On the Problem of Applicability of Synthetic Data in Testing Intelligent Transport Systems

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Resumo

Intelligent Transport Systems (ITS) are now being implemented to ensure optimal and safe road traffic. Increasingly, these systems use artificial intelligence to obtain characteristics about traffic flows. The number of sensors and transducers is increasing dramatically, resulting in higher loads on ITSs. Therefore, it is necessary to develop distributed monitoring systems with scalability and fault tolerance in mind. However, extensive testing is required before implementation. It is not possible to fully conduct such testing on real data due to various factors. Therefore, this paper proposes a tool for generating synthetic traffic flow data with subject matter specificity. The generation system is designed to be integrated into different systems, which will allow different ITS vendors to use it. This service fulfils the scalability requirements and is close to real data. The study proposes a scalable architecture of intelligent transport subsystem that fulfils the requirements of scalability and fault tolerance. As part of this work, a testbed is assembled and the proposed architecture is tested through the developed service of synthetic traffic flow state data generation.

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Sobre autores

Mikhail Gorodnichev

Moscow Technical University of Communications and Informatics

Autor responsável pela correspondência
Email: m.g.gorodnichev@mtuci.ru
ORCID ID: 0000-0003-1739-9831
Scopus Author ID: 55836031600
Researcher ID: D-3256-2019

Cand. Sci. (Eng.), Associate Professor, Dean of the Faculty of Information Technology

Rússia, Moscow

Bibliografia

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1. JATS XML
2. Fig. 1. Scenarios of interaction with the system

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3. Fig. 2. Organization of system components

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4. Fig. 3. Database Datalogical Scheme

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5. Fig. 4. Class diagram of domain models

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6. Fig. 5. UML diagram of classes

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7. Fig. 6. Diagram of the sequence of adding a service by a user

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8. Fig. 7. Sequence of creating a table and sending a new metric

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9. Fig. 8. Load distribution

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