Scientific and technical journal

«Automation and Informatization of the fuel and energy complex»

ISSN 0132-2222

A SYSTEM OF AUTOMATIC BALANCE CONTROL OF NATURAL GAS VOLUME BASED ON MULTILAYER PERCEPTRON

UDC: 622.691
DOI: 10.33285/0132-2222-2021-1(570)-33-38

Authors:

DAYEV ZHANAT ARIKKULOVICH 1,
SHOPANOVA GULZHAN EREZHEPOVNA 2,
TOKSANBAEVA BAKITGUL AITBAEVNA 2

1 Baishev University, Aktobe, Republic of Kazakhstan
2 Orenburg State University, Orenburg, Russian Federation

Keywords: balance of gas volumes, artificial neural network, perceptron, natural gas

Annotation:

One of the most important tasks in organizing pipeline transportation of natural gas remains to control and balance the volume of pumped natural gas. Within the framework of the paper, the solution of the problem of monitoring and searching for the occurred imbalance in gas volumes by developing an automated control system that allows continuous monitoring of the gas balance of the gas pipeline section as well as predicting and identifying places where the imbalance in gas supply volumes occurs is considered. The main feature of the system is the organization of an artificial neural network like a perceptron-type multilayer, taken as the basis of the system's algorithm. The paper gives recommendations on the implementation of a gas volume balance control and monitoring system based on the hardware and software capabilities of the dispatch control systems of the main gas pipelines. The paper is recommended for specialists in the field of automation of transportation of natural and associated petroleum gases through main gas pipelines.

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