Abstract
The underground mining process can be analysed with a data-oriented or process-oriented approach. The first of them is popularand wide known as data mining while the second is still not often used in the conditions of the mining companies. The aim of thispaper is an overview of data mining and process mining applications in an underground mining domain and an investigation ofthe most popular analytic techniques used in the defined analytic perspectives (“Diagnostics and machinery”, “Geomechanics”,“Hazards”, “Mine planning and safety”). In the paper two research questions are formulated: RQ1: What are the most populardata mining/process mining tasks in the analysis of the underground mining process? and RQ2: What are the most popular datamining/process mining techniques applied in the multi-perspective analysis of the underground mining process? In the paper sixty--two published articles regarding to data mining tasks and analytic techniques in the mentioned domain have been analysed. Theresults show that predominatingly predictive tasks were formulated with regard to the analysed phenomena, with strong overrepresentationof classification task. The most frequent data mining algorithms is comprised of the following: artificial neural networks,decision trees, rule induction and regression. Only a few applications of process mining in analysis of the underground miningprocess have been found – they were briefly described in the paper.
Publisher
Polish Mineral Engineering Society
Subject
Geochemistry and Petrology,Geotechnical Engineering and Engineering Geology
Cited by
14 articles.
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