Publication | Open Access
GA-BP in Thermal Fatigue Failure Prediction of Microelectronic Chips
22
Citations
32
References
2019
Year
EngineeringLife PredictionMechanical EngineeringMicroelectronic ChipsGradient-based Back PropagationReliability EngineeringGenetic AlgorithmThermodynamicsElectronic PackagingService Life PredictionPower Electronic DevicesElectrical EngineeringHardware ReliabilityComputer EngineeringReliability PredictionHeat TransferDevice ReliabilityMicroelectronicsPhysic Of FailureFinite Element MethodThermal Engineering
A thermal fatigue life prediction model of microelectronic chips based on thermal fatigue tests and solder/substrate interfacial singularity analysis from finite element method (FEM) analysis is established in this paper. To save the calculation of interfacial singular parameters of new chips for life prediction, and improve the accuracy of prediction results in actual applications, a hybrid genetic algorithm–artificial neural network (GA–ANN) strategy is utilized. The proposed algorithm combines the local searching ability of the gradient-based back propagation (BP) strategy with the global searching ability of a genetic algorithm. A series of combinations of the dimensions and thermal mechanical properties of the solder and the corresponding singularity parameters at the failure interface are used to train the proposed GA-BP network. The results of the network, together with the established life prediction model, are used to predict the thermal fatigue lives of new chips. The comparison between the network results and thermal fatigue lives recorded in experiments shows that the GA-BP strategy is a successful prediction technique.
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