Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing complexity of dynamic systems. It is a mature and well understood field of study that has been applied to large linear dynamic systems with great success. However, the continued scaling of integrated micro-systems, the use of new technologies, and aggressive mixed-signal design has forced designers to consider nonlinear effects for more accurate model representations. This has created the need for a methodology to generate compact models from nonlinear systems of high dimensionality, since only such a solution will give an accurate description for current and future complex systems.The goal of this research is to develop a methodology for the m...
We present a novel, general approach towards model-order reduc-tion (MOR) of nonlinear systems that ...
Refined models for MOS-devices and increasing complexity of circuit designs cause the need for Model...
In this paper we present an approach to the nonlinear model reduction based on representing the nonl...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
Higher-level representations (macromodels, reduced-order models) abstract away unnecessary implement...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Mathematics, 1999.Includes bibliograp...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
This paper describes a novel approach to the problem of model order reduction (MOR) of very large no...
We introduce a data-driven order reduction method for nonlinear control systems, drawing on recent p...
In this document we review the status of existing techniques for nonlinear model order reduction by ...
AbstractIn this paper we analyze and expand a recently developed approach to Model Order Reduction (...
Large complex mathematical models are regularly used for simulation and prediction. However, in cont...
Estimation of an optimal order for reduced models is a challenging task and is often based on heuris...
Mathematical models of networked systems usually take the form of large-scale, nonlinear differentia...
<p>In applications requiring model-constrained optimization, model reduction may be indispensable to...
We present a novel, general approach towards model-order reduc-tion (MOR) of nonlinear systems that ...
Refined models for MOS-devices and increasing complexity of circuit designs cause the need for Model...
In this paper we present an approach to the nonlinear model reduction based on representing the nonl...
Model order reduction (MOR) is a very powerful technique that is used to deal with the increasing co...
Higher-level representations (macromodels, reduced-order models) abstract away unnecessary implement...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Mathematics, 1999.Includes bibliograp...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
This paper describes a novel approach to the problem of model order reduction (MOR) of very large no...
We introduce a data-driven order reduction method for nonlinear control systems, drawing on recent p...
In this document we review the status of existing techniques for nonlinear model order reduction by ...
AbstractIn this paper we analyze and expand a recently developed approach to Model Order Reduction (...
Large complex mathematical models are regularly used for simulation and prediction. However, in cont...
Estimation of an optimal order for reduced models is a challenging task and is often based on heuris...
Mathematical models of networked systems usually take the form of large-scale, nonlinear differentia...
<p>In applications requiring model-constrained optimization, model reduction may be indispensable to...
We present a novel, general approach towards model-order reduc-tion (MOR) of nonlinear systems that ...
Refined models for MOS-devices and increasing complexity of circuit designs cause the need for Model...
In this paper we present an approach to the nonlinear model reduction based on representing the nonl...