Model-order Reduction using Operator Inference Approach for Aeromechanics Analysis of Rotorcraft
SM-2026-VLADA-5176
1/27/2026
- Content
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Forward flight rotorcraft analyses typically require time-marching aeroelastic trim of coupled rotor-airframe models, which is expensive for repeated evaluations. This paper presents a non-intrusive model-order reduction framework based on Dynamic Mode Decomposition with control (DMDc) identified from snapshot data. A POD projection reduces the state dimension; the DMDc operators are identified in the reduced coordinates and used for fast time-marching. Two sequential maps are constructed: DMDc-A reconstructs aeroelastic sectional airloads from low-cost rigid-blade airloads, and DMDc-S predicts coupled deformation, including blade and airframe degrees of freedom (DOFs), from the reconstructed airloads. The method is demonstrated for the XV-15 airplane mode configuration using a stick airframe model and a coupled rotor-airframe solver. Over 160-400 knots, it is found that the surrogate reproduces blade airloads and structural deformation of blade and airframe.
- Citation
- Jeong, I., Cho, H., Chang, S., and Jung, S., "Model-order Reduction using Operator Inference Approach for Aeromechanics Analysis of Rotorcraft," Vertical Lift Aircraft Design and Aeromechanics Specialists Conference, San Jose, California, Jan 2026, San Jose, California, January 27, 2026, https://doi.org/10.4050/SM-2026-VLADA-5176.