Smart City Gnosys

Smart city article details

Title A Rest Framework On Iot Streams Using Apache Spark For Smart Cities
ID_Doc 4104
Authors Mishra S.; Hota C.
Year 2019
Published 2019 IEEE 16th India Council International Conference, INDICON 2019 - Symposium Proceedings
DOI http://dx.doi.org/10.1109/INDICON47234.2019.9029012
Abstract The proliferation in the sensory hardware and the generation of voluminous data in Internet of Things (IoT) necessitate the development of effective methodologies to process the data to create actionable knowledge. Existing works tend to train cognitive models on data and derive insights from it. The insights may or may not be in real-time. This proposed work illustrates a real-time streaming analytics framework to predict congestions on multivariate IoT data streams in a smart city scenario. With an increase in the connected devices and Machine to Machine (M2M) communications, there is also a rise in the volumes of data generated. To handle such voluminous data, the frameworks needs to address scalability and reliability aspects. In this research, we present an architecture with the help of open source components that simulate an IoT streaming scenario in a persistent way and a batch analytics engine that processes the data inputs in order to produce higher order, granular insights. For the proposed work, we have used unsupervised learning approaches to identify congestions in traffic scenarios in smart cities. © 2019 IEEE.
Author Keywords Big Data Analytics; Congestion Modeling; Internet of Things; REST framework; Stream Processing


Similar Articles


Id Similarity Authors Title Published
24778 View0.888Nasiri, H; Nasehi, S; Goudarzi, MEvaluation Of Distributed Stream Processing Frameworks For Iot Applications In Smart CitiesJOURNAL OF BIG DATA, 6, 1 (2019)
15473 View0.88Etehadi S.S.; Yaghmaee M.H.; Noorani N.; Hosseinpour M.; Seno S.A.H.Concept Drift Challenges In The Internet Of Things (Iot) Era Of Smart Cities: A Preliminary Investigation7th International Conference on Internet of Things and Applications, IoT 2023 (2023)
9497 View0.873Hota C.; Mishra S.Analyzing Events For Traffic Prediction On Iot Data Streams In A Smart City ScenarioHandbook of Big Data Analytics: Applications in ICT, security and business analytics (2021)
48281 View0.872Bamgboye O.; Liu X.; Cruickshank P.; Liu Q.Semantic-Driven Approach For Validation Of Iot Streaming Data In Trustable Smart City Decision-Making And Monitoring SystemsBig Data and Cognitive Computing, 9, 4 (2025)
53190 View0.872Srividhya V.R.; KayarvizhyStreamlined Traffic Prognosis Using Flexible Reservoir Sampling And Regression MethodsEngineering, Technology and Applied Science Research, 15, 2 (2025)
44467 View0.869Saranya V.S.; Subbarao G.; Balakotaiah D.; Bhavsingh M.; Babu K.S.; Dhanikonda S.R.Real-Time Traffic Flow Optimization Using Adaptive Iot And Data Analytics: A Novel Deepstreamnet Model4th International Conference on Sustainable Expert Systems, ICSES 2024 - Proceedings (2024)
24003 View0.865MIRZA N.M.; Ali A.; Musa N.S.; Ishak M.K.Enhancing Task Management In Apache Spark Through Energy-Efficient Data Segregation And Time-Based SchedulingIEEE Access, 12 (2024)
44300 View0.865Khanderi A.; Rajaram G.; Hussein R.R.; Johri P.; Mohanraj T.; Balamurugan M.Real-Time Analytics For Big Data In Smart City Applications: Transforming Urban Environments With Data-Driven Insights2025 International Conference on Automation and Computation, AUTOCOM 2025 (2025)
44454 View0.862Rajasekar P.; Bhosale R.S.; Indhumathi C.; Sandeep K.V.; Prasanthi Kumari N.; Rajendiran M.Real-Time Stream Processing In Iot EnvironmentsProceedings of 9th International Conference on Science, Technology, Engineering and Mathematics: The Role of Emerging Technologies in Digital Transformation, ICONSTEM 2024 (2024)
35038 View0.862Mukherjee S.; Gupta S.; Rawlley O.; Jain S.Leveraging Big Data Analytics In 5G-Enabled Iot And Industrial Iot For The Development Of Sustainable Smart CitiesTransactions on Emerging Telecommunications Technologies, 33, 12 (2022)