Deep Neural Network Models for Improving Truck Productivity Prediction in Open‑pit Mines - Mining, Metallurgy & Exploration (2024)
- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 18
- File Size:
- 2530 KB
- Publication Date:
- Feb 12, 2024
Abstract
The accurate prediction of truck productivity plays a pivotal role in improving the efficiency and profitability of open-pit mining
operations. However, predicting truck productivity is challenging owing to the complex nature of the working conditions
of the mine site. This paper proposes a deep neural network model to overcome the challenge of predicting truck productivity
in open-pit mines. The prediction model was built using eight variables and was optimized by considering different train-test
split ratios, numbers of hidden layers and neurons, and activation functions. The proposed model's performance was evaluated
using various metrics and was compared with other commonly used machine learning algorithms. According to the
results, the proposed model outperformed traditional machine learning algorithms by achieving higher accuracy and lower
error rates, with the best-performing model having four hidden layers with 70 neurons per layer and a scaled exponential
linear unit activation function, resulting in a coefficient of determination value of 0.89. This demonstrates the potential of
deep neural network models for predicting truck productivity in open-pit mine sites. Moreover, a single variable sensitivity
analysis was conducted to investigate the impact of input variables on truck productivity. The results show that haul distance
is the most influential variable for the prediction of truck productivity.
Citation
APA: (2024) Deep Neural Network Models for Improving Truck Productivity Prediction in Open‑pit Mines - Mining, Metallurgy & Exploration (2024)
MLA: Deep Neural Network Models for Improving Truck Productivity Prediction in Open‑pit Mines - Mining, Metallurgy & Exploration (2024). Society for Mining, Metallurgy & Exploration, 2024.