In this paper, we present a state-space system identification technique for a class of hybrid LTP systems, formulated in the frequency domain based on input-output data. Other than a few notable exceptions, the majority of studies in the state-space system identification literature (e.g. subspace methods) focus only on LTI systems. Our goal in this study is to develop a technique for estimating time-periodic system and input matrices for a hybrid LTP system, assuming that full state measurements are available. To this end, we formulate our problem in a linear regression framework using Fourier transformations, and estimate Fourier series coefficients of the time-periodic system and input matrices using a least-squares solution. We illustrat...
When the input-output data of a system are given and the mathematical model of this system is desire...
For Linear Time-Invariant (LTI) systems, Frequency Response Functions (FRFs) facilitate dynamics ana...
Abstract: We present a novel identification framework that enables the use of first-order methods wh...
In this paper, we present a state-space system identification technique for a class of hybrid LTP sy...
This paper proposes a new methodology for subspace-based state-space identification for linear time-...
In this paper, we propose a novel frequency domain state-space identification method for switching l...
In this paper, we propose a novel frequency domain state-space identification method for switching l...
A variety of systems can be faithfully modeled as linear with coefficients that vary periodically wi...
Abstract — Few tools exist for identifying the dynamics of rhythmic systems from input–output data. ...
A linear periodically time-varying (LPTV) system is a linear time-varying system with the coefficien...
ii This work presents a new nonlinear, experimental system identification technique, dubbed the Nonl...
In this paper we present a novel non-iterative algorithm for identifying linear time-invariant discr...
\u97Identication of time-invariant linear dynamic systems is a mature subject. In this contribution ...
ABSTRACT A variety of systems can be faithfully modeled as linear with coefficients that vary period...
Subsampling of a linear periodically time-varying system results in a collection of linear time-inva...
When the input-output data of a system are given and the mathematical model of this system is desire...
For Linear Time-Invariant (LTI) systems, Frequency Response Functions (FRFs) facilitate dynamics ana...
Abstract: We present a novel identification framework that enables the use of first-order methods wh...
In this paper, we present a state-space system identification technique for a class of hybrid LTP sy...
This paper proposes a new methodology for subspace-based state-space identification for linear time-...
In this paper, we propose a novel frequency domain state-space identification method for switching l...
In this paper, we propose a novel frequency domain state-space identification method for switching l...
A variety of systems can be faithfully modeled as linear with coefficients that vary periodically wi...
Abstract — Few tools exist for identifying the dynamics of rhythmic systems from input–output data. ...
A linear periodically time-varying (LPTV) system is a linear time-varying system with the coefficien...
ii This work presents a new nonlinear, experimental system identification technique, dubbed the Nonl...
In this paper we present a novel non-iterative algorithm for identifying linear time-invariant discr...
\u97Identication of time-invariant linear dynamic systems is a mature subject. In this contribution ...
ABSTRACT A variety of systems can be faithfully modeled as linear with coefficients that vary period...
Subsampling of a linear periodically time-varying system results in a collection of linear time-inva...
When the input-output data of a system are given and the mathematical model of this system is desire...
For Linear Time-Invariant (LTI) systems, Frequency Response Functions (FRFs) facilitate dynamics ana...
Abstract: We present a novel identification framework that enables the use of first-order methods wh...