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EXPLORATIVE DATA ANALYSIS FROM MULTIPARAMETRIC MONITORING AT THE ACUTO FIELD LABORATORY (CENTRAL ITALY) FOR DETECTING PREPARATORY CONDITIONS TO ROCK BLOCK INSTABILITIES.

Authors :
GRECHI, GUGLIELMO
FERNANDES, JENNYPHER ROSA
JEAN-PIERRE HU
LE GALLAIS, ANNE-CHARLOTTE
SAMPIERI, HUGO
AMATO, GABRIELE
D'ANGIÃ’, DANILO
FIORUCCI, MATTEO
IANNUCCI, ROBERTO
MARMONI, GIAN MARCO
MARTINO, SALVATORE
Source :
Italian Journal of Engineering Geology & Environment; 2022, Issue 2, p59-77, 19p
Publication Year :
2022

Abstract

This study summarises the research activity carried out in the Acuto Field Laboratory (FR, Italy), where experiments testing the stability of a subvertical rock wall in limestone are ongoing within an abandoned quarry, now devoted to studies focused on the mitigation of geological risks. The research focuses on the natural factors that can prepare a subvertical rock mass to evolve through subsequent rock fall if predisposing conditions are verified. A network of multiparameter monitoring sensors is installed on three different sectors of the rock wall to record both the natural and anthropogenic stressors and the effects of deformation induced by them. In terms of stressors, the multiparametric monitoring system is able to detect the environmental parameters, such as temperature, rainfall, wind, strain, and vibrations. In terms of induced effects on the rock mass, the multiparametric monitoring system is suitable to detect deformation, displacement, and microseismicity. In this paper, the different monitored parameters are presented along with detailed analyses to highlight cause to effect relationships, such as freezing and thawing, to retrieve correlations among different factors. The obtained results represent the first analysis of the data recorded in the three instrumented sectors of the field laboratory and allowed evaluating the role of preparatory factors in inducing rock falls, opening further perspective on numerical modelling or machine learning applications based on monitoring data. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
18256635
Issue :
2
Database :
Complementary Index
Journal :
Italian Journal of Engineering Geology & Environment
Publication Type :
Academic Journal
Accession number :
162667142
Full Text :
https://doi.org/10.4408/IJEGE.2022-02.O-05