The computational paradigm represented by Cellular Neural/nonlinear Networks (CNN) and the CNN Universal Machine (CNN-UM) as a Cellular Wave Computer, gives new perspectives for computational physics. Many numerical problems and simulations can be elegantly addressed on this fully parallelized and analogic architecture. Here we study the possibility of performing stochastic simulations on this chip. First a realistic random number generator is implemented on the CNN-UM, and then as an example the two-dimensional Ising model is studied by Monte Carlo type simulations. The results obtained on an experimental version of the CNN-UM with 128 ×128 cells are in good agreement with the results obtained on digital computers. Computational time mea...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
This paper presents a new computational framework to address the challenges in deeply scaled technol...
This paper presents a new computational framework to address the challenges in deeply scaled technol...
Abstract. The computational paradigm represented by Cellular Neural/nonlinear Networks (CNN) and the...
The computational paradigm represented by Cellular Neural/nonlinear Networks (CNN) and the CNN Unive...
Abstract. This paper describes a full-custom mixed-signal chip that embeds digitally programmable an...
A novel approach to simulate Cellular Neural Networks (CNN) is presented in this paper. The approach...
A novel approach to simulate Cellular Neural Networks (CNN) is presented in this paper. The approach...
This paper present the application of Pulse Stream Tech-niques (PSTs) to the hardware implementation...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
An efficient behavioral simulator for Cellular Neural Networks (CNN) is presented in this paper. The...
This paper describes a full-custom mixed-signal chip that embeds digitally programmable analog paral...
Cellular Neural Networks are characterized by simplicity of operation. The network consists of a lar...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
Cellular Neural Networks (CNN's) represent a remarkable improvement in hardware implementation of Ar...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
This paper presents a new computational framework to address the challenges in deeply scaled technol...
This paper presents a new computational framework to address the challenges in deeply scaled technol...
Abstract. The computational paradigm represented by Cellular Neural/nonlinear Networks (CNN) and the...
The computational paradigm represented by Cellular Neural/nonlinear Networks (CNN) and the CNN Unive...
Abstract. This paper describes a full-custom mixed-signal chip that embeds digitally programmable an...
A novel approach to simulate Cellular Neural Networks (CNN) is presented in this paper. The approach...
A novel approach to simulate Cellular Neural Networks (CNN) is presented in this paper. The approach...
This paper present the application of Pulse Stream Tech-niques (PSTs) to the hardware implementation...
In recent years, many applications have been implemented in embedded systems and mobile Internet of ...
An efficient behavioral simulator for Cellular Neural Networks (CNN) is presented in this paper. The...
This paper describes a full-custom mixed-signal chip that embeds digitally programmable analog paral...
Cellular Neural Networks are characterized by simplicity of operation. The network consists of a lar...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
Cellular Neural Networks (CNN's) represent a remarkable improvement in hardware implementation of Ar...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
This paper presents a new computational framework to address the challenges in deeply scaled technol...
This paper presents a new computational framework to address the challenges in deeply scaled technol...