Smart City Gnosys

Smart city article details

Title Crowdsourcing Of Sensor Cloud Services
ID_Doc 16743
Authors Neiat A.G.; Bouguettaya A.
Year 2018
Published Crowdsourcing of Sensor Cloud Services
DOI http://dx.doi.org/10.1007/978-3-319-91536-4
Abstract This book develops a crowdsourced sensor-cloud service composition framework taking into account spatio-temporal aspects. This book also unfolds new horizons to service-oriented computing towards the direction of crowdsourced sensor data based applications, in the broader context of Internet of Things (IoT). It is a massive challenge for the IoT research field how to effectively and efficiently capture, manage and deliver sensed data as user-desired services. The outcome of this research will contribute to solving this very important question, by designing a novel service framework and a set of unique service selection and composition frameworks. Delivering a novel service framework to manage crowdsourced sensor data provides high-level abstraction (i.e., sensor-cloud service) to model crowdsourced sensor data from functional and non-functional perspectives, seamlessly turning the raw data into "ready to go" services. A creative indexing model is developed to capture and manage the spatio-temporal dynamism of crowdsourced service providers. Delivering novel frameworks to compose crowdsourced sensor-cloud services is vital. These frameworks focuses on spatio-temporal composition of crowdsourced sensor-cloud services, which is a new territory for existing service oriented computing research. A creative failure-proof model is also designed to prevent composition failure caused by fluctuating QoS. Delivering an incentive model to drive the coverage of crowdsourced service providers is also vital. A new spatio-temporal incentive model targets changing coverage of the crowdsourced providers to achieve demanded coverage of crowdsourced sensor-cloud services within a region. The outcome of this research is expected to potentially create a sensor services crowdsourcing market and new commercial opportunities focusing on crowdsourced data based applications. The crowdsourced community based approach adds significant value to journey planning and map services thus creating a competitive edge for a technologically-minded companies incentivizing new start-ups, thus enabling higher market innovation. This book primarily targets researchers and practitioners, who conduct research work in service oriented computing, Internet of Things (IoT), smart city and spatio-temporal travel planning, as well as advanced-level students studying this field. Small and Medium Entrepreneurs, who invest in crowdsourced IoT services and journey planning infrastructures, will also want to purchase this book. © Springer International Publishing AG, part of Springer Nature 2018. All rights reserved.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
44699 View0.862Wildan M.A.; Widyaningrum M.E.; Padmapriya T.; Sah B.; Pani N.K.Recruitment Algorithm In Edge-Cloud Servers Based On Mobile Crowd-Sensing In Smart CitiesInternational Journal of Interactive Mobile Technologies, 17, 16 (2023)
16744 View0.859Asorey-Cacheda, R; Garcia-Sanchez, AJ; Zúñiga-Cañón, C; Garcia-Haro, JCrowdsourcing Optimized Wireless Sensor Network Deployment In Smart Cities: A KeynoteSMART CITIES, 978 (2019)
55 View0.858Asad S.; Powell B.; Long C.; Nicklas D.; Lagesse B.'Where Am I?': Unraveling Challenges In Smart City Data Cleaning To Establish A Ground Truth Framework2024 IEEE International Conference on Pervasive Computing and Communications Workshops and other Affiliated Events, PerCom Workshops 2024 (2024)
40875 View0.856Harrabi M.; Hamdi A.; Bel Hadj Tahar J.Optimizing Service Caching In Smart Buildings: A Dynamic Approach For Responsive Iot And Edge Computing Integration In Smart CitiesFrontiers in Communications and Networks, 5 (2024)
18223 View0.855Montori F.; Bedogni L.; Iselli G.; Bononi L.Delivering Iot Smart Services Through Collective Awareness, Mobile Crowdsensing And Open Data2020 IEEE International Conference on Pervasive Computing and Communications Workshops, PerCom Workshops 2020 (2020)
16734 View0.852Phour H.; Sharma D.; Talwandi N.S.Crowdsourcing Applications In Smart CitiesLecture Notes in Networks and Systems, 1049 LNNS (2024)
5177 View0.851Ray 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)