High dimensionality continues to be a challenge in computational systems biology. The kinetic models of many phenomena of interest are high-dimensional and complex, resulting in large computational effort in the simulation. Model order reduction (MOR) is a mathematical technique that is used to reduce the computational complexity of high-dimensional systems by approximation with lower dimensional systems, while retaining the important information and properties of the full order system. Proper orthogonal decomposition (POD) is a method based on Galerkin projection that can be used for reducing the model order. POD is considered an optimal linear approach since it obtains the minimum squared distance between the original model and its reduce...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/70...
Abstract: Model reduction is a central problem in mathematical biology. Reduced order models enable ...
BACKGROUND: Stochastic biochemical reaction networks are commonly modelled by the chemical master eq...
Order reduction methods are important tools for systems engineering and can be used, for example, fo...
Model order reduction is an integral approach to solving high-dimensional systems of ordinary and pa...
Biochemical reactions play a crucial role and tell us many about the behavior of the biological regu...
Abstract We present a model order reduction technique for parametrized nonlinear reaction-diffusion ...
For a nonlinear dynamical system that depends on parameters, the paper introduces a novel tensorial ...
Dimensionality reduction is a commonly used method in engineering sciences, such as control theory, ...
Many complex kinetic models in the field of biochemical reactions contain a large number of species ...
Minimization of energy in gradient systems leads to formation of oscillatory and Turing patterns in ...
BACKGROUND: Models of biochemical systems are typically complex, which may complicate the discovery ...
Abstract-In this paper we propose a model-order reduction method for chemical reaction networks gove...
peer reviewedThis paper addresses the problem of model reduction for dynamical system models that de...
International audienceCellular processes such as metabolism, decision making in development and diff...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/70...
Abstract: Model reduction is a central problem in mathematical biology. Reduced order models enable ...
BACKGROUND: Stochastic biochemical reaction networks are commonly modelled by the chemical master eq...
Order reduction methods are important tools for systems engineering and can be used, for example, fo...
Model order reduction is an integral approach to solving high-dimensional systems of ordinary and pa...
Biochemical reactions play a crucial role and tell us many about the behavior of the biological regu...
Abstract We present a model order reduction technique for parametrized nonlinear reaction-diffusion ...
For a nonlinear dynamical system that depends on parameters, the paper introduces a novel tensorial ...
Dimensionality reduction is a commonly used method in engineering sciences, such as control theory, ...
Many complex kinetic models in the field of biochemical reactions contain a large number of species ...
Minimization of energy in gradient systems leads to formation of oscillatory and Turing patterns in ...
BACKGROUND: Models of biochemical systems are typically complex, which may complicate the discovery ...
Abstract-In this paper we propose a model-order reduction method for chemical reaction networks gove...
peer reviewedThis paper addresses the problem of model reduction for dynamical system models that de...
International audienceCellular processes such as metabolism, decision making in development and diff...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/70...
Abstract: Model reduction is a central problem in mathematical biology. Reduced order models enable ...
BACKGROUND: Stochastic biochemical reaction networks are commonly modelled by the chemical master eq...