A proper orthogonal decomposition (POD)-based model reduction technique is utilized to develop a closed-loop nonlinear flow control system. By using POD, the Navier-Stokes partial differential equations are recast as a set of nonlinear ordinary differential equations in terms of the unknown Galerkin coefficients. A sliding mode estimator is then employed to estimate, in finite time, the unknown coefficients in the reduced-order model for the actuated flow system. The estimated coefficients are utilized as feedback measurements in a robust nonlinear control law. A rigorous analysis is utilized to analyze the convergence of the sliding mode estimator, and a Lyapunov-based stability analysis is used to prove asymptotic regulation of the flow f...
This paper addresses the problem of obtaining low-order models of fluid flows for the purpose of des...
Motivated by closed-loop flow control applications, a new formulation of the proper orthogonal decom...
The proper orthogonal decomposition(POD) is an approach to capture a reduced order basis functions f...
A proper orthogonal decomposition (POD)-based model reduction technique is utilized to develop a clo...
Novel sliding mode observer (SMO) and robust nonlinear control methods are presented, which are show...
Reliable control of fluid flow dynamic systems is critical in a wide range of engineering applicatio...
A robust nonlinear control method is developed for fluid flow velocity tracking, which formally addr...
A novel feedback control design method is proposed to tackle nonlinear fluid flow dynamics based on ...
This paper treats the question of feedback linearizing control of two-dimensional incompressible, un...
Reduced modelling techniques, based on a Proper Orthogonal Decomposition (POD) method, are applied t...
Air flow velocity field control is of crucial importance in aerospace applications to prevent the po...
This thesis deals with the practical and theoretical implications of model reduction for aerodynamic...
In the present study, a hierarchy of control-oriented reduced order models (ROMs) for fluid flows is...
In this article, an improved reduced order modelling approach, based on the proper orthogonal decomp...
A variety of partial differential equations (PDE) can govern the spatial and time evolution of fluid...
This paper addresses the problem of obtaining low-order models of fluid flows for the purpose of des...
Motivated by closed-loop flow control applications, a new formulation of the proper orthogonal decom...
The proper orthogonal decomposition(POD) is an approach to capture a reduced order basis functions f...
A proper orthogonal decomposition (POD)-based model reduction technique is utilized to develop a clo...
Novel sliding mode observer (SMO) and robust nonlinear control methods are presented, which are show...
Reliable control of fluid flow dynamic systems is critical in a wide range of engineering applicatio...
A robust nonlinear control method is developed for fluid flow velocity tracking, which formally addr...
A novel feedback control design method is proposed to tackle nonlinear fluid flow dynamics based on ...
This paper treats the question of feedback linearizing control of two-dimensional incompressible, un...
Reduced modelling techniques, based on a Proper Orthogonal Decomposition (POD) method, are applied t...
Air flow velocity field control is of crucial importance in aerospace applications to prevent the po...
This thesis deals with the practical and theoretical implications of model reduction for aerodynamic...
In the present study, a hierarchy of control-oriented reduced order models (ROMs) for fluid flows is...
In this article, an improved reduced order modelling approach, based on the proper orthogonal decomp...
A variety of partial differential equations (PDE) can govern the spatial and time evolution of fluid...
This paper addresses the problem of obtaining low-order models of fluid flows for the purpose of des...
Motivated by closed-loop flow control applications, a new formulation of the proper orthogonal decom...
The proper orthogonal decomposition(POD) is an approach to capture a reduced order basis functions f...