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Deep neural network aided cohesive zone parameter identifications through die shear test in electronic packaging

Libo Zhao, Yanwei Dai, Jiahui Wei, Fei Qin

2023Fatigue & Fracture of Engineering Materials & Structures20 citationsDOIOpen Access PDF

Abstract

Abstract The die shear test is a feasible and conventional method to characterize the shear strength of die‐attaching layer materials in electronic packaging. A new method for determining cohesive zone model (CZM) parameters using deep neural networks (DNN) and die shear tests is proposed, different from classical fracture framework or lap shear test‐based methods. With the sintered nano‐silver die shear test, the results show that the bilinear CZM inversion results agree well with the experimental results. It is found that the DNN model has high accuracy in predicting and identifying the maximum shear traction strength τ max , separation displacement of the interface δ f , and the interface stiffness k 1 of CZM parameters for sintered nano‐silver adhesive layer through die shear test load versus displacement curves. The presented DNN‐aided inverse identifying method through the die shear test in this paper could provide an alternative and convenient method for extracting CZM parameters of various kinds of adhesive materials in electronic packaging.

Topics & Concepts

Materials scienceAdhesiveShear (geology)Direct shear testStiffnessCohesive zone modelDie (integrated circuit)Artificial neural networkComposite materialStructural engineeringShear strength (soil)Fracture mechanicsComputer scienceEngineeringLayer (electronics)Artificial intelligenceGeologySoil waterNanotechnologySoil scienceElectronic Packaging and Soldering TechnologiesMetal Forming Simulation TechniquesMaterial Properties and Processing
Deep neural network aided cohesive zone parameter identifications through die shear test in electronic packaging | Litcius