An adaptive projection-based reduced-order model (ROM) formulation is presented for model-order reduction of problems featuring chaotic and convection-dominant physics. An efficient method is formulated to adapt the basis at every time-step of the on-line execution to account for the unresolved dynamics. The adaptive ROM is formulated in a Least-Squares setting using a variable transformation to promote stability and robustness. An efficient strategy is developed to incorporate non-local information in the basis adaptation, significantly enhancing the predictive capabilities of the resulting ROMs. A detailed analysis of the computational complexity is presented, and validated. The adaptive ROM formulation is shown to require negligible offl...
<p>Polynomial chaos expansions provide an efficient and robust framework to analyze and quantify unc...
A gradient of a quantity-of-interest J with respect to problem parameters can augment the utility of...
We present a data-driven or non-intrusive reduced-order model (NIROM) which is capable of making pre...
Accurate, efficient prediction of reacting flow systems is challenging due to stiff reaction kinetic...
We present methodologies for reduced order modeling of convection dominated flows. Accordingly, thre...
Many-query scientific and industrial applications, such as design, demand affordable yet accurate co...
Computational modeling is a pillar of modern aerospace research and is increasingly becoming more im...
Although projection-based reduced-order models (ROMs) for parameterized nonlinear dynamical systems ...
Recent advances in computing algorithms and hardware have rekindled interest in developing high accu...
This work explores the physics-driven machine learning technique Operator Inference (OpInf) for pred...
A quadratic approximation manifold is presented for performing nonlinear, projection-based, model or...
This report describes work performed from October 2007 through September 2009 under the Sandia Labor...
The time domain solution of a chaotic system governed by a set of nonlinear equations is computation...
Model predictive controllers use dynamics models to solve constrained optimal control problems. Howe...
Reduced order models are computationally inexpensive approximations that capture the important dynam...
<p>Polynomial chaos expansions provide an efficient and robust framework to analyze and quantify unc...
A gradient of a quantity-of-interest J with respect to problem parameters can augment the utility of...
We present a data-driven or non-intrusive reduced-order model (NIROM) which is capable of making pre...
Accurate, efficient prediction of reacting flow systems is challenging due to stiff reaction kinetic...
We present methodologies for reduced order modeling of convection dominated flows. Accordingly, thre...
Many-query scientific and industrial applications, such as design, demand affordable yet accurate co...
Computational modeling is a pillar of modern aerospace research and is increasingly becoming more im...
Although projection-based reduced-order models (ROMs) for parameterized nonlinear dynamical systems ...
Recent advances in computing algorithms and hardware have rekindled interest in developing high accu...
This work explores the physics-driven machine learning technique Operator Inference (OpInf) for pred...
A quadratic approximation manifold is presented for performing nonlinear, projection-based, model or...
This report describes work performed from October 2007 through September 2009 under the Sandia Labor...
The time domain solution of a chaotic system governed by a set of nonlinear equations is computation...
Model predictive controllers use dynamics models to solve constrained optimal control problems. Howe...
Reduced order models are computationally inexpensive approximations that capture the important dynam...
<p>Polynomial chaos expansions provide an efficient and robust framework to analyze and quantify unc...
A gradient of a quantity-of-interest J with respect to problem parameters can augment the utility of...
We present a data-driven or non-intrusive reduced-order model (NIROM) which is capable of making pre...