AbstractThis study investigates the complexity of the global set of output patterns for one-dimensional multi-layer cellular neural networks with input. Applying labeling to the output space produces a sofic shift space. Two invariants, namely spatial entropy and dynamical zeta function, can be exactly computed by studying the induced sofic shift space. This study gives sofic shift a realization through a realistic model. Furthermore, a new phenomenon, the broken of symmetry of entropy, is discovered in multi-layer cellular neural networks with input
Large networks of sparsely coupled, excitatory and inhibitory cells occur throughout the brain. For ...
Graph theory is a discrete branch of mathematics for designing and predicting a network. Some topolo...
The aim of this paper is to discuss several aspects regarding the dynamics and pattern formation in ...
This work investigates binary pattern formations of two-dimensional standard cellular neural network...
This study describes the spatial disorder of one-dimensional Cellular Neural Networks (CNN) with a b...
This investigation will describe the spatial disorder of one-dimensional Cellular Neural Net-works (...
AbstractLet Y⊆{−1,1}Z∞×n be the mosaic solution space of an n-layer cellular neural network. We deco...
Abstract. We consider a cellular neural network (CNN) with a bias term z in the integer lattice Z2 o...
The paper introduces a class of third-order nonsymmetric Cellular Neural Networks (CNNs), and shows ...
Abstract. The effect of boundary conditions on the global dynamics of cellular neural networks (CNNs...
[[abstract]]In this paper, two recursive formulas for computing the spatial entropy of two-dimension...
[[abstract]]This work investigates the complexity of one-dimensional cellular neural network mosaic ...
Copyright © 2013 Jung-Chao Ban, Chih-Hung Chang. This is an open access article distributed under th...
An investigation of spatial signal transduction in cellular networks Aiman Alam-Nazki1 and J Krishna...
Abstract — In this study, we propose a space-varying cellular neural network (CNN) designed by Hopfi...
Large networks of sparsely coupled, excitatory and inhibitory cells occur throughout the brain. For ...
Graph theory is a discrete branch of mathematics for designing and predicting a network. Some topolo...
The aim of this paper is to discuss several aspects regarding the dynamics and pattern formation in ...
This work investigates binary pattern formations of two-dimensional standard cellular neural network...
This study describes the spatial disorder of one-dimensional Cellular Neural Networks (CNN) with a b...
This investigation will describe the spatial disorder of one-dimensional Cellular Neural Net-works (...
AbstractLet Y⊆{−1,1}Z∞×n be the mosaic solution space of an n-layer cellular neural network. We deco...
Abstract. We consider a cellular neural network (CNN) with a bias term z in the integer lattice Z2 o...
The paper introduces a class of third-order nonsymmetric Cellular Neural Networks (CNNs), and shows ...
Abstract. The effect of boundary conditions on the global dynamics of cellular neural networks (CNNs...
[[abstract]]In this paper, two recursive formulas for computing the spatial entropy of two-dimension...
[[abstract]]This work investigates the complexity of one-dimensional cellular neural network mosaic ...
Copyright © 2013 Jung-Chao Ban, Chih-Hung Chang. This is an open access article distributed under th...
An investigation of spatial signal transduction in cellular networks Aiman Alam-Nazki1 and J Krishna...
Abstract — In this study, we propose a space-varying cellular neural network (CNN) designed by Hopfi...
Large networks of sparsely coupled, excitatory and inhibitory cells occur throughout the brain. For ...
Graph theory is a discrete branch of mathematics for designing and predicting a network. Some topolo...
The aim of this paper is to discuss several aspects regarding the dynamics and pattern formation in ...