Artículo de revista
An LSTM Approach for SAG Mill Operational Relative-Hardness Prediction
Fecha
2020Registro en:
Minerals 2020, 10, 734
10.3390/min10090734
Autor
Ávalos, Sebastián
Kracht Gajardo, Willy
Ortiz, Julian
Institución
Resumen
Ore hardness plays a critical role in comminution circuits. Ore hardness is usually characterized at sample support in order to populate geometallurgical block models. However, the required attributes are not always available and suffer for lack of temporal resolution. We propose an operational relative-hardness definition and the use of real-time operational data to train a Long Short-Term Memory, a deep neural network architecture, to forecast the upcoming operational relative-hardness. We applied the proposed methodology on two SAG mill datasets, of one year period each. Results show accuracies above 80% on both SAG mills at a short upcoming period of times and around 1% of misclassifications between soft and hard characterization. The proposed application can be extended to any crushing and grinding equipment to forecast categorical attributes that are relevant to downstream processes.