Future development of neural networks and their applications will be strongly affected by the availability of specialized hardware that meets the need for massively parallel communication and allow building of scalable networks. We present a neural network system which consists of special neural network chips, each including a neural processor and a specialized communication hardware to solve this problem. The neural processor enables the emulation of different types of neurons including biologically inspired models based on activity pulses, learnable synaptic weights and pulse delay times. The communication processor realizes full global communication despite locally interconnected chips
In this study, we present a highly configurable neuromorphic computing substrate and use it for emul...
Wolff C, Hartmann G, Rückert U. ParSPIKE-a parallel DSP-accelerator for dynamic simulation of large ...
Results from working analog VLSI implementations of two different pulse stream neural network forms ...
This work describes a parallel neural network emulator which combines use of application-specific VL...
In this contribution we present an advanced concept of neural hardware that realizes two important f...
We present a scalable MIMD computer system which was designed to be used as a neurocomputer. it is c...
This communication describes a massively parallel neural network emulator. Its hardware architecture...
Targeted at high-energy physics research applications, our special-purpose analog neural processor c...
Artificial neural networks (ANN) and genetic algorithms (GA) have turned out to play an important ro...
The design of a new high-performance computing platform to model biological neural networks requires...
Abstract:- Neuromorphic neural networks are of interest both from a biological point of view and in ...
This research investigates a digital hardware oriented system that uses a genetic algorithm (GA) fo...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
Simple nonlinear synapse circuit proposes fo r implementation of artificial neural networks using st...
In this contribution we present a new biology-inspired neuron model and its real-time realization us...
In this study, we present a highly configurable neuromorphic computing substrate and use it for emul...
Wolff C, Hartmann G, Rückert U. ParSPIKE-a parallel DSP-accelerator for dynamic simulation of large ...
Results from working analog VLSI implementations of two different pulse stream neural network forms ...
This work describes a parallel neural network emulator which combines use of application-specific VL...
In this contribution we present an advanced concept of neural hardware that realizes two important f...
We present a scalable MIMD computer system which was designed to be used as a neurocomputer. it is c...
This communication describes a massively parallel neural network emulator. Its hardware architecture...
Targeted at high-energy physics research applications, our special-purpose analog neural processor c...
Artificial neural networks (ANN) and genetic algorithms (GA) have turned out to play an important ro...
The design of a new high-performance computing platform to model biological neural networks requires...
Abstract:- Neuromorphic neural networks are of interest both from a biological point of view and in ...
This research investigates a digital hardware oriented system that uses a genetic algorithm (GA) fo...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
Simple nonlinear synapse circuit proposes fo r implementation of artificial neural networks using st...
In this contribution we present a new biology-inspired neuron model and its real-time realization us...
In this study, we present a highly configurable neuromorphic computing substrate and use it for emul...
Wolff C, Hartmann G, Rückert U. ParSPIKE-a parallel DSP-accelerator for dynamic simulation of large ...
Results from working analog VLSI implementations of two different pulse stream neural network forms ...