Smart City Gnosys

Smart city article details

Title A Systematic Review For Smart City Data Analytics
ID_Doc 5455
Authors Moustaka V.; Vakali A.; Anthopoulos L.G.
Year 2019
Published ACM Computing Surveys, 51, 5
DOI http://dx.doi.org/10.1145/3239566
Abstract Smart cities (SCs) are becoming highly sophisticated ecosystems at which innovative solutions and smart services are being deployed. These ecosystems consider SCs as data production and sharing engines, setting new challenges for building effective SC architectures and novel services. The aim of this article is to "connect the pieces" among Data Science and SC domains, with a systematic literature review which identifies the core topics, services, and methods applied in SC data monitoring. The survey focuses on data harvesting and data mining processes over repeated SC data cycles. A survey protocol is followed to reach both quantitative and semantically important entities. The review results generate useful taxonomies for data scientists in the SC context, which offers clear guidelines for corresponding future works. In particular, a taxonomy is proposed for each of the main SC data entities, namely, the "D Taxonomy" for the data production, the "M Taxonomy" for data analytics methods, and the "S Taxonomy" for smart services. Each of these taxonomies clearly places entities in a classification which is beneficial for multiple stakeholders and for multiple domains in urban smartness targeting. Such indicative scenarios are outlined and conclusions are quite promising for systemizing.
Author Keywords Crowd-sensing; Crowd-sourcing; Data harvesting; Data mining; Internet of Things; Open data; Smart cities; Smart dimensions; Smart services; Systematic review; Taxonomy


Similar Articles


Id Similarity Authors Title Published
50152 View0.907Sarker I.H.Smart City Data Science: Towards Data-Driven Smart Cities With Open Research IssuesInternet of Things (Netherlands), 19 (2022)
50087 View0.906Soomro K.; Bhutta M.N.M.; Khan Z.; Tahir M.A.Smart City Big Data Analytics: An Advanced ReviewWiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, 9, 5 (2019)
49568 View0.898Aishwarya R.I.; Asimithaa K.; Eunice J.Smart Cities For The Future: A Data Science ApproachCyber security and Data Science Innovations for Sustainable Development of HEICC: Healthcare, Education, Industry, Cities, and Communities (2025)
17263 View0.898Kousis A.; Tjortjis C.Data Mining Algorithms For Smart Cities: A Bibliometric AnalysisAlgorithms, 14, 8 (2021)
17157 View0.898Velmurugan P.; Kannagi A.; Varsha M.; Velusamy K.Data Analytics Techniques And Tools In Smart City ApplicationsArtificial Intelligence for Internet of Things: Design Principle, Modernization, and Techniques (2022)
8893 View0.894Gupta, A; Panagiotopoulos, P; Bowen, FAn Orchestration Approach To Smart City Data EcosystemsTECHNOLOGICAL FORECASTING AND SOCIAL CHANGE, 153 (2020)
21928 View0.893Morik K.; Giannotti F.; González M.; Katakis I.Editor’S Note: Special Section On Data Mining For Smart CitiesData Mining and Knowledge Discovery, 32, 3 (2018)
12015 View0.893Singh Rathore S.P.; Vishnubhai Dalabhai C.; Babubhai Patel C.K.; Sharma R.; Mathur A.; Yadav A.Big Data Analytics For Smart CitiesProceedings - IEEE 2024 1st International Conference on Advances in Computing, Communication and Networking, ICAC2N 2024 (2024)
28595 View0.893Guo Y.; Yu L.; Ding Y.; C. Coelho L.Guest Editorial: Big Data-Driven Analytics For Smart Cities: Technology-Based InsightIndustrial Management and Data Systems, 122, 10 (2022)
3261 View0.892Osman, AMSA Novel Big Data Analytics Framework For Smart CitiesFUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 91 (2019)