A data-driven sparse identification method is developed to discover the underlying governing equations from noisy measurement data through the minimization of Multi-Step-Accumulation (MSA) in error. The method focuses on the multi-step model, while conventional sparse regression methods, such as the Sparse Identification of Nonlinear Dynamics method (SINDy), are one-step models. We adopt sparse representation and assume that the underlying equations involve only a small number of functions among possible candidates in a library. The new development in MSA is to use a multi-step model, i.e., predictions from an approximate evolution scheme based on initial points. Accordingly, the loss function comprises the total error at all time steps bet...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
We present the datasets for NeurIPS 2022 paper "Learning Dissipative Dynamics in Chaotic Systems." I...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
A data-driven sparse identification method is developed to discover the underlying governing equatio...
A data-driven sparse identification method is developed to discover the underlying governing equatio...
Many natural systems exhibit chaotic behaviour such as the weather, hydrology, neuroscience and popu...
We study the modeling and control of evolving dynamical systems. In particular we model the dynamic...
We study the modeling and control of evolving dynamical systems. In particular we model the dynamic...
This paper investigates the identification of global models from chaotic data corrupted by purely ad...
Thesis (Ph.D.)--University of Washington, 2022The data-driven modeling approach has become increasin...
Recent advances in computing algorithms and hardware have rekindled interest in developing high accu...
Abstract: In chaotic dynamical systems such as the weather, prediction errors grow faster in some ...
Abstract: In chaotic dynamical systems such as the weather, prediction errors grow faster in some ...
The advent of machine learning and the availability of big data brought a novel approach for researc...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
We present the datasets for NeurIPS 2022 paper "Learning Dissipative Dynamics in Chaotic Systems." I...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
A data-driven sparse identification method is developed to discover the underlying governing equatio...
A data-driven sparse identification method is developed to discover the underlying governing equatio...
Many natural systems exhibit chaotic behaviour such as the weather, hydrology, neuroscience and popu...
We study the modeling and control of evolving dynamical systems. In particular we model the dynamic...
We study the modeling and control of evolving dynamical systems. In particular we model the dynamic...
This paper investigates the identification of global models from chaotic data corrupted by purely ad...
Thesis (Ph.D.)--University of Washington, 2022The data-driven modeling approach has become increasin...
Recent advances in computing algorithms and hardware have rekindled interest in developing high accu...
Abstract: In chaotic dynamical systems such as the weather, prediction errors grow faster in some ...
Abstract: In chaotic dynamical systems such as the weather, prediction errors grow faster in some ...
The advent of machine learning and the availability of big data brought a novel approach for researc...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
With the rapid increase of available data for complex systems, there is great interest in the extrac...
We present the datasets for NeurIPS 2022 paper "Learning Dissipative Dynamics in Chaotic Systems." I...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...