Application of advanced big data analytics technologies to enhance urban transport system reliability

dc.contributor.authorRohov, A.
dc.contributor.authorAbramova, L.
dc.contributor.authorPtytsia, H.
dc.contributor.authorРогов, Андрій Володимирович
dc.contributor.authorАбрамова, Людмила Сергіївна
dc.contributor.authorПтиця, Геннадій Григорович
dc.date.accessioned2026-01-22T11:52:50Z
dc.date.issued2025
dc.description.abstractRapid urbanization, increasing traffic flows, and a high rate of road accidents create critical challenges for Ukraine’s transport systems. Existing approaches to traffic analysis are unable to process large volumes of data in real time, which reduces prediction accuracy, complicates decision-making, and hinders progress toward sustainable development goals. Goal. The study aims to develop approaches for improving traffic management efficiency through the application of cloud computing and Big Traffic Data analytics, enabling the formation of intelligent systems for adaptive transport control. Methodology. A structural-functional architecture for cloud-based transport analytics is proposed, comprising three interrelated layers: data collection from heterogeneous sources, cloud-based processing using parallel computing technologies and machine-learning algorithms, and visual representation of analytical results through monitoring dashboards to support decision-making. The methodology is further enhanced by incorporating fractal analysis to detect critical states of the transport system and improve predictive modelling accuracy. Results. The research substantiates the potential to reduce data-processing time by 10–20 times and increase the accuracy of traffic flow forecasting by 25–30%. The proposed system can perform adaptive traffic management, automatic accident detection, route optimization, and environmental monitoring. Originality. The study integrates cloud technologies, machine learning, and fractal analysis into a multidisciplinary framework for digital transport analytics. A method for evaluating transport infrastructure performance is introduced, incorporating technical, economic, social, and environmental criteria. Practical value. The findings are valuable for shaping the national digital mobility strategy, developing Smart City infrastructure, enhancing road-safety management, and advancing Sustainable Development Goals. The implementation of the proposed system contributes to increasing the reliability and adaptability of urban transport governance.
dc.identifier.citationRohov, A. Application of advanced big data analytics technologies to enhance urban transport system reliability / A. Rohov, L. Abramova, H. Ptytsia // Автомобільний транспорт : зб. наук. пр. / М-во освiти i науки України, Харків. нац. автомоб.-дор. ун-т ; редкол.: А. В. Гнатов (гол. ред.) та iн. – Харкiв, 2025. – Вип. 57. – С. 46–53.
dc.identifier.urihttps://dspace.khadi.kharkov.ua/handle/123456789/27809
dc.language.isoen
dc.publisherХарківський національний автомобільно-дорожній університет
dc.subjectcloud computing
dc.subjectbig data
dc.subjectroad safety
dc.subjectintelligent transport systems
dc.subjectmachine learning
dc.subjectfractal analysis
dc.subjectSmart City
dc.subjectsustainable development
dc.subjectхмарні обчислення
dc.subjectвеликі дані
dc.subjectбезпека дорожнього руху
dc.subjectінтелектуальні транс-портні системи
dc.subjectмашинне навчання
dc.subjectфракталь-ний аналіз
dc.subjectсталий розвиток
dc.subject.doi10.30977/AT.2219-8342.2025.57.0.06
dc.subject.udc656.2:004
dc.titleApplication of advanced big data analytics technologies to enhance urban transport system reliability
dc.title.alternativeЗастосування новітніх технологій аналізу великих даних для підвищення надійності транспортної системи міста
dc.typeArticle

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
06_PtytsiaH.pdf
Size:
289.22 KB
Format:
Adobe Portable Document Format

License bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
license.txt
Size:
2.87 KB
Format:
Item-specific license agreed upon to submission
Description:

Collections