Data-driven approach for grinding circuit analysis, F. Wang, A. Vazirizadeh, and P. Rosario

- Organization:
- The Southern African Institute of Mining and Metallurgy
- Pages:
- 9
- File Size:
- 549 KB
- Publication Date:
- Jan 1, 2020
Abstract
Advances in data science, machine learning, and artificial intelligence are transforming mining
and mineral processing, and making them more algorithm intensive. The paradigm is shifting from one
of detection and control to one of prediction and optimisation. To build up reliable prediction and
optimisation models these steps should be passed: collect, aggregate, cleanse, and process large amounts
of complex, structured, and unstructured data as a first stage. Next, the right tools must be used to extract
meaningful features from the operational data for the build-up of a prediction model. A grinding circuit
is one of the challenging areas in terms of determining its overall efficiency and the prediction of product
quality. In a processing plant, some of the KPIs are typically unmeasurable or infrequently measured
for real-time application, e.g. ore grindability and grind size. However, these variables are required to
calculate the grinding circuit efficiency and to model the operation performance. In this paper, advanced
analytic tools have been used to extract one selected KPI (cyclone overall P80 or final grind size) and its
relationship with measured variables for an industrial dataset. The results illustrate that the performance
of the grinding circuit can be predicted for real-time monitoring by means of measured data.
Keywords: Grinding circuit, data-driven, machine learning, process modelling, hybrid modelling
Citation
APA:
(2020) Data-driven approach for grinding circuit analysis, F. Wang, A. Vazirizadeh, and P. RosarioMLA: Data-driven approach for grinding circuit analysis, F. Wang, A. Vazirizadeh, and P. Rosario. The Southern African Institute of Mining and Metallurgy, 2020.