During a number of years the two fields of artificial neural networks (ANNs) and highly parallel computing have both evolved rapidly. In this thesis the possibility of combining these fields is explored, investigating the design and usage of highly parallel computers for ANN calculations. A new system-architecture REMAP (Real-time, Embedded, Modular, Adaptive, Parallel processor) is presented as a candidate platform for future action-oriented systems. With this new system-architecture, multi-modular networks of cooperating and competing ANNs can be realized. For action-oriented systems, concepts like real-time interaction with the environment, embeddedness, and learning with selforganization are important. In this thesis the requirements fo...
The work presented in this thesis is mainly involved in the study of Artificial Neural Networks (ANN...
Contains fulltext : 18657.pdf (publisher's version ) (Open Access)In this thesis, ...
This paper presents some experimental results on the realization of a parallel simulation of an Arti...
During a number of years the two fields of artificial neural networks (ANNs) and highly parallel com...
As artificial neural networks (ANNs) gain popularity in a variety of application domains, it is crit...
Abstract — In this paper I describe the use of neural network in various related fields. Artificial ...
Simulations of neural systems on sequential computers are computationally expensive. For example, a ...
A highly parallel array architecture for ANN algorithms is presented and evaluated. The array, consi...
It seems to be an everlasting discussion. Spending a lot of additional time and extra money to imple...
Abstract. It seems obvious that the massively parallel computations inherent in artificial neural ne...
The topic of supervised learning within the conceptual framework of artificial neural network (ANN) ...
Various Artificial Neural Networks (ANN's) have been proposed in recent years to mimic the human bra...
There is renewed interest in computational intelligence, due to advances in algorithms, neuroscience...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
This dissertation develops a formal and systematic methodology for efficient mapping of several cont...
The work presented in this thesis is mainly involved in the study of Artificial Neural Networks (ANN...
Contains fulltext : 18657.pdf (publisher's version ) (Open Access)In this thesis, ...
This paper presents some experimental results on the realization of a parallel simulation of an Arti...
During a number of years the two fields of artificial neural networks (ANNs) and highly parallel com...
As artificial neural networks (ANNs) gain popularity in a variety of application domains, it is crit...
Abstract — In this paper I describe the use of neural network in various related fields. Artificial ...
Simulations of neural systems on sequential computers are computationally expensive. For example, a ...
A highly parallel array architecture for ANN algorithms is presented and evaluated. The array, consi...
It seems to be an everlasting discussion. Spending a lot of additional time and extra money to imple...
Abstract. It seems obvious that the massively parallel computations inherent in artificial neural ne...
The topic of supervised learning within the conceptual framework of artificial neural network (ANN) ...
Various Artificial Neural Networks (ANN's) have been proposed in recent years to mimic the human bra...
There is renewed interest in computational intelligence, due to advances in algorithms, neuroscience...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
This dissertation develops a formal and systematic methodology for efficient mapping of several cont...
The work presented in this thesis is mainly involved in the study of Artificial Neural Networks (ANN...
Contains fulltext : 18657.pdf (publisher's version ) (Open Access)In this thesis, ...
This paper presents some experimental results on the realization of a parallel simulation of an Arti...