The paper presents a time domain method to identify structural modal parameters by fitting a discrete multivariate space-time model into noise corrupted, input-output measurement data. The subspace identification scheme proposed is an important characteristic of the method, leading to a deterministic and statistically bias free estimation of parameters. The identification model in this scheme, is kept to the minimum description order, in spite of the presence of noise in the system's input and output The method is used to estimate natural frequencies, damping factors and mode shapes in an experimental modal analysis test. (c) 2010 Elsevier Ltd. All rights reserved.2461634164
none3noMost time–frequency representations (TFRs) and signal analysis methods used for the identific...
Most time–frequency representations (TFRs) and signal analysis methods used for the identification o...
The present paper is a study of output-only modal estimation based on the stochastic subspace identi...
This paper presents a multivariable subspace-based identification method applied to experimental mod...
In this paper a multivariable subspace-based identification method is applied to experimental modal ...
In most of the available input-output covariance-driven subspace identification approaches the knowl...
In most of the available input-output covariance-driven subspace identification approaches the knowl...
The paper presents how direct estimation of the modal coordinate time series can be performed using ...
The paper focuses on the time domain output-only technique called Data-Driven Stochastic Subspace Id...
International audienceAn accurate prediction for the response of civil and mechanical engineering st...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
This dissertation proposes a novel time domain method for vibration modal parameter extraction which...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
Most time–frequency representations (TFRs) and signal analysis methods used for the identification o...
none3noMost time–frequency representations (TFRs) and signal analysis methods used for the identific...
Most time–frequency representations (TFRs) and signal analysis methods used for the identification o...
The present paper is a study of output-only modal estimation based on the stochastic subspace identi...
This paper presents a multivariable subspace-based identification method applied to experimental mod...
In this paper a multivariable subspace-based identification method is applied to experimental modal ...
In most of the available input-output covariance-driven subspace identification approaches the knowl...
In most of the available input-output covariance-driven subspace identification approaches the knowl...
The paper presents how direct estimation of the modal coordinate time series can be performed using ...
The paper focuses on the time domain output-only technique called Data-Driven Stochastic Subspace Id...
International audienceAn accurate prediction for the response of civil and mechanical engineering st...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
This dissertation proposes a novel time domain method for vibration modal parameter extraction which...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
Most time–frequency representations (TFRs) and signal analysis methods used for the identification o...
none3noMost time–frequency representations (TFRs) and signal analysis methods used for the identific...
Most time–frequency representations (TFRs) and signal analysis methods used for the identification o...
The present paper is a study of output-only modal estimation based on the stochastic subspace identi...