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Coefficient Extraction of SAC305 Solder Constitutive Equations Using Equation-Informed Neural Networks

Cadmus Yuan, Qinghua Su, Kuo‐Ning Chiang

2023Materials15 citationsDOIOpen Access PDF

Abstract

Equation-Informed Neural Networks (EINNs) are developed as an efficient method for extracting the coefficients of constitutive equations. Subsequently, numerical Bayesian Inference (BI) iterations were applied to estimate the distribution of these coefficients, thereby further refining them. We could generate coefficients optimally aligned with the targeted application scenario by carefully adjusting pre-processing mapping parameters and identifying dataset preferences. Leveraging graphical representation techniques, the EINNs formulation is implemented in temperature- and strain-rate-dependent hyperbolic Garofalo, Anand, and Chaboche constitutive models to extract the corresponding coefficients for lead-free SAC305 solder material. The performance of the EINNs-based extracted coefficients, obtained from experimental results of SAC305 solder material, is comparable to existing studies. The methodology offers the dual advantage of providing the coefficients' value and distribution against the training dataset.

Topics & Concepts

Constitutive equationArtificial neural networkRepresentation (politics)Applied mathematicsMaterials scienceNonlinear systemInferenceComputer scienceAlgorithmMathematicsArtificial intelligenceFinite element methodEngineeringStructural engineeringPhysicsLawPolitical sciencePoliticsQuantum mechanicsElectronic Packaging and Soldering TechnologiesHigh Temperature Alloys and CreepMetallurgy and Material Forming