Control Systems and Computers, N4, 2022, Article 3

https://doi.org/10.15407/csc.2022.04.024

Control Systems and Computers, 2022, Issue 4 (300), pp. 24-34

UDK 004.7

V.F. Grechaninov, PhD (Eng.), Head of Department, The Institute of Mathematical Machines and Systems Problems of the Ukraine National Academy of Science (IMMSP NAS of Ukraine), Glushkov ave., 42, Kyiv, 03187, Ukraine,
ORCID: https://orcid .org/0000-0001-62683204vgrechaninov@gmail.com

I.M. Oksanych, PhD (Eng.), Senior Research Associate, The Institute of Mathematical Machines and Systems Problems of the Ukraine National Academy of Science (IMMSP NAS of Ukraine), Glushkov ave., 42, Kyiv, 03187, Ukraine, ORCID: https://orcid.org/0000-0002-1208-3427, inokc2018@gmail.com

A.V. Lopushansky, Research Associate, The Institute of Mathematical Machines and Systems Problems of the Ukraine National Academy of Science (IMMSP NAS of Ukraine), Glushkov ave., 42, Kyiv, 03187, Ukraine, ORCID: https://orcid .org/0000-00024840-0236anatoliy.lopushanskyi@gmail.com

USE OF CLOUD TECHNOLOGIES TO SOLVE ISSUES OF INFORMATION INTEGRATION IN MULTI-LEVEL MANAGEMENT SYSTEMS

Introduction. Currently, the paradigm of cloud computing has become widespread in many areas of human life. Particular attention is paid to the use of cloud technologies in emergency response management systems. In Ukraine, such systems are multi-level, mainly with state administration. The use of cloud technologies also opens up new opportunities for the processes of information integration in these systems. Therefore, the problem of building cloud computing models for data integration in multilevel emergency response management systems is quite relevant.

Purpose of the article. The purpose of the article is to build a model for integrating data coming to different levels of a 3-level emergency response management model using cloud computing technology. Three main levels of government carried out by public authorities – strategic (state), operational (regional) and tactical (direct executors) are involved in responding to crisis and emergency situations and are the object of research work in terms of data integration using cloud computing.

Results. The analysis of a 3-level emergency response management system was carried out for the purpose of transformation, integration and storage in cloud structures of data coming from different sources. A study was made of the process of converting primary data to a state that allows them to be used as input in analytical systems. A hybrid cloud infrastructure for processing and storing data at various levels of management is proposed. It is proposed to use a role-oriented user interface for accessing a catalog of services that are publicly available in a hybrid cloud. The advantages of using cloud technologies in creating a joint information environment and situational awareness for a 3-level emergency response management model are shown.

Conclusions. As a result of the research, it can be concluded that the use of cloud technologies in multi-level emergency response management systems can provide an opportunity to solve the problem of processing and storing a large amount of incoming data and provide an advantage in the processes of creating a joint information environment and awareness of the situation. The results of the work can be useful in building a cloud infrastructure for multi-level control systems.

 Download full text! (On Ukrainian)

Keywords: multilevel control systems, cloud technologies, data transformation.

  1. The Law of Ukraine “On Cloud Services” from 17.02.2022 №2075-IX. [online]. Available at: <https://zakon.rada.gov.ua/laws/show/2075-20#Text/> [Accessed: 18 Sept. 2022] (In Ukrainian).
  2. Mell, P., Grance, T., 2011. “The NIST Definition of Cloud Computing”. National Institute of Standards and Technology. Special Publication, 800-145.
    https://doi.org/10.6028/NIST.SP.800-145
  3. DoD Cloud Strategy, 2018. [online]. Available at: <https://media.defense.gov/2019/Feb/04/2002085866/-1/-1/1/DOD-CLOUD-STRATEGY.PDF> [Accessed: 1 June 2022].
  4. Dempsey, M.E., 2013. Joint Information Environment. White Paper. [online]. Available at: <https://www.jcs.mil/Portals/36/Documents/Doctrine/concepts/cjcs_wp_infoenviroment.pdf?ver=2017-12-28-162048-650> [Accessed: 18 Sept. 2022].
  5. Skoryk, A. Niziienko, B., Dudush, A., Shulezhko, V., Romanchenko, I., 2021. “Evolution from the Network-Centric Warfare Concept to the Data-Centric Operation Theory”. Advances in Military Technology, 16 (2), pp. 219-234.
    https://doi.org/10.3849/aimt.01430
  6. Gros, P., 2019. “The “tactical cloud”, a key element of the future combat air system”. Fondation pour la recherche stratégique. Note de la FRS.
  7. Frey, T., Jr. “F-35 Information Fusion”. Lockheed Martin, 2018. [online]. Available at: <https://swiss-f35.ch/wp-content/uploads/2021/08/PIRA-F-35-Sensor-Fusion-Brief-for-Switzerland.pdf > [Accessed: 1 June 2022].
  8. Air Superiority 2030 Flight Plan, 2016. Enterprise Capability Collaboration Team. [online]. Available at: < https://www.af.mil/Portals/1/documents/airpower/Air%20Superiority%202030%20Flight%20Plan.pdf> [Accessed: 1 June 2022].
  9. Hosseinpour, F., Plosila, J., Tenhunen, H., 2016. “Smart Data: A New Perspective of Tackling the Big Data Phenomena Leveraging a Fog Computing System”. International Journal of Digital Content Technology and its Applications (JDCTA). 10 (5).
  10. What is Data Transformation? 2022. TIBCO Software Inc. [online]. Available at: <https://www.tibco.com/reference-center/what-is-data-transformation> [Accessed: 1 June 2022].
  11. Bonomi, F., Milito, R., Jiang, Zhu, Addepalli, S., 2012. “Fog Computing and Its Role in the Internet of Things. Cisco Systems Inc”. MCC’12, August 17, 2012, Helsinki, Finland.
    https://doi.org/10.1145/2342509.2342513
  12. Roca, D., Quiroga, J., Valero, M., Nemirovsky, M., 2017. “Fog Function Virtualization: a Flexible Solution for IoT Applications”, IEEE Xplore, 15 June 2017. 
    https://doi.org/10.1109/FMEC.2017.7946411
  13. Lele, A., Sharma, M., 2014. “Relevance of Cloud Computing for Defence”. Journal of Defence Studies, 8 (2), pp. 63-84.
  14. Gargees, R., Morago, B., Pelapur, R., Chemodanov, D., Calyam, P., Oraibi, Z., Duan, Y., Seetharaman, G., Palaniappan, K., 2017. “Incident-Supporting Visual Cloud Computing Utilizing Software-Defined Networking”. IEEE Transactions on Circuits and Systems for Video Technology, 27 (1), pp 182-197. 
    https://doi.org/10.1109/TCSVT.2016.2564898

Received 25.10.2022