A modular transconductance-mode (T-mode) design approach is presented for analog hardware implementations of neural networks. This design approach is used to build a modular bidirectional associative memory network. The authors show that the size of the whole system can be increased by interconnecting more modular chips. It is also shown that by changing the interconnection strategy different neural network systems can be implemented, such as a Hopfield network, a winner-take-all network, a simplified ART1 network, or a constrained optimization network. Experimentally measured results from CMOS 2-μm double-metal, double-polysilicon prototypes (MOSIS) are presented
Cataloged from PDF version of article.The analog CMOS circuit realization of cellular neural network...
This thesis reviews various previously reported techniques for simulating artificial neural network...
Explores the design of cellular neural networks (CNN) by using sampled-data analog current-mode tech...
A modular analog circuit design approach for hardware implementations of neural networks is presente...
In this paper we will extend the transconductance-mode (T-mode) approach [1] to implement analog con...
The paper describes a multichip analog parallel neural network whose architecture, neuron characteri...
There are several possible hardware implementations of neural networks based either on digital, anal...
Simple nonlinear synapse circuit proposes fo r implementation of artificial neural networks using st...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
In this paper a reconfigurable analog VLSI neural network architecture is presented. The analog arch...
In this paper we present a complete VLSI Continuous-Time Bidirectional Associative Memory (BAM). T...
A large scale collective system implementing a specific model for associative memory was described b...
A 3-μm CMOS IC is presented demonstrating the concept of an analog neural system for constrained opt...
Rapid advances in the semiconductor industry have provided the technologies for the implementation o...
Cataloged from PDF version of article.The analog CMOS circuit realization of cellular neural network...
This thesis reviews various previously reported techniques for simulating artificial neural network...
Explores the design of cellular neural networks (CNN) by using sampled-data analog current-mode tech...
A modular analog circuit design approach for hardware implementations of neural networks is presente...
In this paper we will extend the transconductance-mode (T-mode) approach [1] to implement analog con...
The paper describes a multichip analog parallel neural network whose architecture, neuron characteri...
There are several possible hardware implementations of neural networks based either on digital, anal...
Simple nonlinear synapse circuit proposes fo r implementation of artificial neural networks using st...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
In this paper a reconfigurable analog VLSI neural network architecture is presented. The analog arch...
In this paper we present a complete VLSI Continuous-Time Bidirectional Associative Memory (BAM). T...
A large scale collective system implementing a specific model for associative memory was described b...
A 3-μm CMOS IC is presented demonstrating the concept of an analog neural system for constrained opt...
Rapid advances in the semiconductor industry have provided the technologies for the implementation o...
Cataloged from PDF version of article.The analog CMOS circuit realization of cellular neural network...
This thesis reviews various previously reported techniques for simulating artificial neural network...
Explores the design of cellular neural networks (CNN) by using sampled-data analog current-mode tech...