Data mining techniques for the prediction of Bohme surface abrasion rates from rock properties
Citation
F. Bayram, "Data Mining Techniques for the Prediction of Bohme Surface Abrasion Rates from Rock Properties," Journal of Testing and Evaluation 48, no. 1 (2020): 323-332. https://doi.org/10.1520/JTE20190130Abstract
Abrasion refers to the wearing down of rock surfaces due to abrasive grains. Abrasion resistance
refers to the ability of rocks to withstand wear. Abrasion resistance is used to determine
the resistance of building materials produced for flooring, cladding, and pavements and to
demonstrate suitability for higher movement areas. While it is, therefore, very necessary to
determine the abrasion rate of building materials prior to construction, it is, however, highly
demanding and time consuming to determine abrasion rates. Thus, the aim of this study is to
use some rock properties to determine abrasion rates. The study samples, consisting of 32
different types of rocks (sedimentary, metamorphic, and igneous) collected from different regions
in Turkey, were subjected to some physical and mechanical tests, namely the following:
unit volume weight (UVW), apparent porosity (AP), modulus of elasticity (E), uniaxial compressive
strength (UCS), tensile strength (TS), Shore hardness (SH), and point load strength
(PL) and Bohme abrasion tests. To ascertain the abrasion rate from some physical and
mechanical properties of rocks, the results of these tests were analyzed using data mining
(DM) techniques. The results showed that there are high correlation coefficients between abrasion
rate and the aforementioned rock properties with the support vector machines (SVM) and
random forests (RF) models obtained as R = 0.882 and 0.881, respectively. This work has
shown that the rock Bohme abrasion rate can be predicted from some of its physical and
mechanical properties with significant level of confidence.