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Journal of Mining Sciences

2018 year, number 4

A Comparative Assessment on Cement Raw Material Quarry Quality Distribution via 3-D Identification

Ali Can Ozdemir, Ahmet Dag, Turgay Ibrikci
Cukurova University, Adana, Turkey
Keywords: цемент, карьер, коэффициент насыщения, геостатистика, нейронная сеть, Cement, lime saturation factor, geostatistics, neural network

Abstract

In addition to capacity increase, quality also has critical importance in the cement industry. In a cement product process, the chemical properties based on the oxide composition are necessary in describing clinker characteristics. One of the most important parameters in cement product, Lime Saturation Factor (LSF) controls the ratio of alite to belite in the clinker and this factor is frequently used to evaluate the quality of cement. This study focuses on identifying LSF distribution in the site conditions. For this purpose, probabilistic (geostatistical) and non-probabilistic (neural network-based) algorithms have been used. 3-D based analyses revealed some relationships in the site conditions. The accuracy studies performed by performance indicators specified that the non-probabilistic methods produced better statistical prediction capacity. Thus, the adaptive neural algorithms can ensure the results identify the quality distribution in connection with geological parameters.