Predictive Insight into Tailings Flowability at Their Disposal Using Operating Data-Driven Artificial Neural Network (ANN) Technique

Author:

Herrera Nelson12ORCID,Mollehuara Raul1ORCID,Gonzalez María Sinche1ORCID,Okkonen Jarkko3

Affiliation:

1. Oulu Mining School, University of Oulu, P.O. Box 3000, 90570 Oulu, Finland

2. Department of Metallurgical and Mining Engineering, Universidad Católica del Norte, Antofagasta 1270709, Chile

3. Geological Survey of Finland GTK, Vuorimiehentie 5, P.O. Box 96, 02151 Espoo, Finland

Abstract

This study investigates the application of artificial neural networks (ANNs) in predicting the flowability of mining tailings based on operational variables. As the mining industry seeks to enhance operations with complex ores, the constant improvement and optimization of mineral waste management are crucial. The flowability of tailings was investigated with data driven by properties such as particle-size distribution, water content, compaction capacity, and viscoelastic characteristics that can directly affect stacking, water recovery capabilities, and stability at disposal, influencing storage capacity, operational continuity, and work safety. There was a strong correlation between water content and tailings flowability, emphasising its importance in operational transport and deposition. Three ANN models were evaluated to predict tailings flowability across three and five categories, where a model based on thickening operational variables, including yield stress and turbidity, demonstrated the highest accuracy, achieving up to 94.4% in three categories and 88.9% in five categories. Key variables such as flocculant dosage, water content, yield stress, and solid concentration were identified as crucial for prediction accuracy The findings suggest that ANN models, even with limited datasets, can provide reliable flowability predictions, supporting tailings management and operational decision-making.

Funder

Oulun Yliopiston Tukisäätiö

Publisher

MDPI AG

Reference72 articles.

1. Lottermoser, B. (2007). Mine Wastes, Springer. [3rd ed.].

2. ICCM (2021). Tailings Management Good Practice Guide Writing Team, ICCM.

3. COCHILCO (2020). Yearbook: Copper and Other Mineral Statistics 2001–2020, COCHILCO.

4. López, E. (2012). Estudio Experimental de la Permeabilidad de Materiales Depositados en Pilas de Lixiviación de Cobre. [Licenciate Thesis, Universidad de Chile]. Available online: https://repositorio.uchile.cl/handle/2250/102744.

5. Long-term lake sediment records and factors affecting the evolution of metal(loid) drainage from two mine sites (SW Finland);Parviainen;J. Geochem. Explor.,2012

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