Artificial Intelligence Algorithm for Tailing Storage Facility Soil Classification Based on CPT Measurements

Society for Mining, Metallurgy & Exploration
Natalia Duda-Mróz Sergii Anufriiev Wioletta Koperska Paweł Stefaniak
Organization:
Society for Mining, Metallurgy & Exploration
Pages:
10
File Size:
1106 KB
Publication Date:
Jun 25, 2023

Abstract

Due to the high environmental risks and negative impact of a failure, tailings storage facilities (TSFs) need constant monitoring. Advanced mathematical models have been developed in the past to predict the behavior of TSFs and raise alerts if needed. To be precise and reliable, such models need a spatial distribution of soil types within the dam as an input. Getting this data from laboratory measurements is time and costconsuming. In this article, we propose an ANN-powered algorithm, which allows us to accurately estimate the soil distribution based on a cone penetration test (CPT).
Citation

APA: Natalia Duda-Mróz Sergii Anufriiev Wioletta Koperska Paweł Stefaniak  (2023)  Artificial Intelligence Algorithm for Tailing Storage Facility Soil Classification Based on CPT Measurements

MLA: Natalia Duda-Mróz Sergii Anufriiev Wioletta Koperska Paweł Stefaniak Artificial Intelligence Algorithm for Tailing Storage Facility Soil Classification Based on CPT Measurements. Society for Mining, Metallurgy & Exploration, 2023.

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