Title :
A partitioning approach to improve reconfigurable neuron-inspired online BIST
Author :
Shahabi, Ali ; Hosseini, S. Behdad ; Sohofi, Hassan ; Navabi, Zainalabedin
Author_Institution :
Sch. of Eng. Colleges, Univ. of Tehran, Tehran, Iran
Abstract :
Two of the most challenging issues in online testing are deriving a general tester scheme for various circuits and reducing the area overhead. This paper presents a novel reconfigurable online tester using artificial neural networks to test combinational hardware. Our proposed BIST architecture has the capability of testing a number of arbitrary sub-modules of a big design simultaneously by time-multiplexing between them. Output partitioning method is proposed as a powerful technique to reduce neural network training time and the tester area overhead. Our experimental results show that after proper partitioning the average area overhead is reduced by 16% in data-path and 33% in memory area. Also average fault detection latency has been improved by 14%.
Keywords :
built-in self test; neural nets; artificial neural network; combinational hardware; fault detection latency; partitioning approach; reconfigurable neuron-inspired online BIST; reconfigurable online tester; Artificial neural networks; Built-in self-test; Circuit faults; Hardware; Neurons; Training; Digital Logic Modeling; Digital Neural Networks; On-line Testing; Partitioning; Self-Checking;
Conference_Titel :
On-Line Testing Symposium (IOLTS), 2010 IEEE 16th International
Conference_Location :
Corfu
Print_ISBN :
978-1-4244-7724-1
DOI :
10.1109/IOLTS.2010.5560212