The estimation of modal parameters from a set of noisy measured data is a highly judgmental task, with user expertise playing a significant role in distinguishing between estimated physical and noise modes of a test-piece. Various methods have been developed to automate this procedure. The common approach is to identify models with different orders and cluster similar modes together. However, most proposed methods based on this approach suffer from high-dimensional optimization problems in either the estimation or clustering step. To overcome this problem, this study presents an algorithm for autonomous modal parameter estimation in which the only required optimization is performed in a three-dimensional space. To this end, a subspace-based...
The automation of modal parameter identification is important for processing big data with repeatabi...
Determination of the model order is a challenging problem in system identification, especially in ou...
This paper presents a comparison of two techniques used to estimate the statistical confidence inter...
The estimation of modal parameters from a set of noisy measured data is a highly judgmental task, wi...
The estimation of modal parameters from a set of measured data is a highly judgmental task, with use...
A crucial step when identifying the modal signature of systems using growing order parametric method...
Given measured data as estimated frequency responses of a quasi-linear system, there is a variety of...
Given measured data as estimated frequency responses of a quasi-linear system, there is a variety of...
This paper presents a newly developed method for obtaining the modal model with a proper model order...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
The automated modal identification has been playing an important role in online structural damage de...
The increasing interest in Machine Learning (ML) has revealed the potential for applications in many...
Recent developments in the field of modal-based damage detection and vibration-based monitoring have...
The present paper deals with the novel approach for clustering using the image feature of stabilizat...
Identifying modal parameters from vibration measurements is an essential step for modal analysis and...
The automation of modal parameter identification is important for processing big data with repeatabi...
Determination of the model order is a challenging problem in system identification, especially in ou...
This paper presents a comparison of two techniques used to estimate the statistical confidence inter...
The estimation of modal parameters from a set of noisy measured data is a highly judgmental task, wi...
The estimation of modal parameters from a set of measured data is a highly judgmental task, with use...
A crucial step when identifying the modal signature of systems using growing order parametric method...
Given measured data as estimated frequency responses of a quasi-linear system, there is a variety of...
Given measured data as estimated frequency responses of a quasi-linear system, there is a variety of...
This paper presents a newly developed method for obtaining the modal model with a proper model order...
The paper presents an alternative approach for the automatic selection of modal parameter estimates ...
The automated modal identification has been playing an important role in online structural damage de...
The increasing interest in Machine Learning (ML) has revealed the potential for applications in many...
Recent developments in the field of modal-based damage detection and vibration-based monitoring have...
The present paper deals with the novel approach for clustering using the image feature of stabilizat...
Identifying modal parameters from vibration measurements is an essential step for modal analysis and...
The automation of modal parameter identification is important for processing big data with repeatabi...
Determination of the model order is a challenging problem in system identification, especially in ou...
This paper presents a comparison of two techniques used to estimate the statistical confidence inter...