2022-Sustainable Industrial Processing Summit
SIPS2022 Volume 16 Intl. Symp on Mathematics, Modelling and Geomechanics

Editors:F. Kongoli, E. Aifantis, T. Vougiouklis, A. Bountis, P. Mandell, R. Santilli, A. Konstantinidis, G. Efremidis.
Publisher:Flogen Star OUTREACH
Publication Year:2022
Pages:235 pages
ISBN:978-1-989820-64-3(CD)
ISSN:2291-1227 (Metals and Materials Processing in a Clean Environment Series)
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    Data analytic approaches to materials failure - from the atomic to the geoscale

    Michael Zaiser1;
    1FRIEDRICH-ALEXANDER U. ERLANGEN, Nuremburg, Germany;
    Type of Paper: Plenary
    Id Paper: 342
    Topic: 71

    Abstract:

    Materials failure has for decades been considered one of the paradigmatic multiscale phenomena, involving processes from the atomic to the systems scale. On the continuum level, a well established approach is provided by the laws of fracture mechanics established by Griffith's seminal work exactly a century ago. However, the relationship between key concepts of fracture mechanics such as fracture toughness on the one hand, and parameters characterizing the microstructure of materials from the atomic to the grain scale on the other hand, remains poorly understood. The same is true for the transition from diffuse accumulation of damage to the formation and propagation of a macroscopic crack. Data analytic approaches may offer new pathways towards closing the gap between discrete and continuous descriptions of material microstructures undergoing failure under load. We illustrate this on a range of examples from the atomic to the geo-scale. On the atomic level, we show how machine learning methods can be used to identify local atomic configurations prone to irreversible change under load, and how continuum mechanics concepts can provide essential 'domain knowledge' in approaching this task. On the mesoscale, we demonstrate how network theoretical concepts can be used to identify potential failure locations in load-carrying structures that can be mapped onto networks transmitting linear momentum. Finally, on the macroscale, we discuss how macroscopic monitoring data can be used to predict imminent failure under load.

    Cite this article as:

    Zaiser M. (2022). Data analytic approaches to materials failure - from the atomic to the geoscale. In F. Kongoli, E. Aifantis, T. Vougiouklis, A. Bountis, P. Mandell, R. Santilli, A. Konstantinidis, G. Efremidis. (Eds.), Sustainable Industrial Processing Summit SIPS2022 Volume 16 Intl. Symp on Mathematics, Modelling and Geomechanics (pp. 226-227). Montreal, Canada: FLOGEN Star Outreach