Scientific and technical journal

«Automation and Informatization of the fuel and energy complex»

ISSN 0132-2222

Automation and Informatization of the fuel and energy complex
Application architecture and technologies for the development of the system of dispatch communication simulation

UDC: 004.9:622.692.4
DOI: 10.33285/2782-604X-2023-7(600)-31-34

Authors:

DEVIN DMITRY N.1,
BALCHENKO ANTON S.1,
SHVECHKOV VITALY A.1,
MARINENKO MAXIM V.2

1 National University of Oil and Gas "Gubkin University", Moscow, Russia
2 NII "Transneft", Moscow, Russia

Keywords: client-server architecture, dispatching simulator, recognition, natural language processing, vectorization, machine learning

Annotation:

The article considers the architecture and overviews the technologies used when developing the dispatch communications imitation (DCI) system. The applications that are a part of the DCI system are considered as well. The methods of the software module interaction with the components of the dispatching simulator are developed and outlined. The main subsystems of the dispatching simulator are given, that simulate stationary and non-stationary operational modes of main pipelines, which simulate automated workstations (AWS) and perform other functions. The place of the DCI system in the software complex of the dispatcher simulator is described, and attention paid to the tasks that the developed software module performs. The characteristic is given to natural language processing methods used to recognize voice commands, which include cleaning methods, reduction of phrases to one form, lemmatization, stemming, stop-word removal, vectorization and other methods. The directions for further development of the DCI system, which include the transfer of the developed software to cross-platform technologies, are outlined.

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