| Название |
Применение алгоритма кластеризации
данных для анализа структурных особенностей массива
горных пород |
| Информация об авторе |
ООО «Институт Гипроникель», Санкт-Петербург, Россия
Румянцев А. Е., зав. лабораторией геотехники, канд. техн. наук, RumyantsevAE@nornik.ru Воробьев Д. В., инженер 3-й категории лаборатории геотехники
Центр геодинамической безопасности ЗФ ПАО «ГМК «Норильский никель», Норильск, Россия
Устинов А. К., начальник отдела геотехнического сопровождения горных работ Калякина А. В., главный специалист отдела непрерывного мониторинга и контроля горного давления |
| Библиографический список |
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