Management models of data collection processes in IoT networks with the dynamic structure


Citar

Texto integral

Acesso aberto Acesso aberto
Acesso é fechado Acesso está concedido
Acesso é fechado Somente assinantes

Resumo

The collection of data from the network with dynamic structure is a complex process that must be performed with considering of security, energy efficiency and latency requirements. To determine the optimal data collection models that meet the stated requirements, the authors analyzed models and methods of data collection in dynamic networks, as well as management processes of data collection. The study allows to determine the most effective technologies for data collection in dynamic networks, which include Fog technologies and clustering technologies. Based on the analysis, the authors have developed the model for data collection managment, which allows to construct and rebuild the structures of data collection models in accordance with the requirements and conditions of data collection. The developed approaches and principles were successfully implemented in practice: a system of data collection was tested for the crane complexes, which is designed to work at production sites. In general, the study allows to identify methods and tools that effectively solve the problems of data collection in the networks with dynamic structure, and to demonstrate the solution of these problems in practice.

Texto integral

Acesso é fechado

Sobre autores

Myo Aung

ITMO University

Email: aungmyothaw52660@gmail.com
PhD student at the Faculty of Software Engineering and Computer Engineering St. Petersburg, Russian Federation

Saddam Abbas

Saint- Petersburg Electrotechnical University (LETI)

Email: saddamabbas077@gmail.com
PhD student at the Department of Computer Science and Engineering of St. Petersburg, Russian Federation

Natalia Zhukova

St. Petersburg Institute of Informatics and Automation of the Russian Academy of Sciences

Email: nazhukova@mail.ru
Cand. Sci. (Eng.), Assoc. Prof.; senior researcher St. Petersburg, Russian Federation

Vladimir Chernokulsky

Saint- Petersburg Electrotechnical University (LETI)

Email: vladimir.chernokulsky@gmail.com
PhD student St. Petersburg, Russian Federation

Bibliografia

  1. Suwandhada K., Panyim K. ALEACH-Plus: An Energy Efficient Cluster Head Based Routing Protocol for Wireless Sensor Network. 7th International Electrical Engineering Congress (iEECON) (Hua Hin, Thailand, Mar. 6-8, 2019). IEEE. 2019. Pp. 1-4. doi: 10.1109/iEECON45304.2019.8938948.
  2. Rady A., Sabor N., Shokair M., El-Rabaie E.-S.M. Mobility based genetic algorithm hierarchical routing protocol in mobile wireless sensor networks. International Japan-Africa Conference on Electronics, Communications and Computations (JAC-ECC) (Alexandria, Egypt, Dec. 17-19, 2018). IEEE. 2018. Pp. 83-86. doi: 10.1109/JEC-ECC.2018.8679548.
  3. Zhang D., Qiu J.-N., Zhang T., Wu H. New energy-efficient hierarchical clustering approach based on neighbor rotation for edge computing of IoT. 28th International Conference on Computer Communication and Networks (ICCCN) (Valencia, Spain, 29 July - 1 Aug. 2019). IEEE. 2019. Pp. 1-2. doi: 10.1109/ICCCN.2019.8847073.
  4. Hao F., Kodialam M., Lakshman T.V., Mukherjee S. Online allocation of virtual machines in a distributed cloud. IEEE/ACM Transactions on Networking. 2017. Vol. 25. Iss. 1. Pp. 238-249. doi: 10.1109/TNET.2016.2575779.
  5. Жукова Н. А., Панькин А. В. Принципы организации управления процессами обработки и анализа многомерных измерений в ИГИС // Материалы 5-й Рос. мультиконф. по проблемам управления «Информационные технологии в управлении» (ИТУ-2012) (СПб., 9-11 окт. 2012 г.). СПб.: АО Концерн «ЦНИИ “Электроприбор”», 2012. С. 403-414.
  6. Zhukova N. Dynamic resources management in agile IGIS. Information Fusion and Geographic Information Systems (IF&GIS’ 2015): 7th International Workshop on Information Fusion and Geographic Information Systems: Deep Virtualization for Mobile (Grenoble, France, May 18-20, 2015). V. Popovich, C. Claramunt, M. Schrenk, K. Korolenko, J Gensel (eds.). Springer International Publishing, 2015. Pp. 125-145. (Lecture notes in Geoinformation and Cartography).
  7. Водяхо А.И., Жукова Н.А., Климов Н.В. и др. Вычислительные модели когнитивных систем мониторинга // Морские интеллектуальные технологии. 2018. Т. 3. № 4 (42). С. 147-153.
  8. Osipov V.U., Vodyaho A.I., Klimov N.V. et al. Computational and technological models of cognitive monitoring systems // Advances in Science, Technology and Engineering Systems Journal. 2019. Vol. 2. Iss. 1. Pp. 197-202.
  9. Vodyaho A., Zhukova N. System of ontologies for data processing applications based on implementation of data mining techniques. Proceedings of the 3rd International Conference on Analysis of Images, Social Networks and Texts, AIST 2014 (Yekaterinburg, Russia, April, 2014). 2014. Vol. 1197. Pp. 102-116.
  10. Коробов Д.А., Лапаев М.В., Водяхо А.И., Жукова Н.А. Модели представления данных в области медицины // Известия СПбГЭТУ «ЛЭТИ». 2016. № 7. С. 7-13.
  11. Водяхо А.И., Мустафин Н.Г., Жукова Н.А. Онтологический подход к построению систем мониторинга ресурсов в сетях кабельного телевидения // Известия СПбГЭТУ «ЛЭТИ». 2017. № 2. C. 29-38.
  12. Жукова Н.А. Онтологические модели трансформации данных о состоянии технических объектов // Онтология проектирования. 2019. Т. 9. № 3 (33). С. 345-360.

Arquivos suplementares

Arquivos suplementares
Ação
1. JATS XML


Este site utiliza cookies

Ao continuar usando nosso site, você concorda com o procedimento de cookies que mantêm o site funcionando normalmente.

Informação sobre cookies