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arxiv: 1606.02422 · v4 · pith:NYG6CT7Knew · submitted 2016-06-08 · 💻 cs.CE

Bayesian inference for the stochastic identification of elastoplastic material parameters: Introduction, misconceptions and insights

classification 💻 cs.CE
keywords materialidentificationparametersbayesianelastoplasticerrorsinferenceintroduction
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We discuss Bayesian inference (BI) for the probabilistic identification of material parameters. This contribution aims to shed light on the use of BI for the identification of elastoplastic material parameters. For this purpose a single spring is considered, for which the stress-strain curves are artificially created. Besides offering a didactic introduction to BI, this paper proposes an approach to incorporate statistical errors both in the measured stresses, and in the measured strains. It is assumed that the uncertainty is only due to measurement errors and the material is homogeneous. Furthermore, a number of possible misconceptions on BI are highlighted based on the purely elastic case.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Parameter Identification in Viscoplasticity using Transitional Markov Chain Monte Carlo Method

    cs.CE 2019-06 unverdicted novelty 3.0

    TMCMC recovers Chaboche viscoplastic parameters from noisy simulated displacement data, with accuracy depending on the number of measurements.