Smart City Gnosys

Smart city article details

Title A Smart City Iot Crowdsensing System Based On Data Streaming Architecture
ID_Doc 4709
Authors Labus A.; Radenković M.; Nešković S.; Popović S.; Mitrović S.
Year 2022
Published Smart Innovation, Systems and Technologies, 279
DOI http://dx.doi.org/10.1007/978-981-16-9268-0_26
Abstract The subject of this paper is data streaming in IoT crowdsensing systems. The goal of this paper is to present a way of designing a scalable IoT crowdsensing system that enables design of various business models for smart city projects. The system designed in such a way is capable of handling an increasing number of users while maintaining acceptable performance. Performance of the system can be measured in response latency, which allows for real-time tracking of crowdsensing parameters. The first part of the paper deals with data streaming concepts and software solutions, with a particular focus on Apache Kafka. The second part presents the designed system for crowdsensing in smart city environments. The designed system allows for use of mobile and Arduino devices as input data for the Kafka cloud cluster in order to provide crowdsourcing insights in real-time. The primary way that users can utilize these insights is through a web or mobile application, where various data visualizations can be presented. The development of a system based on the proposed model can allow for easy access to recent crowdsourced data, and real-time smart city indicators such as air pollution. © 2022, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.
Author Keywords Crowdsensing; Data streaming; IoT; Mobile crowdsensing


Similar Articles


Id Similarity Authors Title Published
3872 View0.943Miletić A.; Despotović-Zrakić M.; Bogdanović Z.; Radenković M.; Naumović T.A Prototype Of The Crowdsensing System For Pollution Monitoring In A Smart City Based On Data StreamingLecture Notes in Networks and Systems, 801 (2024)
30147 View0.87Wang K.; Wang Z.; Song Y.-Q.; Yang D.; He S.; Wang W.Ieee Access Special Section Editorial: Toward Smart Cities With Iot Based On CrowdsensingIEEE Access, 9 (2021)
16695 View0.87Mathew S.S.; El Barachi M.; Kuhail M.A.Crowdpower: A Novel Crowdsensing-As-A-Service Platform For Real-Time Incident ReportingApplied Sciences (Switzerland), 12, 21 (2022)
16713 View0.869Alvear O.; Calafate C.T.; Cano J.-C.; Manzoni P.Crowdsensing In Smart Cities: Overview, Platforms, And Environment Sensing IssuesSensors (Switzerland), 18, 2 (2018)
16714 View0.867Bellavista P.; Cardone G.; Corradi A.; Foschini L.; Ianniello R.Crowdsensing In Smart Cities: Technical Challenges, Open Issues, And Emerging Solution GuidelinesHandbook of Research on Social, Economic, and Environmental Sustainability in the Development of Smart Cities (2015)
1188 View0.866Jezdovic, I; Popovic, S; Radenkovic, M; Labus, A; Bogdanovic, ZA Crowdsensing Platform For Real-Time Monitoring And Analysis Of Noise Pollution In Smart CitiesSUSTAINABLE COMPUTING-INFORMATICS & SYSTEMS, 31 (2021)
24778 View0.863Nasiri, H; Nasehi, S; Goudarzi, MEvaluation Of Distributed Stream Processing Frameworks For Iot Applications In Smart CitiesJOURNAL OF BIG DATA, 6, 1 (2019)
31040 View0.862Du Y.; Issarny V.; Sailhan F.In-Network Collaborative Mobile Crowdsensing2020 IEEE International Conference on Pervasive Computing and Communications Workshops, PerCom Workshops 2020 (2020)
33961 View0.861Middya A.I.; Dey P.; Roy S.Iot-Based Crowdsensing For Smart EnvironmentsEAI/Springer Innovations in Communication and Computing (2023)
16704 View0.86Montori F.; Cortesi E.; Bedogni L.; Capponi A.; Fiandrino C.; Bononi L.Crowdsensim 2.0: A Stateful Simulation Platform For Mobile Crowdsensing In Smart CitiesMSWiM 2019 - Proceedings of the 22nd International ACM Conference on Modeling, Analysis and Simulation of Wireless and Mobile Systems (2019)