An analogue circuit implementation is presented for an adaptive resonance theory neural network architecture, called the augmented ART-1 neural network (AART1-NN). The AART1-NN is a modification of the popular ARTl-NN, developed by Carpenter and Grossberg, and it exhibits the same behaviour as the ARTl-NN. The A ARTl-NN is a real-time model, and has the ability to classify an arbitrary set of binary input patterns into different clusters. The design of the AART1-NN circuit is based on a set of coupled nonlinear differential equations that constitute the AART1-NN model. The circuit is implemented by utilizing analogue electronic components such as operational amplifiers, transistors, capacitors, and resistors. The implemented circuit is veri...
This survey samples from the ever-growing family of adaptive resonance theory (ART) neural network m...
This report explores the design of building blocks that can be employed in analog implementations of...
Nature has evolved highly advanced systems capable of performing complex computations, adoption and ...
An analogue circuit implementation is presented for an adaptive resonance theory neural network arch...
An analogue circuit implementation is presented for an adaptive resonance theory neural network arch...
This paper presents an analog circuit implementation for an adaptive resonance theory neural network...
This paper outlines the design and simulation of an analogue integrated circuit for the adaptive res...
This paper presents a mixed analog/digital circuit design and simulation for an architecture called ...
A digital VLSI circuit design for an adaptive resonance theory (ART) neural network architecture, ca...
A digital VLSI circuit design for an adaptive resonance theory (ART) neural network architecture, ca...
This paper presents a VLSI circuit implementation for both the short-term memory (STM) and long-term...
The Adaptive Resonance Theory (ART) architecture, first proposed by (Grossberg, 1976b, 1976a), is a ...
The authors demonstrate a hardware implementation of the adaptive resonance theory ART 1 neural netw...
A solution to the problem of implementation of the adaptive resonance theory (ART) of neural network...
In recent years, parallel computers have been attracting attention for simulating artificial neural ...
This survey samples from the ever-growing family of adaptive resonance theory (ART) neural network m...
This report explores the design of building blocks that can be employed in analog implementations of...
Nature has evolved highly advanced systems capable of performing complex computations, adoption and ...
An analogue circuit implementation is presented for an adaptive resonance theory neural network arch...
An analogue circuit implementation is presented for an adaptive resonance theory neural network arch...
This paper presents an analog circuit implementation for an adaptive resonance theory neural network...
This paper outlines the design and simulation of an analogue integrated circuit for the adaptive res...
This paper presents a mixed analog/digital circuit design and simulation for an architecture called ...
A digital VLSI circuit design for an adaptive resonance theory (ART) neural network architecture, ca...
A digital VLSI circuit design for an adaptive resonance theory (ART) neural network architecture, ca...
This paper presents a VLSI circuit implementation for both the short-term memory (STM) and long-term...
The Adaptive Resonance Theory (ART) architecture, first proposed by (Grossberg, 1976b, 1976a), is a ...
The authors demonstrate a hardware implementation of the adaptive resonance theory ART 1 neural netw...
A solution to the problem of implementation of the adaptive resonance theory (ART) of neural network...
In recent years, parallel computers have been attracting attention for simulating artificial neural ...
This survey samples from the ever-growing family of adaptive resonance theory (ART) neural network m...
This report explores the design of building blocks that can be employed in analog implementations of...
Nature has evolved highly advanced systems capable of performing complex computations, adoption and ...