Smart City Gnosys

Smart city article details

Title Crowdpower: A Novel Crowdsensing-As-A-Service Platform For Real-Time Incident Reporting
ID_Doc 16695
Authors Mathew S.S.; El Barachi M.; Kuhail M.A.
Year 2022
Published Applied Sciences (Switzerland), 12, 21
DOI http://dx.doi.org/10.3390/app122111156
Abstract Crowdsensing using mobile phones is a novel addition to the Internet of Things applications suite. However, there are many challenges related to crowdsensing, including (1) the ability to manage a large number of mobile users with varying devices’ capabilities; (2) recruiting reliable users available in the location of interest at the right time; (3) handling various sensory data collected with different requirements and at different frequencies and scales; (4) brokering the relationship between data collectors and consumers in an efficient and scalable manner; and (5) automatically generating intelligence reports after processing the collected sensory data. No comprehensive end-to-end crowdsensing platform has been proposed despite a few attempts to address these challenges. In this work, we aim at filling this gap by proposing and describing the practical implementation of an end-to-end crowdsensing-as-a-service system dubbed CrowdPower. Our platform offers a standard interface for the management and brokerage of sensory data, enabling the transformation of raw sensory data into valuable smart city intelligence. Our solution includes a model for selecting participants for sensing campaigns based on the reliability and quality of sensors on users’ devices, then subsequently analysing the quality of the data provided using a clustering approach to predict user reputation and identify outliers. The platform also has an elaborate administration web portal developed to manage and visualize sensing activities. In addition to the architecture, design, and implementation of the backend platform capabilities, we also explain the creation of CrowdPower’s sensing mobile application that enables data collectors and consumers to participate in various sensing activities. © 2022 by the authors.
Author Keywords crowdsensing; data quality; data reliability; incident reporting; sensing-as-a-service; smart city application


Similar Articles


Id Similarity Authors Title Published
16714 View0.922Bellavista 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)
5177 View0.897Ray A.; Chowdhury C.; Bhattacharya S.; Roy S.A Survey Of Mobile Crowdsensing And Crowdsourcing Strategies For Smart Mobile Device UsersCCF Transactions on Pervasive Computing and Interaction, 5, 1 (2023)
16704 View0.894Montori 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)
16713 View0.89Alvear O.; Calafate C.T.; Cano J.-C.; Manzoni P.Crowdsensing In Smart Cities: Overview, Platforms, And Environment Sensing IssuesSensors (Switzerland), 18, 2 (2018)
4063 View0.884El Khatib R.F.; Zorba N.; Hassanein H.S.A Reputation-Aware Mobile Crowd Sensing Scheme For Emergency DetectionProceedings - IEEE Symposium on Computers and Communications, 2019-June (2019)
6434 View0.88Ogie R.I.Adopting Incentive Mechanisms For Large-Scale Participation In Mobile Crowdsensing: From Literature Review To A Conceptual FrameworkHuman-centric Computing and Information Sciences, 6, 1 (2016)
37261 View0.878Chowdhury C.; Roy S.Mobile Crowd-Sensing For Smart CitiesSmart Cities: Foundations, Principles, and Applications (2017)
31040 View0.872Du Y.; Issarny V.; Sailhan F.In-Network Collaborative Mobile Crowdsensing2020 IEEE International Conference on Pervasive Computing and Communications Workshops, PerCom Workshops 2020 (2020)
61740 View0.872Wang Z.; Cao Y.; Jiang K.; Zhou H.; Kang J.; Zhuang Y.; Tian D.; Leung V.C.M.When Crowdsensing Meets Smart Cities: A Comprehensive Survey And New PerspectivesIEEE Communications Surveys and Tutorials, 27, 2 (2025)
14217 View0.871Marzano G.; Lubkina V.Citybook: A Mobile Crowdsourcing And Crowdsensing PlatformLecture Notes in Networks and Systems, 69 (2020)