ISBN 978-1-4244-7054-9International audienceWe discuss a fault diagnosis scheme for analog integrated circuits. Our approach is based on an assemblage of learning machines that are trained beforehand to guide us through diagnosis decisions. The central learning machine is a defect filter that distinguishes failing devices due to gross defects (hard faults) from failing devices due to excessive parametric deviations (soft faults). Thus, the defect filter is key in developing a unified hard/soft fault diagnosis approach. Two types of diagnosis can be carried out according to the decision of the defect filter: hard faults are diagnosed using a multi-class classifier, whereas soft faults are diagnosed using inverse regression functions. We show...
Resumen del trabajo presentado a la 29th IEEE International Conference on Electronics, Circuits and ...
Feed-forward artificial neural networks (ANNs) have been applied to the diagnosis of nonlinear dynam...
This paper provides a comparison between two techniques for soft fault diagnosis in analog electroni...
A fault diagnosis procedure for analog linear circuits is presented. It uses an off-line trained neu...
Multi-frequency test can maximize differences between the failure state and the normal state of the ...
In this paper a fault diagnosis technique for electronic analog circuits is described. Diagnosis is ...
In this paper a fault diagnosis technique for electronic analog circuits is described. Diagnosis is ...
A novel analog circuit fault diagnosis method is proposed. This method uses a neural network paradig...
n this paper a fault diagnosis technique, which employs neural networks to analyze signatures of ana...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
This work presents a new diagnosis method for use in an adaptive analog tester. The tester is able t...
This paper presents a low-cost analog test system with diagnosis capabilities. The tester is able to...
In this paper we present a methodology for model-based diagnosis of analog circuits using the constr...
Resumen del trabajo presentado a la 29th IEEE International Conference on Electronics, Circuits and ...
Feed-forward artificial neural networks (ANNs) have been applied to the diagnosis of nonlinear dynam...
This paper provides a comparison between two techniques for soft fault diagnosis in analog electroni...
A fault diagnosis procedure for analog linear circuits is presented. It uses an off-line trained neu...
Multi-frequency test can maximize differences between the failure state and the normal state of the ...
In this paper a fault diagnosis technique for electronic analog circuits is described. Diagnosis is ...
In this paper a fault diagnosis technique for electronic analog circuits is described. Diagnosis is ...
A novel analog circuit fault diagnosis method is proposed. This method uses a neural network paradig...
n this paper a fault diagnosis technique, which employs neural networks to analyze signatures of ana...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
This work presents a new diagnosis method for use in an adaptive analog tester. The tester is able t...
This paper presents a low-cost analog test system with diagnosis capabilities. The tester is able to...
In this paper we present a methodology for model-based diagnosis of analog circuits using the constr...
Resumen del trabajo presentado a la 29th IEEE International Conference on Electronics, Circuits and ...
Feed-forward artificial neural networks (ANNs) have been applied to the diagnosis of nonlinear dynam...
This paper provides a comparison between two techniques for soft fault diagnosis in analog electroni...