Open Access

Suitability Determination of Machine Learning Techniques for the Operational Quality Assessment of Geophysical Survey Results


Cite

[1] Kazatomprom, Website of “Kazatomprom” National atomic company. Available at: http://www.kazatomprom.kz/enSearch in Google Scholar

[2] M. Dzhakishev, Chto takoe yaderno-toplivnyj cikl”, Aug. 04, 2009. Available at: http://www.liveinternet.ru/users/3362230/post107753670/Search in Google Scholar

[3] R. I. Muhamedyev, “Machine learning methods: An overview,” Computer modelling & new technologies, vol. 19, no. 6, pp. 14–29, 2015.Search in Google Scholar

[4] A. F. Kobussen, P. D. Agnew, and G. Broadbent, “Application of Machine Learning Techniques to Exploration: An Example Using Self-Organising Maps for Garnet Data,” 11th International Kimberlite Conference, Extended Abstract No. 11IKC-4917, 2017.Search in Google Scholar

[5] A. Varley, A. Tyler, L. Smith, and P. Dale, “Development of a neural network approach to characterise 226Ra contamination at legacy sites using gamma-ray spectra taken from boreholes,” Journal of Environmental Radioactivity, vol. 140, pp. 130–140, 2015. https://doi.org/10.1016/j.jenvrad.2014.11.01110.1016/j.jenvrad.2014.11.01125461525Search in Google Scholar

[6] K. Heibig and S. Treitel (Eds). Handbook of geophysical exploration. Seismic exploration. Elsevier B.V., 2010.Search in Google Scholar

[7] Y. Kuchin and J. Grundspeņķis, “Machine Learning Methods for Identifying Composition of Uranium Deposits in Kazakhstan,” Applied Computer Systems, December 2017, vol. 22, no. 1, pp. 21–27. https://doi.org/10.1515/acss-2017-001410.1515/acss-2017-0014Search in Google Scholar

[8] V. K. Hmelevskoj, “Geofizicheskie metody issledovaniya zemnoj kory” Chast 1. Mezhdunarodnyj universitet prirody, obshhestva i cheloveka, Dubna, 1997Search in Google Scholar

[9] M. V. Kalinnikova, B. A. Golovin, and K. B. Golovin, “Uchebnoe posobie po geofizicheskim issledovaniyam skvazhin”, Saratov, 2005.Search in Google Scholar

[10] ZAO NAC “Kazatomprom”, TOO “IVT”, “Metodicheskie rekomendacii po kompleksu geofizicheskih metodov issledovaniya skvazhin pri podzemnom vyshhelachivanii urana”, Almaty, 2003.Search in Google Scholar

[11] ZAO NAC “Kazatomprom”, TOO “IVT”, “Instrukciya po gamma karotazhu pri podgotovke k ekspluatacii i ekspluatacii plastovo infiltracionnyh mestorozhdenij urana”, Almaty, 2009.Search in Google Scholar

[12] TOO “Gornorudnaya kompaniya”, TOO “Geotehnoservis”, “Tehnicheskaya instrukciya po provedeniyu issledovanij v skvazhinah na plastovo infiltracionnyh mestorozhdeniyah urana”, Almaty, 2010.Search in Google Scholar

[13] MPR RF, “Metodicheskie rekomendacii po geofizicheskomu oprobovaniyu pri podschete zapasov mestorozhdenij metallov i nerudnogo syrya”. Oct. 13, 2007, № 37.Search in Google Scholar

[14] V. M. Muravev, “Spravochnik mastera po dobyche nefti”, Moskva: Nedra, 1975.Search in Google Scholar

[15] V. I. Ferronskij, “Radioizotopnye metody issledovaniya v inzhenernoj geologii i gidrogeologii”, 1972.Search in Google Scholar

[16] N. I. Buyalov, “Poiski i razvedka neftyanyh i gazovyh mestorozhdenij”, Moskva: Gostoptehizdat, 1960.Search in Google Scholar

[17] A. A. Korshak, “Osnovy neftegazovogo dela”, Ufa: DizajnPoligrafServis, 2005.Search in Google Scholar

[18] AO NAC Kazatomprom, “Popravochnye koefficienty primenyaemye pri avtomatizirovannoj interpretacii gamma i elektrokarotazhej na mestorozhdeniyah AO NAC Kazatomprom”, AO NAC Kazatomprom, Astana, 2014.Search in Google Scholar

[19] Promdevelop Editors Team, “Big Data - chto takoe sistemy bolshih dannyh? Razvitie tehnologij Big Data”, Oct. 5, 2017. Available at: https://promdevelop.ru/big-data/Search in Google Scholar

[20] I. Chubukova, “Data mining” Binom. Laboratoriya znanij, 2008.Search in Google Scholar

[21] A. M. Turing, “Computing machinery and intelligence,” Mind, vol. LIX, no. 236, pp. 433–460, October 1950. https://doi.org/10.1093/mind/LIX.236.43310.1093/mind/LIX.236.433Search in Google Scholar

[22] V. Dyuk, and A. Samojlenko, “Data mining: uchebnyj kurs”, Spb: Piter, 2001.Search in Google Scholar

[23] Z. Markov and D. T. Larose. Data-mining the Web: uncovering patterns in Web content, structure, and usage. John Wiley & Sons Inc., 2006. https://doi.org/10.1002/047010809610.1002/0470108096Search in Google Scholar

eISSN:
2255-8691
Language:
English