DocumentCode :
3376724
Title :
Decorrelated feature space and neural nets based framework for failure modes clustering in electronics subjected to mechanical-shock
Author :
Lall, P. ; Gupta, Puneet ; Goebel, Kai
Author_Institution :
Dept. of Mech. Eng., Auburn Univ., Auburn, AL, USA
fYear :
2011
fDate :
20-23 June 2011
Firstpage :
1
Lastpage :
16
Abstract :
Electronic systems under extreme shock and vibration environments including shock and vibration may sustain several failure modes simultaneously. Previous experience of the authors indicates that the dominant failure modes experienced by packages in a drop and shock frame work are in the solder interconnects including cracks at the package and the board interface, pad cratering, copper trace fatigue, and bulk-failure in the solder joint. In this paper, a method has been presented for failure mode classification using a combination of Karhunen Loeve transform with parity-based stepwise supervised training of a perceptrons. Early classification of multiple failure modes in the pre-failure space using supervised neural networks in conjunction with Karhunen Loeve transform is new. Feature space has been formed by joint time frequency analysis. Since the cumulative damage may be accrued under repetitive loading with exposure to multiple shock events, the area array assemblies have been exposed to shock and feature vectors constructed to track damage initiation and progression. Error Back propagation learning algorithm has been used for stepwise parity of each particular failure mode. The classified failure modes and failure regions belonging to each particular failure modes in the feature space are also validated by simulation of the designed neural network used for parity of feature space. Statistical similarity and validation of different classified dominant failure modes is performed by multivariate analysis of variance and Hoteling´s T-square. The results of different classified dominant failure modes are also correlated with the experimental cross sections of the failed test assemblies. The methodology adopted in this paper can perform real-time fault monitoring with identification of specific dominant failure mode and is scalable to system level reliability.
Keywords :
backpropagation; electric shocks; electronic engineering computing; fatigue cracks; fault diagnosis; integrated circuit testing; pattern classification; pattern clustering; perceptrons; time-frequency analysis; Karhunen Loeve transform; board interface; bulk-failure; copper trace fatigue; damage initiation tracking; damage progression tracking; decorrelated feature space; electronic systems; error back propagation learning algorithm; failure mode classification; failure modes clustering; joint time frequency analysis; mechanical-shock; pad cratering; perceptron parity-based stepwise supervised training; real-time fault monitoring; solder interconnects; solder joint; statistical similarity; supervised neural networks; system level reliability; Assembly; Electric shock; Monitoring; Strain; Time frequency analysis; Transforms; Vehicles; Fault Isolation; Feature Vectors; Perceptron; Prognostics Health Monitoring; Supervised Learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Prognostics and Health Management (PHM), 2011 IEEE Conference on
Conference_Location :
Montreal, QC
Print_ISBN :
978-1-4244-9828-4
Type :
conf
DOI :
10.1109/ICPHM.2011.6024325
Filename :
6024325
Link To Document :
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