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Featured researches published by Y. Di.


International Journal of Fracture | 2016

The Second Blind Sandia Fracture Challenge: improved MBW model predictions for different strain rates

Y. Di; Junhe Lian; Bo Wu; Napat Vajragupta; Denis Novokshanov; Victoria Brinnel; Benedikt Döbereiner; Markus Josef Könemann; Sebastian Münstermann

Sandia National Laboratories have carried out the Sandia Fracture Challenge in order to evaluate ductile damage mechanics models under conditions which are similar to those in the industrial practice. In this challenge, the prediction of load-deformation behavior and crack path of a sample that is designed for the competition under two loading rates is required with given data: the material Ti–6Al–4V, and raw data of tensile tests and V-notch tests under two loading rates. Within the stipulated time frame 14 teams from USA and Europe gave their predictions to the organizer. In this work, the approach applied by Team Aachen is presented in detail. The modified Bai–Wierzbicki (MBW) model is used in the framework of the Second Blind Sandia Fracture Challenge (SFC2). The model is made up by a stress-state dependent plasticity core that is extended to cope with strain rate and temperature effects under adiabatic conditions. It belongs to the group of coupled phenomenological ductile damage mechanics models, but it assumes a strain threshold value for the instant of ductile damage initiation. The initial guess of material parameters for the selected material Ti–6Al–4V was taken from an in-house database available at the authors’ institutes, but parameters are optimized in order to meet the validation data provided. This paper reveals that the model predictions can be improved significantly compared to the original submission of results at the end of SFC2 by two simple measures. On the one hand, the function to express the critical damage as well as the amount of energy dissipation between ductile damage initiation and complete ductile fracture were derived more carefully from the data provided by the challenge’s organizer. On the other hand, the experimental set-up of the challenge experiment was better described in the geometrical representation used for the numerical simulations. These two simple modifications allowed for a precise prediction of crack path and estimation of force–displacement behavior. The improved results show the general ability of the MBW model to predict the strain rate sensitivity of ductile fracture at various states of stress.


International Journal of Fracture | 2016

The second Sandia Fracture Challenge : predictions of ductile failure under quasi-static and moderate-rate dynamic loading

Brad Lee Boyce; Sharlotte Kramer; T.R. Bosiljevac; Edmundo Corona; John A. Moore; K. Elkhodary; C.H.M. Simha; B. Williams; A.R. Cerrone; A. Nonn; Jacob D. Hochhalter; G.F. Bomarito; James E. Warner; B.J. Carter; D.H. Warner; Anthony R. Ingraffea; T. Zhang; X. Fang; J. Lua; Vincent Chiaruttini; Matthieu Mazière; Sylvia Feld-Payet; Vladislav Yastrebov; Jacques Besson; Jean Louis Chaboche; J. Lian; Y. Di; Bo Wu; Denis Novokshanov; Napat Vajragupta


Engineering Fracture Mechanics | 2015

Numerical derivation of strain-based criteria for ductile failure: Discussions on sensitivity and validity

Victoria Brinnel; J. Langenberg; F. Kordtomeikel; Y. Di; Sebastian Münstermann


Materials Science and Engineering A-structural Materials Properties Microstructure and Processing | 2017

Corrigendum to “Investigation on micromechanism and stress state effects on cleavage fracture of ferritic-pearlitic steel at −196 °C” [Mater. Sci. Eng. A 686C (2017) 134–141]

Jinshan He; Junhe Lian; Georg Golisch; An He; Y. Di; Sebastian Münstermann


Fatigue & Fracture of Engineering Materials & Structures | 2017

Extension of the modified Bai-Wierzbicki model for predicting ductile fracture under complex loading conditions

Bo Wu; X. Li; Y. Di; Victoria Brinnel; J. Lian; Sebastian Münstermann


Springer Netherlands | 2016

The second Sandia Fracture Challenge: predictions of ductile failure under quasi-static and moderate-rate dynamic loading

Brad Lee Boyce; Sharlotte Kramer; T.R. Bosiljevac; Edmundo Corona; John A. Moore; K. Elkhodary; C.H.M. Simha; B. Williams; Albert Cerrone; A. Nonn; Jacob D. Hochhalter; G.F. Bomarito; James E. Warner; B.J. Carter; D.H. Warner; Anthony R. Ingraffea; T. Zhang; X. Fang; J. Lua; V. Chiaruttini; Matthieu Mazière; S. Feld-Payet; Vladislav Yastrebov; Jacques Besson; J.-L. Chaboche; J. Lian; Y. Di; Bo Wu; Denis Novokshanov; Napat Vajragupta


Procedia structural integrity | 2016

Safety assessment of steels under ULCF loading conditions with damage mechanics model

Y. Di; Denis Novokshanov; Sebastian Münstermann


47. Tagung des DVM-Arbeitskreises "Bruchvorgänge und Bauteilsicherheit" | 2015

Predicition of Component Failure With Plasticity-Damage Coupled Material Model by Implementing Effective Strain Concept

Y. Di; Denis Novokshanov; Sebastian Münstermann


Werkstoffprüfung: Fortschritte der Werkstoffprüfung für Forschung und Praxis | 2014

Neue Bewertungskonzepte für erdbebenbeanspruchte Stahlbaukonstruktionen

Sebastian Münstermann; Denis Novokshanov; Y. Di


AmeriMech Symposium: Material Property Identification | 2014

Characterizing Cold Formability and Fracture Behaviour of Sheet Material on Different Length Scales

Sebastian Münstermann; J. Lian; Victoria Brinnel; Bo Wu; Y. Di

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Bo Wu

RWTH Aachen University

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J. Lian

RWTH Aachen University

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A. Nonn

Technische Hochschule

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Junhe Lian

RWTH Aachen University

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