In recent years, the rapid growth of computing technology has enabled identifying mathematical models for vibration systems using measurement data instead of domain knowledge. Within this category, the method Sparse Identification of Nonlinear Dynamical Systems (SINDy) shows potential for interpretable identification. Therefore, in this work, a procedure of system identification based on the SINDy framework is developed and validated on a single-mass oscillator. To estimate the parameters in the SINDy model, two sparse regression methods are discussed. Compared with the Least Squares method with Sequential Threshold (LSST), which is the original estimation method from SINDy, the Least Squares method Post-LASSO (LSPL) shows better performanc...
Nonlinear phenomena are widely encountered in practical applications. The presence of nonlinearity m...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
System identification is a powerful technique to build a model from measurement data by using method...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
This study presents a relaxed model selection procedure based on the sparse regression system identi...
This study presents a relaxed model selection procedure based on the sparse regression system identi...
In this paper, an evolutionary-based sparse regression algorithm is proposed and applied onto experi...
Data-driven system identification procedures have recently enabled the reconstruction of governing d...
Data-driven system identification procedures have recently enabled the reconstruction of governing d...
In civil and mechanical engineering, it can be very difficult and expensive to excite existing real-...
Thesis (Ph.D.)--University of Washington, 2022The data-driven modeling approach has become increasin...
Nonlinear phenomena are widely encountered in practical applications. The presence of nonlinearity m...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
System identification is a powerful technique to build a model from measurement data by using method...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
In recent years, the rapid growth of computing technology has enabled identifying mathematical model...
This study presents a relaxed model selection procedure based on the sparse regression system identi...
This study presents a relaxed model selection procedure based on the sparse regression system identi...
In this paper, an evolutionary-based sparse regression algorithm is proposed and applied onto experi...
Data-driven system identification procedures have recently enabled the reconstruction of governing d...
Data-driven system identification procedures have recently enabled the reconstruction of governing d...
In civil and mechanical engineering, it can be very difficult and expensive to excite existing real-...
Thesis (Ph.D.)--University of Washington, 2022The data-driven modeling approach has become increasin...
Nonlinear phenomena are widely encountered in practical applications. The presence of nonlinearity m...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
System identification is a powerful technique to build a model from measurement data by using method...