KnE Engineering

ISSN: 2518-6841

The latest conference proceedings on all fields of engineering.

Possibilities of Developing of Metallurgical Data Dumps

Published date: Apr 08 2020

Journal Title: KnE Engineering

Issue title: III Annual International Conference "System Engineering"

Pages: 43–47

DOI: 10.18502/keg.v5i3.6756

Authors:

R.A. Karelova - riya2003@mail.ru

V.M. Gruzman

Abstract:

Data about the technological production characteristics are sent to the archive, where they will be stored for many years. However, the stored data contains many undisclosed links between technological factors and technical and economic production indicators. The article presents a hypothesis about the possibility of processing data generated during production processes of industrial enterprises by analogy developing mining and physical dumps. The article provides an example of studying the sufficiency of the volume of a data metallurgical dump for constructing mathematical models using the experimental planning method. Samples from real production data dumps can compensate for the difficulties of implementing a modern active experiment in training future specialists in secondary vocational and higher education institutions. It is established that the data accumulated over the year in the production archive contain the necessary combinations of realizations of random variables for the two-factor model. The interval method of varying the levels of variables enables to construct an experimental matrix for a three-factor model as well.

Keywords: data dump, production data, metallurgical data, data analysis in metallurgy, matrix, mathematical planning, production management, model, model parameters identification, interval method.

References:

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