Home /Research /DAE-Embedded Neural Control Verification for Shipboard Microgrids under Transient Shocks
OTHER

DAE-Embedded Neural Control Verification for Shipboard Microgrids under Transient Shocks

Fei Feng, Lizhi Wang, Ziqian Liu

Year
2026
Access
Open access

Abstract

Neural control offers strong potential for handling highly nonlinear dynamics in shipboard microgrids (SMGs), yet its black-box nature can trigger abrupt control spikes and actuator saturation during initial transient shocks. This letter devises a formal verification method for SMG neural controller to assess its shock responses. Our contributions include: 1) a set-based SMG differential-algebraic equation(DAE) model compatible with set propagation; 2) a DAE-embedded bound propagation approach to compute tight envelopes of all possible neural control output. Extensive case studies demonstrate the effectiveness of the devised method in formally certifying SMG control performance under uncertain disturbances.

Keywords

eess.SY

Related papers

Browse all OTHER papers