Abstract

Over the years, various models have been developed in the stages of the mining process that have allowed predicting and enhancing results, but it is the breakage, the variable that connects all the activities of the mining process from the point of view of costs (drilling, blasting, loading, hauling, crushing and grinding). To improve this process, we have designed and developed a computational model based on an Artificial Neural Network (ANN), the same that was built using the most representative variables such as the properties of explosives, the geomechanical parameters of the rock mass, and the design parameters of drill-blasting. For the training and validation of the model, we have taken the data from a copper mine as reference located in the north of Chile. The ANN architecture was of the supervised type containing: an input layer, a hidden layer with 13 neurons and an output layer that includes the sigmoid activation function with symmetrical properties for optimal model convergence. The ANN model was fed-back in its learning with training data until it becomes perfected, and due to the experimental results obtained, it is a valid prediction option that can be used in future blasting of ore deposits with similar characteristics using the same representative variables considered. Therefore, it constitutes a valid alternative for predicting rock breakage, given that it has been experimentally validated, with moderately reliable results, providing higher correlation coefficients than traditional models used, and with the additional advantage that an ANN model provides, due to its ability to learn and recognize collected data patterns. In this way, using this computer model we can obtain satisfactory results that allow us to predict breakage in similar scenarios, providing an alternative for evaluating the costs that this entails as a contribution to the work.

Highlights

  • Artificial intelligence is taking a greater role in the various processes of automation.Mining has not been elusive, having developed different models of Artificial Neural Networks (ANN)for prediction in the area of blasting

  • Kulatilake et al [2] developed a prediction model for rock fragmentation based on ANN, in order to predict the average size of the particles, resulting from fragmentation in rock

  • Python libraries were used to obtain the design, ANN was evaluated using various descending gradient algorithms [27] to obtain the optimal design and validate the results of P80, P50 and P20 of the model with the actual values contained in the study data and with the statistical parameters obtained from the multiple linear regression model

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Summary

Introduction

Artificial intelligence is taking a greater role in the various processes of automation.Mining has not been elusive, having developed different models of Artificial Neural Networks (ANN)for prediction in the area of blasting. Artificial intelligence is taking a greater role in the various processes of automation. Mining has not been elusive, having developed different models of Artificial Neural Networks (ANN). For prediction in the area of blasting. Within studies published on this subject, Oraee and Asi [1]. Mentioned that breakage of the rock after blasting is an important factor in the associated cost of the mine. We find that the breakage of the rock after blasting is estimated analytically using the neural networks. This study was carried out using the actual data collected from the Gol-e-Gohar iron mine in Iran. Kulatilake et al [2] developed a prediction model for rock fragmentation based on ANN, in order to predict the average size of the particles, resulting from fragmentation in rock

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