Fernando Pacheco’s research while affiliated with Pontifical Catholic University of Valparaíso and other places

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (1)


Application of KS Test for geometrics and geotechnical control critical variables.
Summary of results obtained in the RF, SVM, ANN, and XGBoost models PFM to be con- sidered for the evaluation of PS of STD in the closure phase. Bold values show the best results.
Generation of Synthetic Data for the Analysis of the Physical Stability of Tailing Dams through Artificial Intelligence
  • Article
  • Full-text available

November 2022

·

125 Reads

·

8 Citations

Fernando Pacheco

·

·

Osvaldo Piña

·

[...]

·

Gullibert Novoa

In this research, we address the problem of evaluating physical stability (PS) to close tailings dams (TD) from medium-sized Chilean mining using artificial intelligence (AI) algorithms. The PS can be analyzed through the study of critical variables of the TD that allow estimating different potential failure mechanisms (PFM): seismic liquefaction, slope instability, static liquefaction, overtopping, and piping, which may occur in this type of tailings storage facilities in a seismically active country such as Chile. Thus, this article proposes the use of four machine learning algorithms, namely random forest (RF), support vector machine (SVM), artificial neural networks (ANN), and extreme gradient boosting (XGBoost), to estimate five possible PFM. In addition, due to the scarcity of data to train the algorithms, the use of generative adversarial networks (GAN) is proposed to create synthetic data and increase the database used. Therefore, the novelty of this article consists in estimating the PFM for TD and generating synthetic data through the GAN. The results show that, when using the GAN, the result obtained by the ML models increases the F1-score metric by 30 percentage points, obtaining results of 97.4%, 96.3%, 96.7%, and 97.3% for RF, SVM, ANN, and XGBoost, respectively.

Download

Citations (1)


... Moreover, techniques for generating synthetic data have been developed to complement real datasets and improve the ability of AI models to learn and generalize across different scenarios. A recent example includes the use of generative adversarial networks (GANs) for creating synthetic data and parameters used in training regression models to estimate PS [18]. These innovations are facilitating a more automated and continuous analysis of TSF, a critical step toward improving risk management and mitigation for such mining facilities. ...

Reference:

Simplified Physical Stability Assessment of Chilean Mine Waste Storage Facilities Using GIS and AI: Application in the Antofagasta Region
Generation of Synthetic Data for the Analysis of the Physical Stability of Tailing Dams through Artificial Intelligence