprecise models, this method reduces data requirements for scenario-based barrier certificate construction.
This paper proposes a physics-informed scenario approach for safety verification of nonlinear systems that reduces the required dataset size by selecting data samples close to a physics-based model, validated through three case studies.
This paper develops a physics-informed scenario approach for safety verification of nonlinear systems using barrier certificates (BCs) to ensure that system trajectories remain within safe regions over an infinite time horizon. Designing BCs often relies on an accurate dynamics model; however, such models are often imprecise due to the model complexity involved, particularly when dealing with highly nonlinear systems. In such cases, while scenario approaches effectively address the safety problem using collected data to construct a guaranteed BC for the unknown dynamical system, they often require solving an optimization problem with substantial amounts of data. To address this, we propose a physics-informed scenario approach that selects data samples such that the outputs of the physics-based model and the observed data are sufficiently close. This approach guides the scenario optimization process to eliminate redundant samples and potentially reduce the required dataset size. We validate our approach through three case studies, showcasing its practical application in reducing the required data.