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ANALYSIS OF A SMALL SAMPLE OF EXPERIMENTAL DATA IN THE MANAGEMENT OF GAS CONSUMPTION IN THE REGION

https://doi.org/10.30724/1998-9903-2018-20-1-2-62-69

Abstract

Analysis of a small sample of experimental data on gas consumption population, allowing to make the right decisions for forecasting of gas consumption in the management of gas supply to the region. Developed new helpful adequate regression models, which are used for forecasting gas consumption.

About the Authors

A. M. Kumaritov
North-Caucasian Institute of Mining and Metallurgy (State Technological University)
Russian Federation

Alan Kumaritov - Dr. Sci. (Tech.), prof. The Chair of Information Systems in Economy, Head of the Chair.

Vladikavkaz



A. E. Dzgoev
North-Caucasian Institute of Mining and Metallurgy (State Technological University)
Russian Federation

Alan Dzgoev - Cand. Sci. (Tech.). The Chair of Information Systems in Economy; Associate Professor, Deputy Head of Chair.

Vladikavkaz



R. B. Sharibov
North-Caucasian Institute of Mining and Metallurgy (State Technological University)
Russian Federation

Ratmir Sharibov - Post-graduate student (PG). The Chair of Information Systems in Economy.

Vladikavkaz



References

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Review

For citations:


Kumaritov A.M., Dzgoev A.E., Sharibov R.B. ANALYSIS OF A SMALL SAMPLE OF EXPERIMENTAL DATA IN THE MANAGEMENT OF GAS CONSUMPTION IN THE REGION. Power engineering: research, equipment, technology. 2018;20(1-2):62-69. (In Russ.) https://doi.org/10.30724/1998-9903-2018-20-1-2-62-69

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ISSN 1998-9903 (Print)
ISSN 2658-5456 (Online)