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
Modern business analysis tools as a key for increasing the information system efficiency

UDC: 658.512
DOI: 10.33285/2782-604X-2023-1(594)-5-11

Authors:

SHIBANOV ALEXANDER V.1,
TRETYAKOV DMITRY V.1,
OVODKOVA KSENIA V.1,
ZHUCHKOV KONSTANTIN N.1

1 Gazprom diagnostics, St. Petersburg, Russia

Keywords: information system, dashboard, business analytics

Annotation:

The article overviews the use of business analysis tools in the information system for assessing the technical state of technological facilities of PJSC "Gazprom" (ISTS "Infotech"), the implementation of which significantly increased not only the efficiency of working with information system data and expanded the possibilities of providing prompt and reliable information in PJSC "Gazprom", required for making managerial decisions, but also presented an interactive tool for monitoring the activities and business processes of the ITS “Infotech” support unit. The use of proven and well-established methods of information statistical processing, the formation of ready-made metrics, the visualization of processing processes and results on pre-prepared dashboards made it possible to bring the quality of decision-making to a new level. It is shown that the real gain of decision-making acceleration at the top level of management ranged from 2 to 5 times, depending on the complexity and volume of the metric used.

Bibliography:

1. Sovremennye printsipy i napravleniya razvitiya sistemy organizatsii diagnostiki, tekhnicheskogo obsluzhivaniya i remonta v PAO "Gazprom" // Gazovaya prom-st'. – 2017. – № S2(754). – S. 5–9.
2. Povyshenie effektivnosti upravleniya informatsionnoy sistemoy otsenki tekhnicheskogo sostoyaniya tekhnologicheskikh ob"ektov gazovoy promyshlennosti / A.V. Shibanov, D.V. Tret'yakov, A.V. Ermachenko, K.N. Zhuchkov // Avtomatizatsiya i informatizatsiya TEK. – 2022. – № 10(591). – S. 18–25. – DOI: 10.33285/2782-604X-2022-10(591)-18-25
3. Vnedrenie tekhnologii postroeniya analiticheskikh otchetov Power BI v prilozheniyakh ISTS "Infotekh" po monitoringu napravleniya "Kontrol' kachestva" / A.N. Pronin, M.Yu. Kislyakov, V.A. Plesnyaev [i dr.] // Gazovaya prom-st'. – 2020. – № S1(797). – S. 22–29.
4. Big data analytics capabilities and knowledge management: impact on firm performance / A. Ferraris, A. Mazzoleni, A. Devalle, J. Couturier // Management Decision. – 2019. – Vol. 57, No. 8. – P. 1923–1936. – DOI: 10.1108/MD-07-2018-0825
5. Hsiuchin Chen, Chiang R.H.L., Storey V. Business Intelligence and Analytics: From Big Data to Big Impact // MIS Quarterly. – 2012. – Vol. 36, No. 4. – P. 1165–1188. – DOI: 10.2307/41703503
6. Renuka D.D., Swetha M. A Study on the Techniques of Sentiment Analysis for Unstructured Data using Big Data Analytics // Int. J. of Scientific Research in Computer Science, Engineering and Information Technology. – 2021. – Vol. 3, Issue 3. – P. 2456–3307.
7. Tamilselvi A., ParveenTaj M. Sentiment Analysis of Micro blogs using Opinion Mining Classification Algorithm // Int. J. of Science and Research. – 2013. – Vol. 2, Issue 10. – P. 196–202.
8. Improving the accuracy of estimates of the pulse sequence period using the methodology of complete sufficient statistics / K. Zhuchkov, M. Vasilchenko, A. Zagrebneva, A. Zavyalov // Scientific Reports. – 2022. – Vol. 12, No. 1. – P. 19932. – DOI: 10.1038/s41598-022-24457-2
9. Speciation of Ru Molecular Complexes in a Homogeneous Catalytic System: Fingerprint XANES Analysis Guided by Machine Learning / E.G. Kamyshova, A.L. Bugaev, S.A. Guda [et al.] // The J. of Physical Chemistry C. – 2021. – Vol. 125, Issue 50. – P. 27844–27852. – DOI: 10.1021/acs.jpcc.1c09082
10. Shibanov A.V., Zhuchkov K.N., Korobeynikov A.S. Reshenie zadachi fil'tratsii anomal'nykh izmereniy s ispol'zovaniem kriteriya Neymana – Pirsona pri analize vremennykh ryadov v ISTS "Infotekh" // Avtomatizatsiya, telemekhanizatsiya i svyaz' v neftyanoy promyshlennosti. – 2020. – № 8(565). – S. 32–36. – DOI: 10.33285/0132-2222-2020-8(565)-32-36
11. Tsifrovaya transformatsiya biznes-protsessov planirovaniya i provedeniya proverok kontrolya kachestva kapital'nogo remonta na ob"ektakh PAO "Gazprom" / S.V. Skrynnikov, A.N. Pronin, V.A. Titov [i dr.] // Gazovaya prom-st'. – 2022. – № S1(829). – S. 101–105.
12. An Advanced Big Data Quality Framework Based on Weighted Metrics / W. Elouataoui, I. El Alaoui, S. El Mendili, G. Youssef // Big Data and Cognitive Computing. – 2022. – Vol. 6, Issue 4. – DOI: 10.3390/bdcc6040153