State consistence of data-driven reduced order models for parametric aeroelastic analysis

被引:0
作者
William C. Krolick
Jung I. Shu
Yi Wang
Kapil Pant
机构
[1] CFD Research Corporation,
[2] University of South Carolina,undefined
来源
SN Applied Sciences | 2021年 / 3卷
关键词
Reduced order model; Data-driven; System identification; Aerodynamics; Aeroelasticity;
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摘要
This paper investigates the state consistence of parametric data-driven reduced order models (ROMs) in a state-space form obtained by various system identification methods, including autoregressive exogenous (ARX) and subspace identification (N4SID), for aeroelastic analysis in varying flight conditions. The target flight envelop is first partitioned into discrete grid points, on each of which an aerodynamic ROM is constructed using system identification to capture the dependence of the generalized aerodynamic force on the generalized displacement of structural modes. High-fidelity aeroelastic modal perturbation simulations are used to generate the ROM training and verification data. Aerodynamic ROMs not on the grid point are obtained by interpolating those at neighboring grid points. Through a thorough analysis of the model coefficients and pole migration, it is found that only the ARX-based aerodynamic ROM preserves the state consistence, and hence, allowing direct interpolation of system matrices at the non-grid point and rapid aerodynamic ROM database development in the entire flight parameter space. In contrast, N4SID-based ROM destroys the state consistence and yields physically meaningless results when ROMs are interpolated. The origin of the difference in the state consistence caused by both methods is also discussed. The interpolated ARX aerodynamic ROMs coupled with the structural ROM for parametric aeroelastic analysis exhibit excellent agreement with the high fidelity full order model (mostly <5% relative error) and salient computational efficiency.
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  • [1] Ghoreyshi M(2014)Reduced order unsteady aerodynamic modeling for stability and control analysis using computational fluid dynamics Prog Aerosp Sci 71 167-217
  • [2] Jirasek A(2012)Computational investigation into the use of response functions for aerodynamic-load modeling AIAA J 50 1314-1327
  • [3] Cummings RM(2019)Generation of a reduced-order model of an unmanned combat air vehicle using indicial response functions Aerosp Sci Technol 95 105510-62
  • [4] Ghoreyshi M(2005)Identification of nonlinear aeroelastic systems based on the Volterra theory: progress and opportunities Nonlinear Dyn 39 25-1812
  • [5] Jirásek A(2012)Reduced-order modeling of flutter and limit-cycle oscillations using the sparse Volterra series J Aircr 49 1803-556
  • [6] Cummings RM(2001)Efficient aeroelastic analysis using computational unsteady aerodynamics J Aircr 38 547-627
  • [7] van Rooij MP(1985)An eigensystem realization algorithm for modal parameter identification and model reduction J Guid, Control, Dyn 8 620-329
  • [8] Silva W(1993)Identification of observer/Kalman filter Markov parameters-theory and experiments J Guid Control Dyn 16 320-93
  • [9] Balajewicz M(1994)N4SID: subspace algorithms for the identification of combined deterministic-stochastic systems Automatica 30 75-1464
  • [10] Dowell E(2019)Dynamic mode decomposition with exogenous input for data-driven modeling of unsteady flows Phys Fluid 31 057106-30