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Please use this identifier to cite or link to this item: http://dspace.bsu.edu.ru/handle/123456789/41375
Title: Prediction of strength characteristics of high-entropy alloys Al-Cr-Nb-Ti-V-Zr systems
Authors: Klimenko, D. N.
Yurchenko, N. Yu.
Stepanov, N. D.
Zherebtsov, S. V.
Keywords: technique
metal science
alloys
high entropy alloys
machine learning
yield strength
microstructure
electron microscopy
temperatures
Issue Date: 2021
Citation: Prediction of strength characteristics of high-entropy alloys Al-Cr-Nb-Ti-V-Zr systems / D.N. Klimenko [et al.] // Materials Today: Proceedings. - 2021. - Vol.38, Pt.4.-P. 1535-1540. - (Modern Trends in Manufacturing Technologies and Equipment 2020 (ICMTMTE 2020) : International Conference, Sevastopol, 7-11 September 2020). - Refer.: p. 1539-1540.
Abstract: Experimental evaluations of mechanical properties and investigations microstructure are time-intensive, requiring weeks or months to produce and characterize a small number of candidate alloys. In this work, machine learning approaches were used for prediction yield strengths of high-entropy alloys Al-Cr-Nb- Ti-V-Zr system at 20, 600 and 800 C. Surrogate prediction model was built with support vector regression algorithm by a dataset including more 30 alloys Al-Cr-Nb-Ti-V-Zr system. Four model alloys were fabricated for testing the surrogate model by vacuum arc melting. After that model alloys were annealed in a quartz tube at 1200 C 10 h
URI: http://dspace.bsu.edu.ru/handle/123456789/41375
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