Probabilistic Surface Layer Fatigue Strength Assessment of EN AC-46200 Sand Castings
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In: Metals : open access journal , Vol. 10.2020, No. 5, 616, 09.05.2020, p. 616.
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TY - JOUR
T1 - Probabilistic Surface Layer Fatigue Strength Assessment of EN AC-46200 Sand Castings
AU - Pomberger, Sebastian
AU - Oberreiter, Matthias
AU - Leitner, Martin
AU - Stoschka, Michael
AU - Thuswaldner, Jörg
N1 - Funding Information: Funding: This research was funded by the Austrian Federal Ministry for Digital and Economic Affairs and the National Foundation for Research, Technology and Development. Funding Information: Acknowledgments: The financial support by the Austrian Federal Ministry for Digital and Economic Affairs and the National Foundation for Research, Technology and Development is gratefully acknowledged. Furthermore, the authors would like to thank the industrial partners BMW AG and Nemak Dillingen GmbH for the excellent mutual scientific cooperation within the CD-laboratory framework. Special thanks go to Michael Simon Pegritz, coworker within the Christian Doppler Laboratory for Manufacturing Process based Component Design, for supporting the developement of the microstructural characterisation. Publisher Copyright: © 2020 by the authors.
PY - 2020/5/9
Y1 - 2020/5/9
N2 - The local fatigue strength within the aluminium cast surface layer is affected strongly by surface layer porosity and cast surface texture based notches. This article perpetuates the scientific methodology of a previously published fatigue assessment model of sand cast aluminium surface layers in T6 heat treatment condition. A new sampling position with significantly different surface roughness is investigated and the model exponents a1 and a2 are re-parametrised to be suited for a significantly increased range of surface roughness values. Furthermore, the fatigue assessment model of specimens in hot isostatic pressing (HIP) heat treatment condition is studied for all sampling positions. The obtained long life fatigue strength results are approximately 6% to 9% conservative, thus proven valid within an range of 30 µm ≤ Sv ≤ 260 µm notch valley depth. To enhance engineering feasibility even further, the local concept is extended by a probabilistic approach invoking extreme value statistics. A bivariate distribution enables an advanced probabilistic long life fatigue strength of cast surface textures, based on statistically derived parameters such as extremal valley depth Svi and equivalent notch root radius ρi . Summing up, a statistically driven fatigue strength assessment tool of sand cast aluminium surfaces has been developed and features an engineering friendly design method.
AB - The local fatigue strength within the aluminium cast surface layer is affected strongly by surface layer porosity and cast surface texture based notches. This article perpetuates the scientific methodology of a previously published fatigue assessment model of sand cast aluminium surface layers in T6 heat treatment condition. A new sampling position with significantly different surface roughness is investigated and the model exponents a1 and a2 are re-parametrised to be suited for a significantly increased range of surface roughness values. Furthermore, the fatigue assessment model of specimens in hot isostatic pressing (HIP) heat treatment condition is studied for all sampling positions. The obtained long life fatigue strength results are approximately 6% to 9% conservative, thus proven valid within an range of 30 µm ≤ Sv ≤ 260 µm notch valley depth. To enhance engineering feasibility even further, the local concept is extended by a probabilistic approach invoking extreme value statistics. A bivariate distribution enables an advanced probabilistic long life fatigue strength of cast surface textures, based on statistically derived parameters such as extremal valley depth Svi and equivalent notch root radius ρi . Summing up, a statistically driven fatigue strength assessment tool of sand cast aluminium surfaces has been developed and features an engineering friendly design method.
KW - cast aluminium
KW - fatigue strength assessment
KW - surface layer porosity
KW - Areal roughness parameter
KW - Hot isostatic pressing
KW - extreme value statistics
KW - probabilistic long life fatigue strength
UR - http://www.scopus.com/inward/record.url?scp=85090253618&partnerID=8YFLogxK
U2 - 10.3390/met10050616
DO - 10.3390/met10050616
M3 - Article
VL - 10.2020
SP - 616
JO - Metals : open access journal
JF - Metals : open access journal
SN - 2075-4701
IS - 5
M1 - 616
ER -