In this paper, we investigate the problem of identifying or modeling nonlinear dynamical systems undergoing periodic and period-like (recurrent) motions. For accurate identification of nonlinear dynamical systems, the persistent excitation condition is normally required to be satisfied. Firstly, by using localized radial basis function networks, a relationship between the recurrent trajectories and the persistence of excitation condition is established. Secondly, for a broad class of recurrent trajectories generated from nonlinear dynamical systems, a deterministic learning approach is presented which achieves locally-accurate identification of the underlying system dynamics in a local region along the recurrent trajectory. This study revea...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
Long-time prediction of future states has been challenging in data-driven modeling of nonlinear dyna...
The paper presents two learning methods for nonlinear system identification. Both methods employ neu...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
A " deterministic learning " (DL) theory was recently proposed for identification of nonlinear syste...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
We study the problem of learning nonstatic attractors in recurrent networks. With concepts from dyna...
dentification and control of nonlinear dynamic systems are typically established on a case-by-case b...
Abstract Controlling nonlinear dynamical systems is a central task in many different areas of scienc...
This paper presents a type of recurrent artificial neural network architecture for identification of...
In this paper, based on deterministic learning, we propose a method for rapid recognition of dynamic...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
Controlling a high-dimensional dynamical system with continuous state and action spaces in a partial...
A fully local algorithm which can automatically detect and learn an unknown pattern is proposed for ...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
Long-time prediction of future states has been challenging in data-driven modeling of nonlinear dyna...
The paper presents two learning methods for nonlinear system identification. Both methods employ neu...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
A " deterministic learning " (DL) theory was recently proposed for identification of nonlinear syste...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
We study the problem of learning nonstatic attractors in recurrent networks. With concepts from dyna...
dentification and control of nonlinear dynamic systems are typically established on a case-by-case b...
Abstract Controlling nonlinear dynamical systems is a central task in many different areas of scienc...
This paper presents a type of recurrent artificial neural network architecture for identification of...
In this paper, based on deterministic learning, we propose a method for rapid recognition of dynamic...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
Controlling a high-dimensional dynamical system with continuous state and action spaces in a partial...
A fully local algorithm which can automatically detect and learn an unknown pattern is proposed for ...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
Long-time prediction of future states has been challenging in data-driven modeling of nonlinear dyna...
The paper presents two learning methods for nonlinear system identification. Both methods employ neu...