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)

Statistical Data Processing Technologies for Sustainable Aviation A Case Study of Ukraine

Aviation is widely recognised as a system of systems where interconnected components interact dynamically within a structured framework. Failures in aviation equipment, inconsistencies in technological procedures, and operational inefficiencies contribute to stochastic variability, making robust data-driven approaches essential for enhancing sustainability and resilience. This study proposes a comprehensive statistical data processing framework aimed at enhancing the sustainability and resilience of civil aviation systems, using Ukraine as a case study. Our analysis identifies two major gaps: an insufficient application of modern data processing techniques and a lack of consideration for the changepoint effect—a critical factor influencing reliability indicators, diagnostic parameters, and technological process trends. The scientific novelty and value of this article lie in the development of a new approach to data processing in civil aviation, which includes a set of methods for changepoint detection, the estimation of the model parameters after the changepoint, and the prediction of future values in trends of processed data. The practical value is associated with the possibility of implementing such processing for all components of civil aviation, where process parameters and trends of diagnostic variables for components of civil aviation systems are monitored. The analysis of the efficiency of the proposed approach to data processing showed the possibility of reducing operating costs, which can be considered within the framework of sustainable development of civil aviation. An important practical result is that the authors propose a Datahub model to facilitate the efficient collection, processing, and usage of aviation-related statistical data, supporting both sustainable decision-making and cost minimisation. A case study on aviation radio equipment demonstrates the application of statistical data processing techniques, incorporating the changepoint effect through Monte Carlo simulations.

Ivannikova V.
Zaliskyi M.
Solomentsev O.
Ostroumov I.V.
Kuzmenko N.S.
Language:
English
Type
Refereed Journal Publications
Page Number
5781
Keywords
statistical data processing; sustainable aviation; Ukraine; data-driven decision-making; changepoint effect; Monte Carlo method; AI-driven analytics; aviation radio equipment; aviation safety
Publisher
Sustainability
Volume
13
Issue
17
Year of publishing


SCImago Journal & Country Rank
Citation
DSTU
, , , , Statistical Data Processing Technologies for Sustainable Aviation A Case Study of Ukraine. Sustainability. . 13(17). P. 5781- DOI: 10.3390/su17135781.
IEEE
, , , , and , "Statistical Data Processing Technologies for Sustainable Aviation A Case Study of Ukraine," in Sustainability, vol. 13, issue 17, , 5781, doi:10.3390/su17135781.
Harvard
Ivannikova V., Zaliskyi M., Solomentsev O., Ostroumov I.V., and Kuzmenko N.S., 2025. Statistical Data Processing Technologies for Sustainable Aviation A Case Study of Ukraine. In Sustainability, 13(17) (5781).
Springer
Ivannikova, V., Zaliskyi, M., Solomentsev, O., Ostroumov, I.V., Kuzmenko, N.S.: Statistical Data Processing Technologies for Sustainable Aviation A Case Study of Ukraine. Sustainability 13(17), 5781 (2025). doi:10.3390/su17135781.
BibTex
@Article{su17135781, AUTHOR = {Ivannikova, Viktoriia and Zaliskyi, Maksym and Solomentsev, Oleksandr and Ostroumov, Ivan and Kuzmenko, Nataliia}, TITLE = {Statistical Data Processing Technologies for Sustainable Aviation: A Case Study of Ukraine}, JOURNAL = {Sustainability}, VOLUME = {17}, YEAR = {2025}, NUMBER = {13}, ARTICLE-NUMBER = {5781}, URL = {https://www.mdpi.com/2071-1050/17/13/5781}, ISSN = {2071-1050}, ABSTRACT = {Aviation is widely recognised as a system of systems where interconnected components interact dynamically within a structured framework. Failures in aviation equipment, inconsistencies in technological procedures, and operational inefficiencies contribute to stochastic variability, making robust data-driven approaches essential for enhancing sustainability and resilience. This study proposes a comprehensive statistical data processing framework aimed at enhancing the sustainability and resilience of civil aviation systems, using Ukraine as a case study. Our analysis identifies two major gaps: an insufficient application of modern data processing techniques and a lack of consideration for the changepoint effect—a critical factor influencing reliability indicators, diagnostic parameters, and technological process trends. The scientific novelty and value of this article lie in the development of a new approach to data processing in civil aviation, which includes a set of methods for changepoint detection, the estimation of the model parameters after the changepoint, and the prediction of future values in trends of processed data. The practical value is associated with the possibility of implementing such processing for all components of civil aviation, where process parameters and trends of diagnostic variables for components of civil aviation systems are monitored. The analysis of the efficiency of the proposed approach to data processing showed the possibility of reducing operating costs, which can be considered within the framework of sustainable development of civil aviation. An important practical result is that the authors propose a Datahub model to facilitate the efficient collection, processing, and usage of aviation-related statistical data, supporting both sustainable decision-making and cost minimisation. A case study on aviation radio equipment demonstrates the application of statistical data processing techniques, incorporating the changepoint effect through Monte Carlo simulations.}, DOI = {10.3390/su17135781} }
Abstract Preview
332
Paper in
Scholar

Refereed Journal Publications (82), Refereed Conference Proceedings (93), Peer-Reviewed Articles, Published in Local Journals (43), Theses (58), Author's Licence (30), Patents (5), Books and Chapters (26), Full List of Publications (337), Co-authors, Co-author Network, Template of Ministry of Education and Science, Metrics in Scholar Databases