This paper deals with the error processing problem of sparse identification of nonlinear dynamical systems(SINDy) through introducing the $L_\infty$ approximation to take place of the former $L_2$ approximation. The motivation is that the $L_\infty$ approximation could better describe the error phenomenon in the SINDy, which consists of the derivative approximation error and the measurement noise. Then, an iterative thresholding algorithm is proposed to solve the reformulated problem. 3 scenarios of possible errors are considered in the experiment. The results show that the $L_\infty$ approximation performs better or at least equal than the $L_2$ approximation in face of different error cases. Hence, it is reasonable to consider the $L_\inf...
We shed new light on the smoothness of optimization problems arising in prediction error parameter e...
Abstract—In many engineering applications, linear models are preferred, even if it is known that the...
We shed new light on the smoothness of optimization problems arising in prediction error parameter e...
In this paper, we give an in-depth error analysis for surrogate models generated by a variant of the...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
Sparse identification can be relevant in the automatic control field to solve several problems for n...
Distilling physical laws autonomously from data has been of great interest in many scientific areas....
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
abstract: This thesis considers the application of basis pursuit to several problems in system ident...
Sparse model identification enables the discovery of nonlinear dynamical systems purely from data; h...
Authors of papers retaincopyright and release the workunder a Creative CommonsAttribution 4.0 Intern...
International audienceLet A be an nxm matrix with m>n, and suppose that the underdetermined linear s...
Abstract Discovering governing equations of complex dynamical systems directly from dat...
Abstract—Optimal linear time-invariant (LTI) approximation of discrete-time nonlinear systems is stu...
We shed new light on the smoothness of optimization problems arising in prediction error parameter e...
Abstract—In many engineering applications, linear models are preferred, even if it is known that the...
We shed new light on the smoothness of optimization problems arising in prediction error parameter e...
In this paper, we give an in-depth error analysis for surrogate models generated by a variant of the...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
Sparse identification can be relevant in the automatic control field to solve several problems for n...
Distilling physical laws autonomously from data has been of great interest in many scientific areas....
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
Low complexity of a system model is essential for its use in real-time applications. However, sparse...
abstract: This thesis considers the application of basis pursuit to several problems in system ident...
Sparse model identification enables the discovery of nonlinear dynamical systems purely from data; h...
Authors of papers retaincopyright and release the workunder a Creative CommonsAttribution 4.0 Intern...
International audienceLet A be an nxm matrix with m>n, and suppose that the underdetermined linear s...
Abstract Discovering governing equations of complex dynamical systems directly from dat...
Abstract—Optimal linear time-invariant (LTI) approximation of discrete-time nonlinear systems is stu...
We shed new light on the smoothness of optimization problems arising in prediction error parameter e...
Abstract—In many engineering applications, linear models are preferred, even if it is known that the...
We shed new light on the smoothness of optimization problems arising in prediction error parameter e...