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Detection of the onset of yielding and creep failure from digital image correlation

  • Tero Mäkinen*
  • , Agata Zaborowska
  • , Małgorzata Frelek-Kozak
  • , Iwona Jóźwik
  • , Łukasz Kurpaska
  • , Stefanos Papanikolaou
  • , Mikko J. Alava
  • *Tämän työn vastaava kirjoittaja

Tutkimustuotos: LehtiartikkeliArticleScientificvertaisarvioitu

6 Sitaatiot (Scopus)
51 Lataukset (Pure)

Abstrakti

There are a multitude of applications in which structural materials would be desired to be nondestructively evaluated, while in a component, for plasticity and failure characteristics. In this way, safety and resilience features can be significantly improved. Nevertheless, while failure can be visible through cracks, plasticity is commonly invisible and highly microstructure-dependent. Here, we show that an equation-free method based on principal component analysis is capable of detecting yielding and tertiary creep onset, directly from strain fields that are obtained by digital image correlation, applicable on components, continuously and nondestructively. We demonstrate the applicability of the method to yielding of Ni-based Haynes 230 metal alloy polycrystalline samples, which are also characterized through electron microscopy and benchmarked using continuum polycrystalline plasticity modeling. Also, we successfully apply this method to yielding during uniaxial tension of Hastelloy X polycrystalline samples, and also to the onset of tertiary creep in quasibrittle fiber composites under uniaxial tension. We conclude that there are key features in the spatiotemporal fluctuations of local strain fields that can be used to infer mechanical properties.

AlkuperäiskieliEnglanti
Artikkeli103601
Sivut1-8
Sivumäärä8
JulkaisuPhysical Review Materials
Vuosikerta6
Numero10
DOI - pysyväislinkit
TilaJulkaistu - 10 lokak. 2022
OKM-julkaisutyyppiA1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä

Rahoitus

M.J.A. acknowledges support from the Academy of Finland (Center of Excellence program, 278367 and 317464): The authors gratefully acknowledge the support from the European Union Horizon 2020 research and innovation programme under Grant Agreement No. 857470 and from European Regional Development Fund via Foundation for Polish Science International Research Agenda PLUS programme Grant No. MAB PLUS/2018/8. The authors acknowledge the computational resources provided by the Aalto University School of Science “Science-IT” project.

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  • Fluctuations in Fracture --- Fluktuaatiot murtumisessa

    Alava, M. (Vastuullinen johtaja), Halonen, A. (Projektin jäsen), Lomakin, I. (Projektin jäsen), Tuokkola, M. (Projektin jäsen), Ranta, R. (Projektin jäsen), Kinnunen, A. (Projektin jäsen), Coffeng, M. (Projektin jäsen), Savolainen, J. (Projektin jäsen), Hu, H. (Projektin jäsen), Salmenjoki, H. (Projektin jäsen), Koivisto, J. (Projektin jäsen) & Viitanen, L. (Projektin jäsen)

    01/09/201831/08/2022

    Projekti: Academy of Finland: Other research funding

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