Ivan Ostroumov
Ivan OSTROUMOV D.Sc., Ph.D.
"Navigation is a process of movement. From one point to another in defined space. We live until we could navigate..." (Ivan Ostroumov)

Self-organization Technique with a Norm Transformation Based Filtering for Sustainable Infocommunications Within CNS-ATM Systems

A self-organization machine learning technique for sustainable infocommunications within communications, navigation, and surveillance / air traffic management (CNS/ATM) systems is proposed in the paper. The proposed technique is based on the modification of the expectation-maximization algorithm with adding of components of Gaussian mixture model. The proposed technique allows for an unsupervised self-organization of system parameters into ranges (e.g., frequency bands and any other groups of homogenous parameters, ''), which simplifies a general tuning of infocommunications for aeronautical purposes in dynamically changing conditions. The proposed technique uses a norm transformation filtering to restrict possible influence of outliers and anomalies in input system parameters. The feature that only observed input system parameters are required for all stages of data processing characterizes the proposed technique. Setting of initial parameters, stopping criteria for internal and external iterative machine learning processes, robustness and computational cost within the proposed technique are described and analyzed. An example of simulation of the proposed technique, which presents an unsupervised automatic clustering of the available radio spectrum recourse, is also shown in the paper.

Holubnychyi O.
Zaliskyi M.
Ostroumov I.V.
Sushchenko O.
Solomentsev O.
Averyanova Yu.
Bezkorovainyi Y.
Voliansky R.
Bovdui I.
Ivannikova V.
Cherednichenko K.
Kuznetsov B.
Language:
English
Type
Refereed Journal Publications
Firstpage Number
262
Lastpage Number
278
Keywords
CNS/ATM Systems, Machine Learning, Sustainable, Infocommunications
Publisher
In: Ostroumov, I., Zaliskyi, M. (eds) Proceedings of the 2nd International Workshop on Advances in Civil Aviation Systems Development. ACASD 2024. Lecture Notes in Networks and Systems
Volume
992
Year of publishing


SCImago Journal & Country Rank
Citation
DSTU
, , , , , , , , , , , , , Self-organization Technique with a Norm Transformation Based Filtering for Sustainable Infocommunications Within CNS-ATM Systems. In: Ostroumov, I., Zaliskyi, M. (eds) Proceedings of the 2nd International Workshop on Advances in Civil Aviation Systems Development. ACASD 2024. Lecture Notes in Networks and Systems . . 992. P. 262-278 DOI: 10.1007/978-3-031-60196-5_20.
IEEE
et al., "Self-organization Technique with a Norm Transformation Based Filtering for Sustainable Infocommunications Within CNS-ATM Systems," in In: Ostroumov, I., Zaliskyi, M. (eds) Proceedings of the 2nd International Workshop on Advances in Civil Aviation Systems Development. ACASD 2024. Lecture Notes in Networks and Systems , vol. 992, , pp. 262-278, doi:10.1007/978-3-031-60196-5_20.
Harvard
Holubnychyi O., Zaliskyi M., Ostroumov I.V., Sushchenko O., Solomentsev O., Averyanova Yu., Bezkorovainyi Y., Sokolova O., Voliansky R., Bovdui I., Ivannikova V., Cherednichenko K., Nikitina T., and Kuznetsov B., 2024, 3. Self-organization Technique with a Norm Transformation Based Filtering for Sustainable Infocommunications Within CNS-ATM Systems. In In: Ostroumov, I., Zaliskyi, M. (eds) Proceedings of the 2nd International Workshop on Advances in Civil Aviation Systems Development. ACASD 2024. Lecture Notes in Networks and Systems , 992 (pp. 262-278).
Springer
Holubnychyi, O., Zaliskyi, M., Ostroumov, I.V., Sushchenko, O., Solomentsev, O., Averyanova, Yu., Bezkorovainyi, Y., Sokolova, O., Voliansky, R., Bovdui, I., Ivannikova, V., Cherednichenko, K., Nikitina, T., Kuznetsov, B.: Self-organization Technique with a Norm Transformation Based Filtering for Sustainable Infocommunications Within CNS-ATM Systems. In: Ostroumov, I., Zaliskyi, M. (eds) Proceedings of the 2nd International Workshop on Advances in Civil Aviation Systems Development. ACASD 2024. Lecture Notes in Networks and Systems 992, 262-278 (2024). doi:10.1007/978-3-031-60196-5_20.
BibTex
@InProceedings{10.1007/978-3-031-60196-5_20, author="Holubnychyi, Oleksii and Zaliskyi, Maksym and Ostroumov, Ivan and Sushchenko, Olha and Solomentsev, Oleksandr and Averyanova, Yuliya and Bezkorovainyi, Yurii and Sokolova, Olena and Voliansky, Roman and Bovdui, Ihor and Ivannikova, Viktoriia and Cherednichenko, Kostiantyn and Nikitina, Tatyana and Kuznetsov, Borys", editor="Ostroumov, Ivan and Zaliskyi, Maksym", title="Self-organization Technique with a Norm Transformation Based Filtering for Sustainable Infocommunications Within CNS/ATM Systems", booktitle="Proceedings of the 2nd International Workshop on Advances in Civil Aviation Systems Development", year="2024", publisher="Springer Nature Switzerland", address="Cham", pages="262--278", abstract="A self-organization machine learning technique for sustainable infocommunications within communications, navigation, and surveillance / air traffic management (CNS/ATM) systems is proposed in the paper. The proposed technique is based on the modification of the expectation-maximization algorithm with adding of components of Gaussian mixture model. The proposed technique allows for an unsupervised self-organization of system parameters into ranges (e.g., frequency bands and any other groups of homogenous parameters), which simplifies a general tuning of infocommunications for aeronautical purposes in dynamically changing conditions. The proposed technique uses a norm transformation filtering to restrict possible influence of outliers and anomalies in input system parameters. The feature that only observed input system parameters are required for all stages of data processing characterizes the proposed technique. Setting of initial parameters, stopping criteria for internal and external iterative machine learning processes, robustness and computational cost within the proposed technique are described and analyzed. An example of simulation of the proposed technique, which presents an unsupervised automatic clustering of the available radio spectrum recourse, is also shown in the paper.", isbn="978-3-031-60196-5" }
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Refereed Journal Publications (82), Refereed Conference Proceedings (95), Peer-Reviewed Articles, Published in Local Journals (43), Theses (58), Author's Licence (30), Patents (5), Books and Chapters (26), Full List of Publications (339), Co-authors, Co-author Network, Template of Ministry of Education and Science, Metrics in Scholar Databases