Title :
Artificial neural-network model-based observers
Author :
Kabisatpathy, Prithviraj ; Barua, Alok ; Sinha, Satyabroto
Author_Institution :
Coll. of Eng. & Technol., Orissa, India
Abstract :
Describes a pseudorandom testing scheme for fault diagnosis of analog integrated circuits. The goal is to implement a BIST technique with both a built-in pattern generator and a response analyzer for fault diagnosis. We have chosen a diagnostic framework for the analog ICs using a pseudorandom noise generator as the test-pattern generator and a model-based observer to detect and diagnose faults. The observer is implemented through a multilayer feedforward ANN trained with a back-error propagation (BEP) algorithm. Both the test-pattern generator and the model-based observer proposed in this article can be implemented either on- or offline depending on the need of the application and silicon area overhead.
Keywords :
analogue integrated circuits; automatic test pattern generation; built-in self test; fault diagnosis; feedforward neural nets; integrated circuit testing; multilayer perceptrons; noise generators; observers; BIST technique; analog integrated circuits; artificial neural-network model-based observers; back-error propagation algorithm; built-in pattern generator; fault diagnosis; multilayer feedforward ANN; pseudorandom noise generator; pseudorandom testing scheme; response analyzer; silicon area overhead; test-pattern generator; Analog integrated circuits; Built-in self-test; Circuit faults; Circuit testing; Electrical fault detection; Fault detection; Fault diagnosis; Integrated circuit testing; Noise generators; Pattern analysis;
Journal_Title :
Circuits and Devices Magazine, IEEE
DOI :
10.1109/MCD.2005.1492714