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СДВИЖЕНИЕ ГОРНЫХ ПОРОД
Название Методика определения линейных параметров процессов сдвижений по цифровым моделям рельефа при разработке Хибинских месторождений апатит-нефелиновых руд
DOI 10.17580/gzh.2023.05.14
Автор Жерлыгина Е. С., Мустафин М. Г., Васильев Б. Ю., Николаев Р. В.
Информация об авторе

Научный центр геомеханики и проблем горного производства, Санкт-Петербургский горный университет, Санкт-Петербург, Россия:

Жерлыгина Е. С., старший научный сотрудник, канд. техн. наук, Zherlygina_ES@pers.spmi.ru
Мустафин М. Г., зав. кафедрой, д-р техн. наук
Васильев Б. Ю., аспирант-исследователь

 

Кировский филиал АО «Апатит», ПАО «ФосАгро», Кировск, Россия:
Николаев Р. В., главный маркшейдер

Реферат

На примере разработки хибинских месторождений апатит-нефелиновых руд рассмотрено применение цифровых моделей рельефа для определения расчетных параметров процессов сдвижения.

Ключевые слова Цифровая модель рельефа, параметры процесса сдвижения, маркшейдерский мониторинг, методы пространственной интерполяции, облако точек, воздушное лазерное сканирование
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Полный текст статьи Методика определения линейных параметров процессов сдвижений по цифровым моделям рельефа при разработке Хибинских месторождений апатит-нефелиновых руд
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