I present an abstraction of the Hopfield-model for neural networks which is suitable for physical chip design using commerically available two-dimensional gate arrays. It can be shown that ±1-bonds combined with a dilution of about 80–90% of the original Hopfield-connections still lead to a comparable performance of the network. Furthermore the learning capability of the chips is discussed. Future extensions concerning programmable designs are outlined. The impact on aspects of brain research is discussed
This paper will present important limitations of hardware neural nets as opposed to biological neura...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
I present an abstraction of the Hopfield-model for neural networks which is suitable for physical ch...
Simple nonlinear synapse circuit proposes fo r implementation of artificial neural networks using st...
Graduation date: 1989The brain has long attracted the interest of researchers. Some tasks, such as p...
A new CMOS architecture for Hopfield's neural networks is proposed. The use of differential amplifie...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
Two new approaches to designing Hopfield neural networks using linear programming and relaxation are...
Hybrid semiconductor/molecular (“CMOL”) circuits may be used for hardware implementation of artifici...
We discuss the integration architecture of spiking neu-rons, predicted to be next-generation basic c...
There have been many national and international neural networks research initiatives: USA (DARPA, NI...
A modular analog circuit design approach for hardware implementations of neural networks is presente...
A computation is an operation that can be performed by a physical machine. We are familiar with digi...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
This paper will present important limitations of hardware neural nets as opposed to biological neura...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
I present an abstraction of the Hopfield-model for neural networks which is suitable for physical ch...
Simple nonlinear synapse circuit proposes fo r implementation of artificial neural networks using st...
Graduation date: 1989The brain has long attracted the interest of researchers. Some tasks, such as p...
A new CMOS architecture for Hopfield's neural networks is proposed. The use of differential amplifie...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
Two new approaches to designing Hopfield neural networks using linear programming and relaxation are...
Hybrid semiconductor/molecular (“CMOL”) circuits may be used for hardware implementation of artifici...
We discuss the integration architecture of spiking neu-rons, predicted to be next-generation basic c...
There have been many national and international neural networks research initiatives: USA (DARPA, NI...
A modular analog circuit design approach for hardware implementations of neural networks is presente...
A computation is an operation that can be performed by a physical machine. We are familiar with digi...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
This paper will present important limitations of hardware neural nets as opposed to biological neura...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...