Real systems are often complex, nonlinear, and noisy in various fields, including mathematics, natural science, and social science. We present the symplectic entropy (SymEn) measure as well as an analysis method based on SymEn to estimate the nonlinearity of a complex system by analyzing the given time series. The SymEn estimation is a kind of entropy based on symplectic principal component analysis (SPCA), which represents organized but unpredictable behaviors of systems. The key to SPCA is to preserve the global submanifold geometrical properties of the systems through a symplectic transform in the phase space, which is a kind of measure-preserving transform. The ability to preserve the global geometrical characteristics makes SymEn a tes...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
Nonlinear techniques have found an increasing interest in the dynamical analysis of various kinds of...
AbstractWe define and calculate the probability density in phase space and the information entropy o...
Real systems are often complex, nonlinear, and noisy in various fields, including mathematics, natur...
Experimental data are often very complex since the underlying dynamical system may be unknown and th...
This chapter serves to introduce the symplectic geometry theory in time series analysis and its appl...
Abstract The complex behavior of many systems in nature requires the application of robust methodolo...
Permutation entropy contains the information about the temporal structure associated with the underl...
Measure Theoretic Entropy and its important properties are studied. We introduce a method to compute...
In an attempt to quantify the dynamical complexity of power systems, we introduce the use of a non-l...
Interrelation of various approaches to the definition of the concept of entropy determines its wide ...
In this paper, we propose a new entropy calculation method to observe the temporal change of the ent...
Based on information theory, a number of entropy measures have been proposed since the 1990s to asse...
: A technique for identification and quantification of chaotic dynamics in experimental time series ...
We study here a method for estimating the topological entropy of a smooth dynamical system. Our meth...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
Nonlinear techniques have found an increasing interest in the dynamical analysis of various kinds of...
AbstractWe define and calculate the probability density in phase space and the information entropy o...
Real systems are often complex, nonlinear, and noisy in various fields, including mathematics, natur...
Experimental data are often very complex since the underlying dynamical system may be unknown and th...
This chapter serves to introduce the symplectic geometry theory in time series analysis and its appl...
Abstract The complex behavior of many systems in nature requires the application of robust methodolo...
Permutation entropy contains the information about the temporal structure associated with the underl...
Measure Theoretic Entropy and its important properties are studied. We introduce a method to compute...
In an attempt to quantify the dynamical complexity of power systems, we introduce the use of a non-l...
Interrelation of various approaches to the definition of the concept of entropy determines its wide ...
In this paper, we propose a new entropy calculation method to observe the temporal change of the ent...
Based on information theory, a number of entropy measures have been proposed since the 1990s to asse...
: A technique for identification and quantification of chaotic dynamics in experimental time series ...
We study here a method for estimating the topological entropy of a smooth dynamical system. Our meth...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
Nonlinear techniques have found an increasing interest in the dynamical analysis of various kinds of...
AbstractWe define and calculate the probability density in phase space and the information entropy o...