In this paper, based on deterministic learning, we propose a method for rapid recognition of dynamical patterns consisting of sampling sequences. First, for the sequences yielded by sampling a periodic or recurrent trajectory (a dynamical pattern) generated from a nonlinear dynamical system, a sampled-data deterministic learning algorithm is employed for modeling/identification of inherent system dynamics. Second, a definition is formulated to characterize similarities between sampling sequences (dynamical patterns) based on differences in the system dynamics. Third, by constructing a set of discrete-time dynamical estimators based on the learned knowledge, similarities between the test and training patterns are measured by using the averag...
The paper presents a new, revisited and unified approach to a linear continuous-time dynamic single-...
AbstractThe problem of multialternative recognition of nonstationary random processes is considered....
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...
In this paper, based on the deterministic learning mechanism, we present an alternative systematic s...
The aim of the paper is to show that linear dynamical systems can be quite useful when dealing with ...
In this paper, we investigate the problem of identifying or modeling nonlinear dynamical systems und...
This paper presents symbolic time series analysis (STSA) of multi-dimensional measurement data for p...
We address the problem of performing decision tasks and, in particular, classification and recogniti...
In this paper, our main concern is to establish new exponential stability-based identification resul...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
Many problems in the study of dynamical systems—including identification of effective order, detecti...
The thesis deals with theoretical aspects of the measurement, by correlation, of the kernels of time...
The problem of system identification is to learn the system dynamics from data. While classical syst...
The prediction of a single observable time series has been achieved with varying degrees of success....
The paper presents a new, revisited and unified approach to a linear continuous-time dynamic single-...
AbstractThe problem of multialternative recognition of nonstationary random processes is considered....
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...
In this paper, based on the deterministic learning mechanism, we present an alternative systematic s...
The aim of the paper is to show that linear dynamical systems can be quite useful when dealing with ...
In this paper, we investigate the problem of identifying or modeling nonlinear dynamical systems und...
This paper presents symbolic time series analysis (STSA) of multi-dimensional measurement data for p...
We address the problem of performing decision tasks and, in particular, classification and recogniti...
In this paper, our main concern is to establish new exponential stability-based identification resul...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
Many problems in the study of dynamical systems—including identification of effective order, detecti...
The thesis deals with theoretical aspects of the measurement, by correlation, of the kernels of time...
The problem of system identification is to learn the system dynamics from data. While classical syst...
The prediction of a single observable time series has been achieved with varying degrees of success....
The paper presents a new, revisited and unified approach to a linear continuous-time dynamic single-...
AbstractThe problem of multialternative recognition of nonstationary random processes is considered....
A " deterministic learning " (DL) theory was recently proposed for identification of nonlinear syste...