Title :
Classification of location of damage in package-on-package (PoP) assemblies using ANN with feature vectors for progression of accrued damage
Author :
Lall, Pradeep ; Gupta, Prashant ; Goebel, Kai
Author_Institution :
Dept. of Mech. Eng., Auburn Univ., Auburn, AL, USA
Abstract :
Miniaturization of electronic products has resulted in proliferation of package-on-package (PoP) architectures in por table electronics. In this study, daisy-chained double-stack PoP components have been used for early-identification of drop-shock impact damage. Time-spectral feature vector based damage pre-cursors have been identified and measured under app lied shock stimulus. Experimental strain data has been acquired using strain sensors, digital image correlation. Continuity has been measured suing high-speed instrumentation for identification of failure in the PoP assemblies. The timeevolution of spectral content of the damage pre-cursors has been studied using joint time frequency analysis (JTFA). The Karhunen-Loéve transform (KLT) has been used for feature reduction and de-correlation of the feature vectors for input to an artificial neural network. The artificial neural net has been trained for failure-mode identification using simulated data-sets created from error-seeded models with specific failure modes. The neural net has then been used to identify and classify the failure modes experimentally observed in tested board assemblies. Supervised learning of multilayer neural net in conjunction with parity has been used to identify the hard-separation boundaries between failure mode clusters in the de-correlated feature space. Pre-failure feature space has been classified for different fault modes in PoP assemblies subjected to drop and shock.
Keywords :
assembling; correlation theory; electronics industry; electronics packaging; impact (mechanical); learning (artificial intelligence); neural nets; pattern classification; production engineering computing; reliability; shock measurement; strain sensors; time-frequency analysis; transforms; vectors; ANN; JTFA; KLT; Karhunen-Loéve transform; PoP assembly; accrued damage progression; applied shock stimulus; artificial neural network; daisy-chained double-stack PoP component; damage location classification; data-set simulation; decorrelated feature space; digital image correlation; drop-shock impact damage identification; error-seeded model; failure identification; failure mode cluster; failure-mode identification; feature reduction; feature vector; hard-separation boundary identification; joint time frequency analysis; multilayer neural net supervised learning; package-on-package assembly; portable electronic product miniaturization; pre-cursor damaging; pre-failure feature space; spectral time-evolution content; strain data experimental; strain sensor; time-spectral feature vector decorrelation; Assembly; Electric shock; Finite element methods; Integrated circuit modeling; Strain; Substrates; Vectors; Karhunen Loéve transform; PoP; Prognostic health management; failure mode classification; neural nets;
Conference_Titel :
Prognostics and Health Management (PHM), 2012 IEEE Conference on
Conference_Location :
Denver, CO
Print_ISBN :
978-1-4673-0356-9
DOI :
10.1109/ICPHM.2012.6299535