Artificial Neural Networks are an interesting solution for several real-time applications in the area of signal and image processing, in particular since recent advances in VLSI integration technologies allow for efficient hardware realizations. The use of dedicated circuits implementing the neural networks in mission-critical applications requires a high level of protection with respect to errors due to faults to guarantee output credibility and system availability. In this paper, the problem of concurrent error detection in dedicated neural networks is discussed by adopting an algorithm-based approach to check the inner product, i.e., the most of the computation performed in the neural network. Effectiveness and efficiency of this techniq...
Artificial neural networks are currently used for many tasks, including safety critical ones such as...
Digital Object Identifier : 10.1109/ACC.1997.609660We study the applications of neural nets in the ...
The quest for an efficient computational approach to neural connectivity problems has undergone a si...
Artificial Neural Networks are an interesting solution for several real-time applications in the are...
The use of neural networks in critical applications necessitates that they continue to perform their...
The problem of sensitivity to errors in artificial neural networks is discussed here considering an ...
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
The field of fault detection and diagnosis deals with the design of computer-based automated systems...
The paper suggests a neural-network approach to the design of robust fault diagnosis systems. The ma...
The problem of locating the origin of failure in a dynamical system using signed digraphs is of expo...
The ability to detect soft fault is an important task in the preventive maintenance. In this paper a...
Neural networks are increasingly used in mission critical systems such as those used in autonomous v...
Increasing expectations of industrial system reliability require development of more effective and r...
This paper shows the results of a research effort focused on demonstrating the capabilities of hardw...
Artificial neural networks are currently used for many tasks, including safety critical ones such as...
Digital Object Identifier : 10.1109/ACC.1997.609660We study the applications of neural nets in the ...
The quest for an efficient computational approach to neural connectivity problems has undergone a si...
Artificial Neural Networks are an interesting solution for several real-time applications in the are...
The use of neural networks in critical applications necessitates that they continue to perform their...
The problem of sensitivity to errors in artificial neural networks is discussed here considering an ...
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
The field of fault detection and diagnosis deals with the design of computer-based automated systems...
The paper suggests a neural-network approach to the design of robust fault diagnosis systems. The ma...
The problem of locating the origin of failure in a dynamical system using signed digraphs is of expo...
The ability to detect soft fault is an important task in the preventive maintenance. In this paper a...
Neural networks are increasingly used in mission critical systems such as those used in autonomous v...
Increasing expectations of industrial system reliability require development of more effective and r...
This paper shows the results of a research effort focused on demonstrating the capabilities of hardw...
Artificial neural networks are currently used for many tasks, including safety critical ones such as...
Digital Object Identifier : 10.1109/ACC.1997.609660We study the applications of neural nets in the ...
The quest for an efficient computational approach to neural connectivity problems has undergone a si...