Predicting Mine-Wide Seismogenic Hazard with Confidence Using Calibrated Numerical Models - RASIM 2022

Society for Mining, Metallurgy & Exploration
Kathy Kalenchuk
Organization:
Society for Mining, Metallurgy & Exploration
Pages:
20
File Size:
3434 KB
Publication Date:
Apr 26, 2022

Abstract

To develop strategic and tactical strategies to manage seismic hazard in a safe and economic manner, it is necessary to understand the spatial and temporal distribution of mine wide seismogenic behavior. Global mine-scale numerical stress modelling provides a means to forward predict seismic susceptibility thereby facilitating informed decision making for the development and implementation of strategic and tactical risk mitigation measures. To make forward predictions of hazard susceptibility using global stress models with reasonable confidence, it is necessary to rigorously calibrate numerical stress models to the observed history of ground reaction. This paper demonstrates quantifiable methods for calibrating numerical models and developing probabilistic prediction criterion using seismic data. The appropriate applications of model inputs (including boundary conditions, constitutive models and material parameterization) specific to global mine-scale modelling are also discussed. Lastly, this paper demonstrates how the calibration process adds value not only to informed decision making, but also to the improved understanding of site geomechanical conditions; including enhanced identification of geotechnical domains and mechanical indicators required for seismic mechanism domaining.
Citation

APA: Kathy Kalenchuk  (2022)  Predicting Mine-Wide Seismogenic Hazard with Confidence Using Calibrated Numerical Models - RASIM 2022

MLA: Kathy Kalenchuk Predicting Mine-Wide Seismogenic Hazard with Confidence Using Calibrated Numerical Models - RASIM 2022. Society for Mining, Metallurgy & Exploration, 2022.

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