Fiber nonlinear predictive model for combined bending-compression loading of an orthogonal plane weave composite laminate structure

S. Guo, M. Gresil, M.A Sutton, X. Deng, K.M. Reifsnider, P. Majumdar

    Research output: Contribution to journalArticlepeer-review

    Abstract

    To increase understanding of damage evolution in advanced composite material systems, a series of large deflection bending-compression experiments and model predictions have been performed for a woven glass-epoxy composite material system. Theoretical developments employing both small and large deformation models and computational studies are performed. Results (a) show that the Euler–Bernoulli beam theory for small deformations is adequate to describe the shape and deformations when the axial and transverse displacement are quite small, (b) show that a modified Drucker's equation effectively extends the theory prediction to the large deformation region, providing an accurate estimate for the buckling load, the post-buckling axial load-axial displacement response of the specimen and the axial strain along the beam centerline, even in the presence of observed anticlastic (double) specimen curvature near mid-length for all fiber angles (that is not modeled), and (c) for the first time the quantities σeff – ɛeff are shown to be appropriate parameters to correlate the material response on both the compression and tension surfaces of a beam-compression specimen in the range 0 ≤ ɛeff 
    Original languageEnglish
    Pages (from-to)3637-3657
    Number of pages20
    JournalJournal of Composite Materials
    Volume48
    Issue number29
    Early online date6 Dec 2013
    DOIs
    Publication statusPublished - Dec 2014

    Keywords

    • Bending-compression experiments, woven composite, large deformation, effective strain, effective stress

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